Recent evidence on farm size and land productivity: implications for public policy.
Ahmad, Munir ; Qureshi, Sarfraz Khan
The existence of inverse relationship between farm size and total
value of output per cultivated acre is established for the overall
Punjab province and for all regions except Gujranwala and Multan regions
where no significant association is found. The causal factors behind
this relationship are a more intensive use of inputs per cultivated acre
as well as high level of cropping intensity for small sized farms.
However, the inverse relationship between output per acre and farm size
is not found for all crops. In fact, rice and sugarcane exhibited the
opposite relationship. Technical efficiency is positively associated
with farm size as the larger farmers realise greater potential output
from the given level of inputs and technology.
Based on these results, one cannot make a case for redistributive
land reforms on the grounds of higher output per unit of land. Pursuing
a redistributive land reform policy on the basis of the inverse
relationship does not by itself fulfill the objectives of poverty
alleviation and an increase in agricultural production. What's
needed is to increase the managerial skills of the farming community
through farmers' education, an effective agricultural extension system, and provision of timely inputs.
1. INTRODUCTION
Agricultural productivity is low in most of the developing
countries including Pakistan. Moreover, slow and meandering agricultural
growth is unable to keep pace with the fast and persistently growing
population pressure in these countries. That in turn, has, continued to
result in malnutrition and recurrent famines [Cornia (1985)]. Worse than
this are the results of an ILO (1977) study, which has shown that food
consumption inequalities have actually increased overtime not only in
the food deficit countries but also in countries experiencing rapid
agricultural growth. This points to the ever-hanging shadows of food
deficiency and resulting malnutrition over the countries characterised
by slow or negative growth in per capita food production and perverted income distribution [Cornia (1985)]. The only choice with these
countries is to enhance food production and provide better access to
food consumption for the poor masses.
In order to achieve this objective policy-makers consider various
options including increased use of modern inputs--mechanical and
biological technologies, and removal or reform of the prevalent
socio-economic power structure in agriculture that is considered to be
an impediment to growth. It may not be desirable to apply these options
separately in order to achieve the objective of reducing rural poverty
[Cornia (1985)]. Growth in agriculture--that is sustainable and
appropriate, is possible when all factors of production are accessible
to all strata of the farming community. This is particularly so in the
case of access to land. In this regard, land redistribution accompanied
by increased input supply is the preferred policy option. The supporters
of this policy package cite the argument that small sized farms are not
only beautiful but efficient as against large farms. However, the
empirical literature on determination of the optimal size of farms that
ensure maximum productivity, efficiency and equity has remained
inconclusive both in developed as well as less developed countries
[Mendis (1992)].
In the present study, an attempt has been made to address the
following questions: Does the managerial efficiency (Technical
Efficiency) differ across farm size categories and different regions in
Punjab? Does the inverse relationship between farm size and productivity
per acre found in the past prevails in recent years? Does the use of
inputs differ across farm sizes and regions in Punjab?
The paper is organised as follows. The survey of the previous
literature is given in Section 2. Section 3 provides a detailed
discussion of the data and analytical procedures. The results are given
in Section 4. The concluding section provides a survey of the main
conclusions and draws some important policy implications.
2. SURVEY OF LITERATURE
The debate on the subject of farm size and productivity
relationship started with Sen's (1962) seminal Work using
India's Farm Management Survey Data. Afterwards, a significant
number of studies have been completed proving or rejecting the claim of
the inverse relationship between farm size and land productivity in
South Asian and some other developing countries. The studies using
Indian data, which found inverse relationship are Sen (1962); Mazumdar
(1965); Rao (1966); Saini (1971); Bharadwaj (1974); Chaddha (1978);
Ghose (1979); Bhalla (1979); among others. The studies which did not
find inverse relationship or had inconclusive results are Rao (1967);
Bhattacharya and Saini (1972); Khan and Tripathy (1972); Rao (1975);
Dasgupta (1977); Chattopadhyay and Rudra (1976); Saini (1980); Bagi
(1981); Deolalikar (1981); Rao and Chotigeat (1981); Roy (1981); among
others.
Studies of the type done in India are relatively scarce in other
developing countries. The few studies conducted in other countries have
also come up with mixed results. In the case of Egypt, Radwan and Lee
(1986) support the inverse relationship, while Commander (1987) finds no
consistent association. Dyer (1991) states that the relation may hold in
a relatively backward agriculture but it breaks down with the
advancements in technology. Hossain (1977); Berry and Cline (1979) and
Herdt and Mandac (1981) found that the inverse relationship holds in the
case of Indonesia, the Philippines and Bangladesh, respectively.
Studies using efficiency analysis in developing countries also show
mixed results of the kind fouhd in studies discussed above that have
used the size-productivity relationship to resolve the debates. In case
of Indian agriculture, Khusro (1964); Sahota (1968); Sidhu (1974); Ray
(1985); Huang and Bagi (1984) and Kalirajan (1991) concluded that
productive efficiency did not differ across different farm size
categories. While Yotopoulos, Lau and Sonel (1970); Lau and Yotopoulos
(1971); Yotopoulos and Lau (1973) and Bagi (1987) found negative
relationship between farm size and efficiency. Squire and Tabor (1991);
Bravo-Ureta and Evenson (1994) and Pinheiro (1992) found no relationship
between farm size and efficiency in agriculture sectors of Indonesia,
Paraguay and the Dominican Republic, respectively.
In spite of the pertinent nature of the policy debates the analysis
of farm size and productivity relationship did not attract much
attention of the researchers in Pakistan. However, a few studies have
been conducted in the past dealing with this issue. The first is that of
Khan (1979) using 732 irrigated farms in the Indus basin for the year
1974 and a production function technique incorporating a farm size dummy
variable concluded that the large farmers get higher output per acre.
The study further indicates that per acre use of non-traditional inputs
fertiliser, hired labour and farm machinery--is higher on large farms
than on small farms: The observed difference is a result of market
distortions induced by public policy. The second study by Khan and Maki
(1980) uses the same 1974 data set. It conducts analyses for wheat and
rice crops only. It found no significant farm size-based difference in
efficiency. However, they reported the existence of increasing returns
to scale.
Mahmood and Haque (1981) using two sets of data--Agricultural
Census and the Rural Credit Survey data for the year 1972--concluded
that the smallest (<5 acres) and the largest farm size categories
were the most efficient and equally productive. While the middle farmers
were relatively inefficient as they used inefficient combination of
inputs, Which resulted in lower marginal productivity.
