Some non-price explanatory variables in fertiliser demand: the case of irrigated Pakistan.
Ahmad, Munir ; Chaudhry, M. Ghaffar ; Chaudhry, Ghulam Mustafa 等
1. INTRODUCTION
It follows from the experience of World economies that rising and
balanced use of fertilisers is the key factor in agricultural
productivity [FAO (1995); SFS and STI (1996); Habib-ur-Rehman (1982) and
Pinstrup-Anderson (1976)]. In the case of Pakistan the stepped up
fertiliser use has been argued to be incritable to realise existing
untapped yield potential of major crops [Johnston and Kilby (1975)] and
to induce yield increasing technological change in future [John Mellor Associates and Asianics Agro-Dev. International (1993)].
Although proper malnutrition involves the use of primary, secondary
and micro-nutrients, Nitrogen (N), Phosphorus and Potassium (K) or NPK is generally considered to be sufficient to harvest normal crop yields
[FAO and IFA (1999)]. Given this situation, this paper looks at various
factors that determine fertiliser use in Pakistan. Although price of
fertiliser is a critical factor in this respect [Schultz (1965) and
Johnston and Cownie (1969)], only non-price factors are considered in
this paper due to limitations of data. Apart from this introductory
section, the paper comprises of three more sections. The following
Section 2 explains the data and the empirical model. Section 3 presents
the results. Section 4 summarises the main findings along with their
policy implications.
2. THE DATA AND EMPIRICAL MODEL
The Data
The data used in this study comes from a Fertiliser Use Survey
1997-1998 conducted by the Pakistan Institute of Development Economics for the National Fertiliser Development Centre, Planning and Development
Division, Government of Pakistan. The details about the survey and the
procedures are given in Ahmad and Chaudhry (2000). However, a brief
discussion about the survey follows.
This survey covers NWFP, Punjab and Sindh out of four provinces of
Pakistan, which consume more than 98 percent of the total fertiliser use
in the country. A total of 18 tehsils (sub-districts) were selected--10
from Punjab, 5 from Sindh and 3 from NWFP. (1) The considered bases for
the selection of these tehsils were the cropping pattern, water
availability and the intensity of fertiliser use. On that account, the
selected tehsils represent the average condition of the respective
provinces. Six villages fi'om each tehsil, and about 22 farmers
from each village were selected for interview. The overall sample thus
comprised 2368 respondents from all the provinces. While screening the
whole data set, about 62 cases were found deficient in displaying
reliable farm level information. The remaining sample includes 2306
farmers. Out of this sample 1923 farmers belong to irrigated areas in
Punjab, Sindh and NWFP, which serves the basis of this investigation, it
may be interesting to note that non of these farmers is non user of
fertiliser.
Empirical Model
Given the nature of the data, the following general model is
specified:
Ln(FERT) = f(PRIM, MID, MATR, INT, Ln(AGE), EXTEN, NOLOAN, COMERC
Ln(FMDIST), DDIST, OTEN, TENE, CAN,TUB, Ln(FYMA), DFYMA, Ln(CA), PWHEAT,
PRICE, PCOTTON, PSUGAR, PVEFRUT, PMAIZ)
Where,
Ln = Stands for natural log;
FERT = Fertiliser nutrients (NPK) measured in kilograms per
cultivated acre;
PRIM = 1, for primary education; 0 otherwise;
MID = 1, if the farmer has middle level education; 0 otherwise;
MATR = 1, if the farmer has matric level education; 0 otherwise;
INT = 1, for intermediate or a higher level education; 0 otherwise;
AGE = Age of the farmer;
EXTEN = 1, if the farmer was contacted by the extension workers or
he himself visited the officials for guidance;
NOLOAN = 1, if used own savings for purchase of fertiliser; 0
otherwise;
COMERC = 1, if the farmer gets loan from commercial bank; 0
otherwise;
FMDIST = Farm to market distance in kilometres;
DDIST = 1, If the market is near the village (zero distance); 0
otherwise;
OTEN = 1, if the farmers is owner-cum-tenant; 0 otherwise;
TENE = 1, if the farmers is tenant; 0 otherwise;
CAN = 1, if irrigation source is canal only; 0 otherwise ;
TUB = 1, if the source of irrigation is tube well; 0 otherwise;
FYMA = Farm Yard Manure per acre in maunds;
DFYMA = 1, if there was no use of FYM; 0 otherwise;
CA = Cultivated area in acres--Farm Size;
PWHEAT = Area under wheat in acres at the ith farm divided by the
total cropped area of the same farm;
PRICE = Area under rice in acres at the ith farm divided by the
total cropped area of the same farm;
PCOTTON = Area under cotton in acres at the ith farm divided by the
total cropped area of the same farm;
PSUGAR = Area under sugarcane in acres at the ith farm divided by
the total cropped area of the same farm;
PVEFRUT = Area under vegetables and fruits in acres at the ith farm
divided by the total cropped area of the same farm; and
PMAIZ = Area under maize in acres at the ith farm divided by the
total cropped area of the same farm.