The study by Chaudhry et al. (1985)finds the inverse relationship
between size of farm and productivity for Pakistan. It is interesting to
note that studies on this issue are old and pertain to data set, which
are at least 15 years old. It is therefore important to have a fresh
look into the subject.
A number of studies relating to productive efficiency in Pakistan
have also been conducted as of Khan and Maki (1979) discussed in the
foregoing,
Ali and Flinn (1989) using the profit frontier approach found an
average economic efficiency of 69 percent for the Basmati rice farmers
in Punjab using data from Gujranwala district. Farmers' education,
lack of credit facility, late application of fertilisers, and irrigation constraints were considered to be the factors for low efficiency. Ali
and Choudhry (1990) found average technical efficiency of about 84
percent with some regional level variations. Battese et al. (1993) using
wheat data from Faisalabad, Attock, Badin and Dir found that technical
inefficiencies exist in three of these districts that are Faisalabad,
Badin and Dir. The study suggests that the adoption of new technology
and a good agricultural extension system are required to enhance the
efficiency of the wheat farmers. Parikh and Shah (1994) found average
technical efficiency of about 96 percent in NWFP. The farm level
technical efficiency was found dependent upon farmers' education,
credit, age and the extent of land fragmentation. Parikh, Ali and Shah
(1995) using cost function found an average inefficiency of about 12
percent. The study also concluded that the small farmers were more
efficient than the large farmers in the study area. The authors
suggested that providing rural education, extension service and credit
could reduce inefficiency.
It was the evidence of inverse relationship (between farm size and
per acre productivity) that provided an empirical support to the
policy-makers for reforming the agricultural sector in various
countries. Pakistan faces tremendous problems on various fronts
including social, cultural, institutional and economic. These problems
continued to affect the achievable potential growth of the agriculture
sector keeping it down to its minimum through their depressing effects
on land productivity and economic efficiency.
The solution considered for increasing land productivity was to
reform the feudal land tenure system inherited by Pakistan.
Consequently, two land reforms, 1959 and 1972, took place. The land
reforms have to serve three purposes; increased production, efficiency
and equity through redistribution of land and security of tenure.
However, these reforms did not succeed in changing the status quo in
Pakistan and thus had almost no impact on production [Naqvi et al.
(1989)].
3. DATA AND METHODOLOGY
In this study, the farm level input and output data comes from the
'Rural Finance Survey of Punjab (RFS)' conducted by Punjab
Economic Research Institute, Lahore. The data pertains to crop year
1997-98. There were 1229 farm families in this survey excluding
Cholistan, which was not included in the analysis. For the purpose of
analysis, the province of Punjab is divided into five crop ecological
regions namely Rawalpindi, Gujranwala, as Faisalabad, Multan and Thai.
(1) Each of these zones represents more or less homogeneous conditions
such as sources of irrigation, cropping pattern, physiography, climate
and soils, etc. [Chaudhry and Ahmad (1980)]. Given these regions and the
RFS data, 117, 125, 261,556 and 170 observations lie in Rawalpindi,
Gujranwala, Faisalabad, Multan and Thai, respectively.
To achieve the objectives of the paper, we proceed as follows.
Firstly, a stochastic frontier production function developed
independently by Aigner, Lovell and Schmidt (1977) and Meeusen and van
den Broeck (1977) is used. The key feature of this model is that the
error term has two components: one is symmetric representing statistical
noise and exogenous shocks, and the other is one sided that captures
technical inefficiency such as mistakes related to management. For the
purpose of analysis for this study, the following Cobb-Douglas
production frontier is used:
[MATHEMATICAL EXPRESSION NOT REPRODUCIBLE IN ASCII] (1)
where,
Y is the value of aggregate output per cultivated acre at village
level prices,
[D.sub.f] is a dummy variable showing value of one if Fertiliser
(NPK) use is greater than zero; otherwise 0, (2)
Fert represents the fertilizer nutrients (NPK in kg) per cultivated
acre,
Lprep is the land preparation cost per cultivated acre,
[D.sub.I] is a dummy variable showing value of one if Irrigation
>0; otherwise 0
Irri represents the average number of irrigations per acre,
Seed is seed cost per acre,
[D.sub.c] is a dummy variable showing value of one when Chemical
use > 0; otherwise 0,
Chem represents cost of chemicals, i.e, insecticides and weedicides
per acre,
[D.sub.m] is a dummy variable showing value of one if
Farm-Yard-Manure > 0; otherwise 0,
Fym is cost of Farm-Yard-Manure per acre,
Fsize represents cultivated land in acres,
CI is cropping intensity,
[Ts.sub.2] represents owner-cum-tenants' farms,
[Ts.sub.3] represents tenants' farms,
v is a usual random error term accounting for random variation in
output due to factors outside the farmer's control which is assumed
to be independently and identically distributed as N(0,
[[sigma].sub.v]),
u is a non-negative unobservable random variable associated with
the technical inefficiency of production assuming half normal
distribution with mean zero and [[sigma].sub.u],
i represents ith farm observation,
ln represents the natural log, and
[beta]s are unknown parameters to be estimated. (3)
Farm level technical efficiency is measured by taking exponent of
the predicted values of the non-negative unobservable random variable
that can be expressed as [TE.sub.i] = exp(-[u.sub.i]).
Secondly, to compare results from the present study with that of
the results of previous studies on farm size and productivity
relationship as well as the results obtained from Equation 1, we also
estimated the following models:
Ln ([YC.sub.i]) = [alpha] + [[beta].sub.1]ln(Fsize)+ [v.sub.i] ...
... ... ... (2)
Ln ([Y.sub.i]) = [alpha] + [[beta].sub.1]ln(Fsize)+ [v.sub.i] ...
... ... ... (3)
[YC.sub.i] represents value of output per cropped acre. Comparison
of Equations 1 to 3 and footnote 3 indicates that the parameter
estimates [beta].sub.1]'s of Equations 2 and 3 do not provide any
extra information regarding farm size and productivity relationship
except that of biased 'returns to scale' measure.
To resolve the issue, we computed rank correlation coefficients for
cultivated area (Fsize) with those of income, farm inputs used,
livestock numbers and family members per acre. We also computed the
correlation coefficients of technical efficiency and value-cost ratios
with the farm size to determine the existence of any association.
4. RESULTS AND DISCUSSION
Keeping in view the objectives of the paper and the subsequent
analysis, this section is further divided into two subsections. The
first gives the detailed results and discussion regarding the stochastic
production frontier and technical efficiency measures. The second
section is devoted to estimation of farm size and land productivity
relationship.
(i) Stochastic Production Frontier and Technical Efficiency
Measures
The maximum likelihood estimates of the production frontier, given
in Equation 1, are estimated separately for each of the five regions in
Punjab using LIMDEP Version 7. The results are presented in Table 1. The
value of adjusted [R.sup.2]'s of 0.70, 0.39, 0,77, 0.53 and 0.85
for the models of the various regions show that the model variables
explain 39 percent to 85 percent of the variation in output per acre.
Given the cross-sectional nature of the data, the values of these
statistics are reasonably high. The ratios of the standard errors of
[u.sub.i] and [v.sub.i], i.e., [lambda], are 6.72, 1.13, 2.37 and 1.21
in case of Rawalpindi, Faisalabad, Multan and Thal, respectively. These
magnitudes show that the one sided error term [u.sub.i] dominates the
sources of random variation in the models implying that the
discrepancies between the observed output and the frontier output are
due primarily to technical inefficiencies in four of the five regions.
However, in Gujranwala the [lambda] is equal to 0.92 indicating that the
symmetric error term [v.sub.i] dominates the sources of random variation
in the model.
The last row of Table 1 shows that Rawalpindi is the least
efficient region having technical efficiency of 0.62. This implies that
the farmers of this region are only able to realise 62 percent of the
potentially achievable level of output from the given bundle of inputs.
Lower technical efficiency of this region is due mainly to lack of
irrigation water, which increases the risk and uncertainty in crop
production. The second least efficient region is Multan. One of the
potential reasons of this lower efficiency measure is probably the
prevalence of Cotton Leaf Curl Virus in the cotton region of Punjab. The
other cause could be that this region faces the most dynamic situation
in terms of introduction and adoption of new technologies--the farming
community usually takes time to adjust and reap higher production
potential from the changing technologies. Gujranwala, the rice region,
is found to be the technically most efficient. This is due mainly to the
fact that wheat and rice are more stable crops in this region. It has a
relatively traditional set up in term of crop choices and crop
establishment [Ali and Choudhry (1990)].
The coefficient of land (Fsize) variable is also of great interest
representing the returns to scale measure. (4) In all regions except
Thal, the land parameter estimates are highly statistically
non-significant meaning that these coefficients are not different from
zero. This implies that the constant returns to scale prevails in
Rawalpindi, Gujranwala, Faisalabad and Multan regions. In Thai region,
the land coefficient is statistically significant at the 5 percent level
and is negative in sign. This implies that there are decreasing returns
to scale in the region.
The results further show that cropping intensity is the most
important variable contributing to output per unit of land. The
corresponding parameter estimates in Table 1 show an increase in output
per unit of land from a low of 2.3 percent in Faisalabad to a high of
7.6 percent in Multan region in response to increase in cropping
intensity by one percent. Low response in the former region could be due
mainly to prevalence of water logging and salinity. In the latter
region, cotton is the most popular crop, which is more remunerative.
The system of land tenure is generally considered to be one of the
factors that affects farm productivity through managerial ability and
investment potential of the farmers. The insecurity and the financial
stringency in case of tenants are the major restraining factors that
inhibit more productive enterprising activities such as land improvement
and other investment strategies as well as improvement in managerial
capabilities. However, the tenants generally operate on small land
holdings and thus are under lot of economic pressure like paying
rent/share, meeting production costs and saving something for the
families' survival. Consequently, the tenants put more effort to
achieve higher output levels. The results given in Table 1 support this
argument as all farm categories are equally productive. It should be
noted that the parameter estimates of owner-cum-tenants and tenants are
not statistically different than the control group, i.e.,
owner-operator.
The average technical efficiency measures by farm size and tenurial
status are given in Table 2. In the Rawalpindi region, the farmers
operating greater than or equal to 25 acres of land are the least
efficient and the size category of >5 to 12.5 acres appears to be the
most efficient. The correlation coefficient of -0.02 shows however no
overall association between farm size and technical efficiency in this
region.
Technical efficiencies for all farm size categories in Gujranwala
region are almost the same. The correlation coefficients convey the same
message. The results of Faisalabad region show that the largest farm
size category is the most technically efficient, while the other four
categories realise the same output potential from the given level of
inputs. The correlation coefficient is though positive and statistically
non-significant.
The results shown in Table 2 further reveal that the farmers of all
farm size categories are equally technically efficient in the Multan
region. In the Thai region, average technical efficiency measures show
somewhat increasing trend over the last four farm size categories. The
correlation coefficient shows positive and significant association of
technical efficiency with farm size. The overall technical efficiency
measures, using the whole sample, exhibits slightly increasing trend
ranging from 0.73 for farms [less than or equal to] 5 acres and 0.79 for
the largest farm size category. The correlation coefficient implies not
only positive (though small) but statistically significant association.
The results in Table 2 further show that the farmers belonging to
different tenurial status groups, i.e., owners, owner-cum-tenants and
tenants, on average are equally technically efficient in almost all the
regions. This result implies that the farmers, irrespective of their
tenurial status, not only produce equal level of output per unit of
land--as it has also been shown in regression results discussed before,
but also use the given technology equally efficiently. The overall
Punjab averages of different farm size categories show that the tenants
are a little more efficient (i.e., 0.76) than the owner operators (i.e.,
0.73); however, the difference appears to be negligible. This result is
consistent with that of Kalirajan (1981, 1984, 1990), who found that the
technical efficiency is probably not affected by the tenurial status of
the farmers.
(ii) Farm Size and Land Productivity
The parameter estimates of models 2 and 3 are presented in Table 3.
The first part of the table, where the dependent variable is the value
of crops per cropped acre, shows that the overall regression as well as
the parameter estimates are only significant in Rawalpindi and Multan
regions: While, all the parameter estimates of farm size are, however,
negative.
The second part of the table--where the dependent variable is the
value of crops per cultivated acre, shows that all regressions and the
negative coefficients of farm size except that of Gujranwala region are
statistically significant. These results indicate--as it has been the
usual practice in interpreting such results in studies relating to farm
size and productivity, that the inverse relationship exists in
Rawalpindi, Faisalabad, Multan and Thai regions; while, Gujranwala shows
no relationship. As mentioned in Section 2, such an approach to evaluate
the farm size and productivity relationship is not very fruitful. This
becomes evident when we compare [R.sup.2] values of models results given
in the secondpart of Table 3 and the corresponding values in Table 1.