In the above-specified model two of the independent variables that
are FMDIST and FYMA have significant number of cases assuming zero
values. For these variables to be transformed into natural log the usual
practice has been to add a small value to the whole variable in order to
take the log of such an independent variable. Recently, Battese (1997)
has shown that such a procedure results into biased parameter estimates
while using Cobb-Douglas or translog functional forms. In order to get
unbiased parameter estimates, the following procedure as suggested by
Battese (1997) is employed. The variables FMDIST and FYMA are
transformed into logs in such a w. ay that the zero cases are taken as
zero and the cases assuming positive values are transformed into log
form: For example, Ln(FYMA) is natural log of the farm yard manure
variable when its use is positive, i.e., FYMA>0. Additional dummy
variables such as DFYMA and DDIST are introduced having 0 or 1 values.
For example, DFYMA assumes a value of 1 when the use of FYMA at the ith
farm is zero and DFYMA takes value of 0 when FYMA is positive. The
coefficients of these dummy variables estimate the difference between
two regimes--the one, when an independent variable assumes zero values
and the other when it has positive values. For example, if the
coefficient of dummy variable, DFYMA, is positive, it implies that the
intercept in case of no use of farm yard manure is higher than that with
positive use. The equality of these intercepts can be tested using
t-tests on the parameter estimates of the dummy variables.
3. EMPIRICAL RESULTS
The analysis is performed separately for the provinces of Punjab,
Sindh and NWFP. Out of total sample of 1923 farmers, 1043 belong to
Punjab, 845 lie in Sindh and 235 pertain to NWFP. Before the model
results are discussed, it is considered more appropriate to briefly
draft the sample statistics.
Descriptive Statistics
The descriptive statistics are given in Table 1. The averages
relating to per acre use of fertiliser show that the farmers in Sindh
use the highest quantity, i.e., 103.3 kg, and the lowest is observed in
NWFP with 83 kg. The literacy rate is higher in Punjab, which is about
62 percent (= sum of averages of educational dummy variables), as
compared to Sindh (48 percent) and NWFP (42 percent). The average age of
the farmer is higher in NWFP than the mean age in other two provinces.
About 43 percent of the sample farmers in Punjab either meet the
agricultural extension agents in their village or they themselves
contact the office of the agriculture extension department for technical
advice. This figure is three to five times higher than that in other
provinces. The variables relating to the sources of rural finance
suggest that about 73 percent of the farmers in Punjab, 62 percent in
Sindh and 89 percent in NWFP used their own resources to buy fertiliser
from the market. The rest of the respondents get support either from the
Agricultural Development Bank of Pakistan (ADBP)---6 percent in Punjab,
4 percent in Sindh and 8 percent in NWFP, or from some other private
sources such as commission agents in the town markets, fertiliser
dealers, other traders, etc.--21percent in Punjab, 34 percent in Sindh
and 2 percent in NWFP.
With regard to the tenancy status, Table 1 shows that each of the
tenants and the owner-cum-tenants comprise 15 percent of the sample in
Punjab and the remaining 70 percent are owner cultivators. In Sindh, 40
percent of the sample farmers are the tenants and only 9 percent are
owner-cum-tenants, while the remaining 51 percent are self-cultivators.
The tenancy status of sample farmers in NWFP is approximately the same
as that of in Sindh.