This comparison shows that the exclusion of all variables from the
regional models and keeping only cultivated land (Fsize) reduces the
explanatory power of the models from 82 percent in case of Thai to 100
percent in Gujranwala. Therefore, it can be concluded that the
interpretation of inverse relationship and its intensity using the
parameter estimates given in Table 3 does not convey the true message.
This is possible only when the excluded variables have no correlation
with that of the farm size, which is not true in our case. Consequently,
the land parameter estimates given in Table 3 are biased--because Of the
reason that violation of one of the random error term assumption, i.e.,
[v.sub.i] is identically independently distributed from the other
included model variables. Nonetheless, the last row of Table 3 gives the
results of the overall sample and implies significant inverse
relationship between farm size and output per acre.
To resolve the above issue as well as to identify any prevalent
association of farm size with those of other variables, we calculate the
average gross income per cultivated acre for various farm size
categories (Table 4). To see the trends, the rank correlation
coefficients are also calculated. The results in Table 4 show that the
gross income per cultivated acre declines from smaller to larger farm
size categories in Rawalpindi, Faisalabad and Thai regions as well as in
overall Punjab. However, in Gujranwala no consistent trend is observed
as the largest farm size category turns out to be the most productive
category. Multan region shows a somewhat U-shaped relationship. The
smallest farm size category is the most productive category. The overall
figures of the Punjab reveal a significant declining trend as farm size
increases. The correlation coefficients given in last column of Table 4
support our conclusion that negative and statistically significant
association exists in Rawalpindi, Faisalabad, Thai and Punjab as a
whole. No association is observed in Gujranwala region, while in Multan
the relationship is negative but statistically non-significant.
To find out the relationships between farm size and the inputs used
per cultivated acre, correlation coefficients are computed and are
reported in Table 5. These coefficients show that the large farmers in
Rawalpindi region spend significantly less on land preparation and seed
and use less fertiliser but the association is not statistically
significant. Large farms spend more on weedicides and pesticides though
only a few farmers use these chemicals. The Gujranwala region shows that
fertiliser and land preparations have negative association with the farm
size, while irrigation and chemicals' use per acre are positively
associated with that of size. In Faisalabad, use of all inputs, except
chemicals, per acre declines as farm size increases. In Multan region,
use of all inputs per acre has negative relationship with that of farm
size, except chemicals--where the sign is positive but the magnitude and
its statistical non-significance show no relationship. In Thai, all
inputs have negative relationship with farm size. Use of inputs per
cultivated acre on average in the entire Punjab shows significant
declining trend. These results provide a clear explanation as to why the
large farmers get less output per unit of land when a comparison is made
with small farmers.
There is a general argument that, although, there exists an inverse
relationship between farm size and productivity this in no way means
that small farms have a necessarily lower per unit cost of output. As
the data set did not have detailed information on labour costs we could
not include a comprehensive measure of cost in our computation: However,
fertiliser, chemicals and land preparation costs also include labour
costs. The correlation of VCR with that of farm size shows strong
positive association in Rawalpindi and Faisalabad regions. This
relationship is weak in Gujranwala, Multan and Thai regions; however,
the coefficient is statistically significant in the former region. This
result leads us to conclude that while the small farmers produce more
per unit of cultivated land, they do not necessarily do so at lower per
unit of output cost. This result is consistent with our earlier finding
that the larger farmers are more efficient than that of the smaller
ones.
Correlation coefficients between farm size and output value per
cropped acre are presented in Table 6. These coefficients show a
somewhat different picture, as there is no relationship between farm
size and gross income per cropped acre in the three regions of
Rawalpindi, Faisalabad and Multan. The relationship is positive in
Gujranwala and negative in Thai region. One of the main reasons for the
positive relationship in Gujranwala is that the large farmers use more
irrigation water and spend more on seed and chemicals on a per cropped
acre basis. In the case of Thai the negative relationship is due to the
fact that larger farm categories not only use less inputs per cultivated
acre but they also do so on per cropped acre (see Correlation
coefficients in Table 6).
As regards production per acre of major crops, Table 7 shows no
statistically significant association of production per acre of crops
with farm size in most of the cases. The only exceptions are Thal in
case of wheat--negative relationship, and Faisalabad in case of rice--a
positive association. In case of overall analysis on Punjab basis, the
coefficients suggest that there exists a positive association between
rice yield per acre and farm size, while cotton productivity per cropped
acre is negatively associated with the size of farm. The other
coefficients do not characterise any significant association.
Small farmers stuck with their limited holdings try to fetch
greater output per unit of cultivated land by intensive cultivation and
thus generally have higher cropping intensities--the ratio of total
cropped to cultivated land (Table 8). This is achieved through
irrigating high proportion of their total cropped area and generally by
intensive use of other inputs (Table 6) especially human labour at their
disposal. The latter is evident from the high and negative correlation coefficients between farm size and the number of family members per
cultivated acre given in the last column of Table 8. The small farmers
are thus in a better position to tackle different chores in the
production process in time. Small farmers also keep a larger number of
animals per acre of cultivated area as is shown by high negative
correlation coefficients in Table 8. A large stock of animals acts as a
hedge against financial hardships for poor small farmers. It also
provides animal waste, which is an important source of organic manure that helps in conserving long-term soil fertility, improving soil
structure and restoring the micro nutrient balance to the soil on
intensively cultivated small farms.
5. SUMMARY AND POLICY IMPLICATIONS
The existence of inverse relationship between farm size and total
value of output per cultivated acre is established for the overall
Punjab province but not for all of its regions. In fact, Gujranwala and
Multan regions show no significant association. The causal factors for
the inverse relationship are a more intensive use of inputs per
cultivated acre as well as a high level of cropping intensity on small
farms. The inverse relationship between output per acre of crops with
the farm size was not found for all crops. In fact, rice and sugarcane
have exhibited the opposite relationship, i.e., a strong positive
association between the farm size and productivity. Technical efficiency
is positively related with the farm size implying that the larger
farmers realise greater potential output from the given level of inputs
and technology.
Given the results of our analysis, one cannot make a case for
redistributive land reforms on the grounds of farm size and land
productivity inverse relationship. Consequently, pursuing a distributive land reform policy based on only this lineage would not help in
attaining the objectives of poverty alleviation and increasing
agricultural production. On the contrary it would lead to worsen the
situation in the era of modern technologies [Dyer (1991)]. On account of
the results of this study and some of the other related work on Pakistan
agriculture reviewed in this paper, it is imperative to increase the
managerial skills of the farming community. There is a special need to
focus on small farms to enable them to adopt the new production
technologies. This would help the small holders to produce the same
output by using less inputs and therefore at lower costs. For the farm
sector, overall output per unit of land can be increased by 14 percent
in Gujranwala and by 38 percent in Rawalpindi from the same resources by
improving the farmers' managerial skills.
The factors responsible for low technical efficiency have not been
analysed in the present study due to lack of relevant data. However, the
literature suggests that various measures could be considered to achieve
higher efficiency levels and greater productivity. Farmers'
education is one of the most important factors to achieve this
objective. An educated farmer is always in a better position to have
access to new information and thus, to new technologies. He is also
likely to be more receptive to new innovations.
The agricultural extension system needs to be reformed to ensure
that it provides equal access for all segments of population as far as
information on agricultural technologies is concerned to achieve higher
output potential. The literature further suggests that consolidation of
land holdings and timely provision of agricultural credit help in
increasing the technical efficiency of the farmers.
Comments
The paper provides a recent empirical evidence of inverse
relationship between farm size and total value of out put per cultivated
acre. The results of the study revealed that inverse relationship
between farm size and productivity have been established for the overall
Punjab province and for all regions except Gujranwala and Multan. The
authors have highlighted that this relationship holds due to intensive
use of inputs per cultivated acre as well as high level of cropping
intensity for small size farms. The results further revealed that
inverse relationship between farms size and productivity is not found
for all crops rather rice and sugarcane depicted the opposite
relationship. The authors further found that technical efficiency is
positively associated with farm size as the larger farmers realise
greater potential output from the given level of resource use and
technology.
The hypothesis tested by the authors is not new. In the early 50s,
the case for land reform was advocated on the basis of negative
relationship between farm size and productivity. However, the land
reforms enacted in 50s and 70s were based on political considerations
rather than economic consideration and on farm size productivity
relationship. The empirical evidence has become inconclusive regarding
the hypothesis tested by the authors both in India and Pakistan. The
literature fully demonstrates this view. The empirical evidence further
revealed that farmers are technically efficient and allocatively
inefficient thus economically inefficient. But the authors have provided
evidence on the contrary that only large farm size are technically
efficient. The authors have used dummies along with quantitative
variables making the analysis straight-jacketed with inconclusive
evidence on the widely held hypothesis i.e. inverse relationship of farm
size with productivity. The other constraining factor in the analysis is
that the authors have used individual crops whereas the existing farming
system comprises livestock, fisheries, poultry etc. Had the dependent
variable been total farm productivity the results may have been
different.
The authors have rightly concluded that a case for land reforms on
the basis of inverse relationship between farm size and productivity
alone cannot be made. The evidence is well in place to support this
conclusion. I would therefore suggest that Pakistan should introduce
agrarian reforms rather than land reforms that the law of inheritance is
taking care of in a natural process.
Zakir Hussain
Ministry of Food, Agriculture and Livestock, Islamabad.
REFERENCES
Ali, M., and M. A. Chaudhry (1990) Inter-regional Farm Efficiency
in Pakistan's Punjab: A Frontier Production Function Study. Journal
of Agricultural Economics 41: 62-74.
Ali, M., and J. C. Flinn (1989) Profit Efficiency Among Basmati
Rice Producers in Pakistan. American Journal of Agricultural Economics
71: 303-310.
Aigner, D. J., C. A. K. Lovell, and P. Schmidt (1977) Formulation
and Estimation of Stochastic Frontier Production Function Models.
Journal of Econometrics 6: 21-37.
Bagi, F. S. (1981) Relationship between Farm Size and Economic
Efficiency: An Analysis of Farm Level Data from Haryana (India).
Canadian Journal of Agricuttural Economics 29: 317-326.
Bagi, F. S. (1987) Farm-level Technical Efficiency of Individual
Crops. Unpublished Paper, Department of Rural Development, Tennessee
State University, USA.
Battese, G. E., S. J. Malik, and S. Broca (1993) Production
Functions for Wheat Farmers in Selected Districts of Pakistan: An
Application of Stochastic Frontier Production Function With Time-varying
Inefficiency Effects. The Pakistan Development Review 32: 233-268.
Battese, G. E. (1996) On the Estimation of Production Functions
Involving Explanatory Variables which have Zero Values. Department of
Econometrics, University of New England, Armidale, Australia. (Working
Paper in Econometrics and Applied Statistics No 86.)
Berry, R. A., and W. R. Cline (1979) Agrarian Structure and
Productivity in Developing Countries. Baltimore: John Hopkins Press.
Bhalla, S. (1979) Farm Size Productivity and Technical Change in
Indian Agriculture. In R. A. Berry, and W. R. Cline (eds) Agrarian
Structure and Productivity in Developing Countries. Baltimore: John
Hopkins Press. 141-193.
Bharadwaj, K. (1974) Notes on Farm Size and Productivity. Economic
and Political Weekly 9:13 A11-A24.
Bhattacharya, N., and G. R. Saini (1972) Farm Size and
Productivity: A Fresh Look. Economic and Political Weekly 7:26 A63-A72.
Bravo-Ureta, B. E., and R. E. Evenson (1994) Efficiency in
Agricultural Production: The Case of Peasant Farmers in Eastern
Paraguoy. Agricultural Economics 10: 27-37.
Chaddha, A. N. (1978) Farm Size and Productivity Revisited: Some
Notes From Recent Experience of Punjab. Economic and Political Weekly
13:39 A82-A96.
Chattopadhyay, M., and A. Rudra (1976) Size-Productivity Revisited.
Economic and Political Weekly 11:39.
Chaudhry, A. M., and Bashir Ahmad (1980) Cost of Producing Major
Crops in Punjab 1979-80. Faisalabad: Punjab Agri. Res. Coord. Board and
Dept. of Farm Management, Univ. of Agriculture.
Chaudhry, M. G., Manzoor A. Gill, and G. M. Mustafa Chaudhry (1985)
Size-Productivity Relationship in Pakistan's Agriculture in the
Seventies. The Pakistan Development Review 24: 349-361.
Commander, S. (1987) The Sate and Agricultural Development in Egypt
Since 1973. London: Overseas Development Institute.
Cornia, G. A. (1985) Farm Size, Land Yields and the Agricultural
Production Function: An Analysis of Fifteen Countries. World Development
13: 513-534.
Dasgupta, B. (1977) Agrarian Change and the New Technology in
India. Geneva: United Nations Research Institute.
Deolalikar, A. (1981) Inverse Relationship between Productivity and
Farm Size: A Test Using Regional Data from India. American Journal of
Agricultural Economics 63: 275-279.