The distribution of survey farmers according to the sources of
irrigation suggests that about 94 percent of them have been using the
canal water alone in NWFP, and this figure in Sindh is 89 percent
indicating very small proportion of the farmers having tubewell
irrigation. While in Punjab only 30 percent of the total sample farmers
depend on canal water as a sole source of irrigation. A large proportion
of the farmers makes use of tubewell water along with the canal water.
The average distance of the farm from the main input-output market
is approximately the same in all the provinces. However, the distance
dummy variables shows that 29 percent of the sample farmers in NWFP are
located near the market, whereas in Sindh only 2 percent are in
proximity of the market. Looking at the use of farm yard manure, the
average figures in Table 1 reveal that its application rate is highest
in NWFP--about 68 maunds per acre with 91 percent users, and is lowest
in Sindh amounting to 25 maunds per acre with 50 percent users.
The statistics regarding the cultivated area indicate that Sindh
has a larger average farm size with about 16 acres of land as compared
to Punjab and NWFP where the average size is 13 acres and 6 acres,
respectively. As far as the cropping pattern is concerned, wheat is the
dominant crop in all the provinces ranging from 30 percent of the total
cropped area in NWFP to about 43 percent in Punjab. Nonetheless, about 2
percent of the farmers in Punjab, 8 percent in Sindh and 18 percent in
NWFP have not allocated any area to wheat. Cotton stands second both in
Punjab and Sindh with 25 percent and 24 percent of the total cropped
area, respectively. In the NWFP none of the farmers was growing any
cotton. The rice crop stands at third place in terms of area allocation
in Punjab, against vegetables plus fruits as the third important crop in
Sindh. In NWF'P sample, sugarcane and maize take the second and
third position respectively in terms of area allocation. (2)
The Model Results
The results of the three separately estimated models--one each for
Punjab, Sindh and NWFP, are reported in Table 2. The adjusted [R.sup.2]
values of 0.34, 0.32 and 0.19 for the models in Punjab, Sindh and NWFP,
respectively, imply that from 19 percent to 34 percent of the original
variances of the dependent variables are explained by the included
independent variables. Given the cross-section nature of the data and
the specification of variables on per acre basis, the magnitudes of the
adjusted R2s statistics are reasonable.
The results of the three separately estimated models--each for
Punjab, Sindh and NWFP, are reported in Table 2. The results show that
19 of the total 23 parameter estimates are statistically significant in
Punjab--14 at the 1 percent level, 3 at the 5 percent level and 2 at the
10 percent level. In Sindh, a total of 11 parameter estimates (out of
23) is found statistically significant--5 at the 1 percent level, 3 at
the 5 percent level and 3 at the 10 percent level. While in NWFP, 8 out
of total 21 estimated coefficients turns out to be statistically
significant--3 at the 1 percent level, 2 at the 5 percent level and 3 at
the 10 percent level.
Table 2 reveals that the parameter estimates of all the four
educational dummy variables are statistically significant at the 5
percent level or better in Punjab. Only one coefficient of educational
dummies, i.e., INT is found statistically significant at the 5 percent
level in the model for Sindh. Two of the four coefficients of
educational variables in NWFP are statistically significant at the 5
percent level of significance. These results very clearly demonstrate
that farmers' education emerges as an important factor in enhancing
the use of chemical fertilisers in general and in Punjabi particular.
This conclusion is in line with Jha and Hojjati (1993) in case of
Zambian agriculture. But, this result is in contrast to the findings of
Shakya and Flinn (1985) in case of Nepal, where the education variable
proved to be an unimportant fertiliser use-enhancing factor.
The extension affects per acre use of fertiliser positively in all
the provinces. The relationship is statistically significant in Punjab
and Sindh. But, the impact is not significant in NWFP, which could be
due to a relatively weaker link between farmers and extension department
in NWFP. Only 9 percent of the farmers contacted with the extension
staff in NWFP--where the respective figures in Punjab and Sindh are 43
and 13 percent (Table 1). The magnitudes of the parameter estimate show
that the farmers who are in touch with the agricultural extension
department apply about 9 percent more fertiliser nutrients per
cultivated acre in Punjab and 21 percent higher in Sindh. Shakya and
Flinn (1985) using Nepal's agricultural data also found positive
association of extension advice with that of fertiliser use.
The coefficients of age in all the regressions have negative signs
as expected indicating that the old age discourages the higher use of
chemical fertiliser per acre. However, the impact is not generally
statistically significant. This result is in line with the finding of
Jha and Hojjati (1993).