Dyer, G. (1991) Farm Size--Farm Productivity Re-examined: Evidence
from Rural Egypt. The Journal Peasant Studies 19: 59-92.
Ghose, A. K. (1979) Farm Size and Land Productivity in Indian
Agriculture: A Reappraisal. The Journal of Development Studies 16: 27-
49.
Herdt, R. W., and A. M. Mandac (1981) Modern Technology and
Economic Efficiency of Philippines Rice Farmers. Economic Development
and Cultural Change 29: 375-399.
Hossain, M. (1977) Farm Size, Tenancy and Land Productivity: An
Analysis of Farm Level Data in Bangladesh Agriculture. Bangladesh
Development Studies 5: 285-348.
Huang, C., and F. S. Bagi (1984) Technical Efficiency on Individual
Farms in Northwest India. Southern Economic Journal 51: 108-15.
ILO (1977) Poverty and Landlessness in Rural Asia. Geneva: ILO.
Kalirajan, K. P. (1981) An Econometric Analysis of Yield
Variability in Paddy Production. Canadian Journal of Agricultural
Economics 29: 283-294.
Kalirajan, K. P. (1984) Farm Specific Technical Efficiencies and
Development Policies. Journal of Economics Studies 11: 3-13.
Kalirajan, K. P. (1990) On Measuring Economic Efficiency. Journal
of Applied Econometrics 5: 75-85.
Kalirajan, K. P. (1991) The Importance of Efficient Use in the
Adoption of Technology: A Micro Panel Data Analysis. Journal of
Productivity Analysis 2: 113-26.
Khan, M. H. (1979) Farm Size and Land Productivity Relationships in
Pakistan. The Pakistan Development Review 18: 69-77.
Khan, M. H., and D. R. Maki (1980) Relative Efficiency by Farm Size
and the Green Revolution in Pakistan. The Pakistan Development Review
19: 51-64.
Khan, M. H., and D. R. Maki (1979) Effects of Farm Size on Economic
Efficiency: The Case of Pakistan. American Journal of Agricultural
Economics 61: 64-9.
Khan, W., and R. N. Tripathy (1972) Intensive Agriculture and
Modern Inputs: Prospects of Small Farmers--A Study in West Godavari
District. Hyderabad: National Institute of Community Development.
Khusro, A. M. (1964) Returns to Scale in Indian Agriculture. Indian
Journal of Agricultural Economics 19: 51-80.
Lau, L. J., and P. A. Yotopoulos (1971) A Test for Relative
Efficiency and Application to Indian Agriculture. American Economic
Review 61: 94-109.
Mahmood, M. and Nadeem Ul Haque (1981) Farm Size and Productivity
Revisited. The Pakistan Development Review 20: 151-190.
Mazumdar, D. (1965) Size of Farm and Productivity: A Problem of
Indian Peasant Agriculture. Economica 32: 161-173.
Mendis, P. (1992) The Debate on Size and Productivity in Developed
and Developing Countries. Journal of Contemporary Asia 22:73-81.
Meeusen, W. and J. van den Broeck (1977) Efficiency Estimation from
Cobb-Douglas Production Functions with Composed Error's.
International Economic Review 18: 435-44.
Naqvi, S. N. H., M. H. Khan, and M. G. Chaudhry (1989) Structural
Change in Pakistan's Agriculture. Islamabad: Pakistan Institute of
Development Economics.
Parikh, A. and K. Shah (1994) Measurement of Technical Efficiency
in the North West Frontier Province of Pakistan. Journal of Agricultural
Economics 45: 132-138.
Parikh, A., F. Ali, and M. K. Shah (1995) Measurement of Economic
Efficiency in Pakistan Agriculture. American Journal of Agricultural
Economics 77: 675-685.
Pinheiro, A. (1992) An Econometric Analysis of Farm Level
Efficiency of Small Farms in the Dominican Republic. M. S. Thesis,
University of Connecticut, Storrs, USA.
Radwan, S., and E. Lee (1986) Agrarian Change in Egypt: An Anatomy
of Rural Poverty. Geneva: ILO.
Rani, U. (1971) Size of Farm and Productivity. Economic and
Political Weekly 4:26 A85-89.
Rao, C. H. H. (1975) Technological Change and the Distribution of
Gains in Indian Agriculture. Delhi: Macmillan.
Rao, A. P. (1967) Size of Holdings and Productivity. Economic and
Political Weekly November 11: 989-91.
Rao, C. H. H. (1966) Alternative Explanations of the Inverse
Relationship between Farm Size and Output Per Acre in India. The Indian
Economic Review 1: 1-12.
Rao, V., and T. Chotigeat (1981) The Inverse Relationship between
Size of Land Holdings and Agricultural Productivity. American Journal of
Agricultural Economics 63: 571-574.
Ray, S. (1985) Measurement and Test of Efficiency of Farms in
Linear Programming Models: A Study of West Bengal Farms. Oxford Bulletin
of Economics and Statistics 47: 371-86.
Roy, P. (1981) Transition in Agriculture: Empirical Indicators and
Results. Journal of Peasant Studies 8: 212-241.
Sahota, G. S. (1968) Efficiency of Resource Allocation in Indian
Agriculture. American Journal of Agricultural Economics 50: 584-605.
Saini, G. R. (1971) Holding Size, Productivity and Some Related
Aspects of Indian Agriculture. Economic and Political Weekly 26:
A79-A85.
Saini, G. R. (1980) Farm Size Productivity and Some Related Issues
in India's Agriculture: A Review. Agricultural Situation in India
34:11 777-783.
Sen, A. K. (1962) An Aspect of Indian Agriculture. Economic Weekly
14: 243-246.
Sidhu, S. S. (1974) Economics of Technical Change in Wheat
Production in the Indian Punjab. American Journal of Agricultural
Economic 56: 217-226.
Squires, D., and S. Tabor (1991) Technical Efficiency and Future
Production Gains in Indonesian Agriculture. The Developing Economies 29:
258-70.
Yotopoulos, P. A., and L. J. Lau (1973) A Test for Relative
Economic Efficiency--Some Further Results. American Economic Review 63:
214-223.
Yotopoulos, P. A., L. J. Lau, and K. Sonel (1970) Labour Intensity
and Relative Efficiency in Indian Agriculture. Food Research Institute
Studies in Agricultural Economics, Trade, and Development 9: 43-55.