The variables regarding the sources of finance provide conflicting
results in different regions. In Punjab, the farm operators who purchase
fertiliser from their own savings (NOLOAN) or farm loans from commercial
banks (ADBP) apply significantly higher rates per acre than those
obtaining loan from private sources. In Sindh and NWFP fertiliser use
does not vary with sources of funding.
The variables relating to tenurial status show that the tenants
apply significantly higher rates of fertiliser per acre than do the
owner operators--it is true for all the provinces. The use of fertiliser
per acre on owner-cum-tenant farms appears to be no different than the
use on owner operated farms in all the provinces. These results confirm
the findings of NFDC (1994 and 1996) and Abroad and Chaudhry (2000) that
the tenants use higher rates of fertiliser.
Farm yard manure emerges as an important fertiliser use enhancing
factor. The parameter estimates of FYMA are statistically significant
carrying positive signs in all the provinces. The coefficients imply
that the use of fertiliser per acre increases 6-8 percent with 10
percent increase in per acre use of farm yard manure in various
provinces. The coefficients of dummy variables (DFYMA) are not only
positive but also statistically significant implying that the intercept
for the no FYMA cases is larger than for those with positive FYMA. This
result support our hypothesis stated earlier that the farmers would use
higher quantities of chemical fertiliser per acre along with higher use
of FYM since the later increases the crop production response for the
former.
The farm to market distance, FDIST, shows a negative and
statistically significant relationship with the fertiliser use in
Punjab. The parameter estimate of the DIST variable in case of Sindh and
NWFP is positive but is not statistically significant. The Punjab's
result is consistent with our a priori expectation which holds that
farther the input market from the farm lower is the use of fertiliser
per cultivated acre and vice versa. This in other words means that
widespread location of fertiliser sale points would be instrumental in
enhancing farm level fertiliser use. The distance to fertiliser sale
depot seems to matter little in the case of Sindh and NWFP.
A statistically significant inverse relationship exists between
farm size and fertiliser use per acre in all the provinces. The
fertiliser use elasticities with respect to farm size are -0.0709,
-0.0516 and -0.2579 in Punjab, Sindh and NWFP, respectively. The
magnitudes of these elasticity coefficients imply that a 10 percent
increase in farm size reduces the use of fertiliser per cultivated acre
by nearly 0.5 to 2.6 percent in various provinces of Pakistan. Although
small farmers may in general be assumed to use less fertiliser because
of their financial constraints, the inverse relationship points to small
farmer's keen interest in fertiliser use as a critical
technological factor in raising crop yields. Facing land constraints,
the small farmers are hard pressed to make their livings and thus put in
their maximum, including financial resources, to reap maximum possible
output.
The coefficients of the crop variables--area under a crop divided
by total cropped area, have generally shown positive and statistically
significant association with the fertiliser use per cultivated acre. The
variables, which have positive and significant impact on the use of
fertiliser per acre, include WHEAT, RICE, COTTON and SUGAR in Punjab.
While the one that carries a negative sign is VEFRUT, but the impact is
not statistically significant. All of the five crop area variables carry
positive signs in Sindh, but only two, i.e., COTTON and SUGAR, have
shown statistically significant association with fertiliser use per
acre. In case of NWFP, only the sugarcane has a positive and
statistically significant impact on per acre use of fertiliser, while
all the other crops--wheat, rice, vegetable and fruits, and maize, show
no statistically significant association with per acre use of
fertiliser.
4. CONCLUSION AND POLICY IMPLICATIONS
This paper was aimed at empirical verification of factors
determining farm level fertiliser demand in Pakistan. In spite of the
importance of the prices, it was difficult to quantify their effect on
fertiliser demand due to cross section nature of the data. But following
the conclusions of a large body of literature, fertiliser price must
have a negative effect on fertiliser demand. The other main findings of
the paper can be summarised as follows. Firstly, education in general
has a positive impact on fertiliser use and so does the access to
extension. Secondly, fertiliser demand is inversely related to farm
size, distance to fertiliser depot and the age of the farmer. However,
the coefficient of age is statistically non-significant. Thirdly, the
dummy variables for canal and tubewell water availability have negative
signs, which means that the contribution of individual variables to
fertiliser use is less relative to water available from both these
resources. Fourthly, the effect of tenurial status is less marked but
farm yard manure use promotes fertiliser use. Fifthly, all major crops
add positively to farm level fertiliser use but increase in
proportionate area under cotton makes the maximum contribution followed
by sugarcane and rice. Finally, institutional credit, at least in Punjab
was important in determining fertiliser use, despite the insignificance of source of funding for fertiliser.