(1) Rawalpindi includes Rawalpindi, Gujar Khan, Pindi Gheb, Serai
Alamgir, Sohawa, Talagang, Jehlum and Chakwal tehsils of various
districts. Gujranwala includes Gujranwala, Kamoke, Wazirabad, Pindi
Bhatian, Hafizabad, Gujrat, Pasrur, Daska, Sialkot, Shakargarh, Narowal,
Kharian and Malikwal. Faisalabad comprises Faisalabad, Chak Jhumra,
Jaranwala, Tandlianwala, Gojra, Jhang, Chiniot, Sargodha, Silanwal,
Sahiwal, Patoki, Okara and Depalpur. Multan consists of Multan, Lodhran,
Dunyapur, Karor Paca, Vehari, Burewala, Mailsi, Arifwala, Pakpatan,
Kabirwala, Khanewal and Mian Channnu. Thai includes D.G. Khan, Rajanpur,
Layyah, Chobara, Khushab, Isa Khel, Bhakkar, Mankera, Kalurkot,
Mianwali, and Muzaffar Garh.
(2) Dummy variables like [D.sub.f], [D.sub.I], [D.sub.c] and
[D.sub.m] are used in the production function 'to account for
different production regimes for farmers' who use certain inputs,
relative to those who do not [Battese et al. (1993) and Battese (1996)].
(3) We believe that there is not much difference between an
aggregate farm level Cobb-Douglas production function and the function
used on per acre input and output values (as is in our study) and the
proof is shown below. Preference of using the function on per acre basis
is only to compare the parameter estimate of Fsize variable with that of
the estimates obtained in Equations 2 and 3, which have usually been
applied in empirical analysis in farm size productivity studies. In
Equation 1, the coefficient of Fsize variable represents returns to
scale. Assuming the following multiplicative farm level aggregate
production function
Y = [AX.sup.b1.sub.1] [X.sup.b2.sub.2] [X.sup.b3.sub.3]
[X.sup.b4.sub.4] [X.sup.b5.sub.5]
Where [X.sub.1] to [X.sub.3] are farm inputs, [X.sub.4] is the
cultivated area and [X.sub.5] is cropping intensity. Multiplying the
left-hand side of this equation with [X.sub.4]/[X.sub.4], and the,
right-hand side with [([X.sub.4]/[X.sub.4]).sup.b1],
[([X.sub.4]/[X.sub.4]).sup.b2] and ([([X.sub.4]/[X.sub.4]).sup.b3] will
yield :
(Y/[X.sub.4]) = A[([X.sub.1]/[X.sub.4]).sup.b1]
[([X.sub.2]/[X.sub.4]).sup.b2]
[([X.sub.3]/[X.sub.4]).sup.b3][([X.sub.5].sup.b5]
[X.sub.4.sup.b1+b2+b3+b4-1=[theta]]
It is evident from the above formulation that the production
function based on per acre basis yields the same parameter estimates as
that of in aggregate. However, in the present form the coefficient (now
[theta]) of [X.sub.4] represents the returns to scale, ranging from -ive
to +ive values: it exhibits decreasing, constant, or increasing returns
to scales if [theta] is -ive, 0, or +ive, respectively.
(4) If all the inputs are changed by the same proportion the
consequent change in output could be less than, equal to or greater than
the change in inputs, which in turn could be termed as decreasing,
constant or increasing returns to scale, respectively.
Munir Ahmad is Senior Research Economist and Sarfraz Khan Qureshi
was formerly Director, Pakistan Institute of Development Economies,
Islamabad.
Table 1
Parameter Estimates of Stochastic Frontier Production Functions
Variable Rawalpindi Gujranwala Faisalabad
Constant 4.2520 *** 7.6155 6.4815 ***
[D.sub.f] -0.3681 -0.3104 -0.4748
Ln(Fert)*Df 0.1243 0.1474 ** 0.1790 ***
Ln(Lprep) 0.1705 ** 0.0075 0.0645 **
[D.sub.I] 0.2156 -0.0248 0.2288
Ln(Irr)*[D.sub.I] -- 0.1270 ** 0.2632 ***
Ln(Seed) 0.5314 *** 0.0756 0.1129 ***
[D.cub.c] 0.1859 -0.0597 -0.3965 **
Ln(Chem) -- 0.0087 0.1092 ***
[D.sub.m] 0.0549 0.0103 -0.0308
Ln(FYM)*[D.sub.m] -0.0552 * 0.0094 0.0038
Ln(Fsiz) -0.0018 0.0207 0.0241
Ln(CI) 0.4261 *** 0.4866 *** 0.2366 ***
TS2 0.1274 0.0278 -0.0361
TS3 -- 0.0495 0.0496
[lambda]= [[sigma].sub.u]/
[[sigma].sub.v] 6.7152 * 0.91648 1.1307 ***
[square root of
([[sigma].sup.2.sub.u] +
[[sigma].sup.2.sub.v])] 0.6777 *** 0.2758 *** 0.3596 ***
Adj. [R.sup.2] 0.70 0.39 0.77
Mean T. Efficiency 0.62 0.86 0.81
Variable Multan Thal
Constant 9.5345 *** 6.6490 ***
[D.sub.f] -0.4512 ** 0.1680
Ln(Fert)*Df 0.1054 *** 0.0228
Ln(Lprep) 0.0669 ** 0.0528
[D.sub.I] -0.8175 *** -0.1616
Ln(Irr)*[D.sub.I] 0.0645 0.3594 ***
Ln(Seed) -0.0179 0.2081 ***
[D.cub.c] -0.5304 *** -0.2875
Ln(Chem) 0.1007 *** 0.1160 ***
[D.sub.m] -0.0434 -0.0225
Ln(FYM)*[D.sub.m] -0.0136 0.0175
Ln(Fsiz) 0.0184 -0.0725 **
Ln(CI) 0.7600 *** 0.5548 ***
TS2 0.0058 -0.074
TS3 -0.0264 0.0596
[lambda]= [[sigma].sub.u]/
[[sigma].sub.v] 2.3689 *** 1.2140 **
[square root of
([[sigma].sup.2.sub.u] +
[[sigma].sup.2.sub.v])] 0.5789 *** 0.4037 ***
Adj. [R.sup.2] 0.53 0.85
Mean T. Efficiency 0.68 0.79
***, ** and * are significant at the 1 percent, 5 percent and 10
percent levels, respectively. (a) Significant at the 15 percent
probability level.
Table 2
Farm Size, Tenurial Status and Technical Efficiency (TE)
[less
than or
equal
to] 5 >5-12.5 >12.5-25 25-50
Region Acres Acres Acres Acres >50
Rawalpindi 0.60 0.69 0.61 0.46 --
Gujranwala 0.86 0.87 0.86 0.87 --
Faisalabad 0.81 0.81 0.81 0.80 0.85
Multan 0.68 0.68 0.67 0.69 0.70
Thal 0.79 0.76 0.79 0.81 0.82
Average 0.73 0.74 0.75 0.76 0.79
Correl. Owner-
TE vs cum-
Region Fsize Owners Tenants Tenants
Rawalpindi -0.02 0.62 0.62 --
Gujranwala 0.06 0.86 0.86 0.85
Faisalabad 0.05 0.81 0.81 0.81
Multan 0.04 0.68 0.68 0.69
Thal 0.11 ** 0.78 0.78 0.79
Average 0.08 ** 0.73 0.74 0.76
** Significant at the 5 percent level.
Table 3 Parameter Estimates of Models 2 and 3
Region Farm Size Adj. [R.sup.2] F-Value
Dependent Variable--Productivity per Cropped Acre (Model 2)
Rawalpindi -0.144 ** 0.070 15.63 **
Gujranwala -0.021 0.000 1.03
Faisalabad -0.030 0.000 1.06
Multan -0.066 ** 0.059 7.49 **
Thai -0.036 0.000 0.55
Dependent Variable--Productivity per Cultivated Acre (Model 3)
Rawalpindi -0.385 ** 0.20 29.11 **
Gujranwala -0.020 0.00 0.00
Faisalabad -0.144 ** 0.04 13.45 **
Multan -0.046 * 0.003 2.81 *
Thal -0.306 ** 0.148 30.26 **
Overall Sample: (1) -0.138 ** 0.402 166.05 **
(2) -0.133 ** 0.025 32.01 **
(1) Regional effects were incorporated in the model and (2) is
without regional effects.
**, * Significant at the 5 percent and 10 percent levels,
respectively.
Table 4
Average Gross Income (AI) per Acre in Rupees by Farm Size Categories
[less than
or equal
to] 5 >5-12.5 >12.5-25
Acres N Acres N Acres N
Rawalpindi 3931.69 (81) 2862.43 (28) 1560.56 (5)
Gujranwala 7164.36 (74) 7348.58 (33) 6725.33 (12)
Faisalabad 9376.55 (135) 7969.01 (75) 7608.56 (45)
Multan 13846.42 (308) 12912.91 (171) 12623.19 (57)
Thal 8041.85 (63) 5115.12 (45) 3493.74 (38)
Punjab 10417.24 (661) 9541.52 (352) 8173.09 (157)
Correl.
>25 GI vs.
Acres N Fsize
Rawalpindi 717.81 (3) -0.45 **
Gujranwala 8238.15 (6) -0.00
Faisalabad 7453.17 (6) -0.21 **
Multan 13098.20 (20) -0.06
Thal 4833.14 (24) -0.42 **
Punjab 8038.62 (59) -0.14 **
** Significant at the 5 percent probability level.
Table 5
Correlation Coefficients--Farm Size vs. Variables are
per Cultivated Acre
Region Fertiliser Land Prep. Irrigation
Rawalpindi -0.10 -0.55 ** -0.01
Gujranwala -0.23 ** -0.35 ** 0.29 **
Faisalabad -0.40 ** -0.36 ** -0.15 **
Multan -0.15 ** -0.17 ** -0.16 **
Thal -0.35 ** -0.43 ** -0.40 **
Overall -0.16 ** -0.31 ** -0.08 **
Region Seed Chemical VCR (a)
Rawalpindi -0.46 ** 0.14 ** 0.53 **
Gujranwala -0.03 0.38 ** 0.12 **
Faisalabad -0.13 ** 0.12 ** 0.32 **
Multan -0.18 ** 0.04 0.04
Thal -0.33 ** -0.02 0.08
Overall -0.15 ** 0.08 ** 0.17 **
** Coefficients are significant at the 5 percent level. (a) Value
Cost Ratio = (Gross income per cultivated acre)/(cost per cultivated
acre including fertiliser, chemicals, seed, land preparation, farm
yard manure only).
Table 6
Correlation Coefficients--Farm Size vs. Variables per Cropped Acre
Gross Land
Region Income Fertiliser Preparation Irrigation
Rawalpindi -0.08 -0.09 -0.13 ** -0.01
Gujranwala 0.26 ** -0.07 -0.08 0.41 **
Faisalabad -0.02 -0.30 ** -0.23 ** 0.04
Multan -0.13 ** -0.15 ** -0.05 -0.03
Thal 0.00 -0.35 ** -0.24 ** -0.25 **
Region Seed Chemicals
Rawalpindi -0.05 0.14 **
Gujranwala 0.16 ** 0.39 **
Faisalabad 0.07 0.13 **
Multan -0.05 0.11 **
Thal 0.01 -0.01
** Coefficients are significant at the 5 percent level.
Table 7
Correlation Coefficients--Farm Size vs. Production per Acre
of Major Crops
Region Wheat Rice Cotton Sugarcane Maize
Rawalpindi -0.01 -- 0.24 0.08 0.10
Gujranwala 0.12 0.14 -- 0.33 --
Faisalabad -0.06 0.36 ** -0.14 0.06 -0.18
Multan 0.004 0.04 -0.07 0.25 -0.34
Thal -0.23 ** -0.14 -0.02 0.12 -0.57
Average -0.05 0.22 ** -0.09 ** 0.08 -0.14
** Significant at the 5 percent level.
Table 8
Average Cropping Intensities over Various Farm Size
Categories and Regions
[less than
or equal
to] 55 >5 to 12.5 >12.5 to 25 >25 to 50
Region Acres Acres Acres Acres
Rawalpindi 123 90 66 22
Gujranwala 182 156 157 178
Faisalabad 159 145 129 ill
Multan 180 166 161 164
Thal 150 124 100 102
Average 166 149 134 128
Correlation Coefficients--Fsize
vs.:
Crop Livestoc Family
50 Aver- Intensity k/Acre Memb./
Region Acres age Acre
Rawalpindi -- 110 -0.49 ** -0.50 ** -0.90 **
Gujranwala -- 173 -0.36 ** -0.35 ** -0.91 **
Faisalabad 125 149 -0.34 ** -0.41 ** -0.86 **
Multan 138 173 -0.25 ** -0.42 ** -0.85 **
Thal 166 126 -0.39 ** -0.34 ** -0.89 **
Average 140 155 -0.30 ** -0.44 ** -0.87 **
** Significant at the 5 percent level.