Many policy implications follow from the conclusions of this paper.
For example, disproportionate increases in the price of fertilisers
relative to those of agricultural commodities have deleterious effects
on fertiliser use and should be discouraged. If fertiliser price
increase becomes an absolute necessity, then this must carefully be
matched with corresponding increase in commodity prices. As better
education and access to extension are positive factors, investment in
human capital in rural sector should be given somewhat greater
importance. In spite of poor financial resources, tenants and small
farmers are making greater use of fertiliser. It might be worthwhile as
under micro-finance banking to redirect credit emphasis towards these
classes, it might be advisable to promote tubewell irrigation to
supplement canal water to raise fertiliser use. Finally, the objective
of greater use and higher productivity in agriculture can be best
achieved by concentrating efforts at growing of more valuable cash crops
like cotton and by encouraging greater use of farmyard manure.
The comments on the paper were not received in time for press. Ed.
REFERENCES
Ahmad, Nisar, and M. Ghaffar Chaudhry (2000) Fertiliser Use at Farm
Level in Pakistan. Islamabad: National Fertiliser Development Centre
(NFDC) and Pakistan Institute of Development Economics.
Battese, G. E. (1997) A Note on the Estimation of Cobb-Douglas
Production Functions When Some Explanatory Variables Have Zero Values.
Journal of Agricultural Economics 48:2, 250-252.
FAO (1995) Production Year Book 1992-93. Rome: FAO.
FAO and IFA (International Fertiliser Industry Association) (1999)
Fertiliser Strategies. Rome: FAO.
Habib-ur-Rehman (1982) On Farm Yield Constraint Research--Annual
Report. Peshawar: Agriculture Research Institute, Ternab.
Jha, D., and B. Hojjati (1993) Fertiliser Use on Small Holder Farms
in Eastern Province, Zambia. Washington, D. C.: International Food
Policy Research Institute.
John Mellor Associates and Asianics Agro-Dev. International (1993)
Agricultural Prices Study. Islamabad: Pan Graphics (Pvt.) Ltd.
Johnston, B. F., and John Cownie (1969) The Seed-Fertiliser and
Labour Force Absorption. American Economic Review 59:4, 569-586.
Johnston, B. F., and Peter Kilby (1975)Agricultural and Structural
Transformation: Economic Strategies in Late-Developing Countries. New
York: Oxford University Press.
NFDC (1994) Spot Checking of Fertiliser Sale and Price Position
During Kharif Islamabad: National Fertiliser Development Centre (NFDC).
NFDC (1996) Fertiliser Use on Wheat: Farm Level Survey Rabi
1991-92. Islamabad: National Fertiliser Development Centre.
Pinstrup-Anderson, P. (1976) Preliminary Estimates of the
Contribution of Fertiliser to Cereal Production in Developing Marketing
Economies. The Journal of Economies 2, 169-172.
Rosegrant, M. W., and P. L. Pingali (1994) Policy and Technology
for Rice Productivity Growth in Asia. Journal of International
Development 6, 665-688.
Ramanathan, R. (1992) Introductory Econometrics with Applications.
Second Edition. New York: Dryden Press.
Schultz, T. W. (1965) Economic Crisis in World Agriculture. Ann
Arbor: University of Michigan Press.
SFS and STI (Soil Fertility Survey and Soil Testing Institute)
(1996) Annual Reports. Lahore: Department of Agriculture, Government of
Punjab.
Shakya, P. B., and J. C. Flinn (1985) Adoption of Modern Varieties
and Fertiliser Use on Rice in Eastern Trai of Nepal. Journal of
Agricultural Economics 36, 409-419.
(1) The selected Tehsils in Punjab province include Arifwala,
Chishtian, Hifizabad, Kabirwala, Lodhran and Sammundari from perennial
irrigated region, Mianwali and Rajanpur fi'om partially irrigated
zone, and Attock and Chakwal from the rainfed region. Tehsils selected
from Sindh include Khairpur, Nawabshah and Shahdadpur as having
perennial irrigation, and Mirpurkhas and Thatta from partially irrigated
zone. In case of NWFP, Charsada, Swat and Kulachi were selected from
perennially irrigated, partially irrigated and rainfed regions,
respectively.
(2) The crops which were grown by less than 6 percent of the
farmers in various provinces were excluded from the right hand side of
the models to avoid too many variables. For the same reason area under
vegetables and fruits were combined to gather--in total vegetables plus
fruits is grown from 32 percent to 50 percent of the sample farmers.
Munir Ahmad, M. Ghaffar Chaudhry and Ghulam Mustafa Chaudhry are
respectively, Senior Research Economist. Joint Director, and Staff
Economist at the Pakistan Institute of Development Economics, Islamabad.
Table 1
Descriptive Statistics
Punjab Sindh NWFP
Name Mean St. Dev. Mean St. Dev. Mean St. Dev.
FERT 91.99 47.32 103.29 52.57 82.97 52.87
PRIM 0.17 0.37 0.28 0.45 0.08 0.27
MID 0.15 0.36 0.04 0.20 0.08 0.27
MATR 0.21 0.41 0.06 0.24 0.14 0.34
INT 0.09 0.29 0.10 0.30 0.12 0.33
AGE 41.28 14.65 38.42 13.04 43.67 15.47
EXTEN 0.43 0.49 0.13 0.34 0.09 0.28
NOLOAN 0.73 0.44 0.62 0.49 0.89 0.31
COMERC 0.06 0.24 0.04 0.20 -- --
OTEN 0.15 0.36 0.09 0.29 0.11 0.31
TENE 0.15 0.36 0.40 0.49 0.37 0.49
CAN 0.30 0.46 0.89 0.32 0.94 0.24
TUB 0.10 0.29 0.06 0.24 -- --
FMDIST 7.87 5.86 7.90 4.98 6.19 8.43
DDIST 0.10 0.3 0.02 0.15 0.29 0.45
FYMA 42.17 85.6 25.22 47.33 68.51 79.47
DFY 0.32 0.47 0.46 0.50 0.09 0.28
CA 13.07 15.62 10.11 10.08 5.95 11.07
PWHEAT 0.43 0.14 0.37 0.18 0.30 0.22
PRICE 0.06 0.13 0.10 0.21 0.11 0.20
PCOTTON 0.25 0.22 0.24 0.21 -- --
PSUGAR 0.05 0.11 0.07 0.15 0.19 0.29
PVEFRUT 0.05 0.07 0.11 0.17 0.14 0.25
PMAIZ -- -- -- -- 0.16 0.21
No. of 1043 645 235
Observations
Note: Independent variables in Punjab and Sindh are the same, while
these variables ditFer in number in NWFP model: There were only a few
observations in case of the sources of loans--commercial loan and
others were combined and compared with NOLOAN. For the same reason
canal plus tube-well cases were combined and compared with canal
only. No farmer was found growing cotton in NWFP. About 47 percent
of the NWFP farmers were found growing maize on their farms and thus
maize variable is added in N WFP regression.
Table 2
Parameter Estimates of Fertiliser Use Equations in Various
Provinces (#)
Punjab Sindh
Variable Coefficient S.Error Coefficient S.Error
PRIM 0.1511*** 0.0427 0.0654 0.0446
MID 0.1050** 0.0467 -0.0175 0.1007
MATR 0.1650*** 0.0409 0.0951 0.0818
INT 0.1878*** 0.0584 0.1565** 0.0702
Ln(AGE) 0.0138 0.0427 0.0094 0.0560
EXTEN 0.0842*** 0.0306 0.1754*** 0.0484
NOLOAN 0.0858** 0.0432 -0.0078 0.0455
COMERC 0.1359* 0.0721 -0.0847 0.0990
OTEN 0.0364 0.0422 -0.1191* 0.0695
TENE 0.0782* 0.0437 0.0592 0.0485
CAN -0.0981*** 0.0366 -0.1784** 0.0897
TUB -0.1380** 0.0580 0.0222 0.1085
Ln(FYMA) 0.0594*** 0.0101 0.0681*** 0.0165
DFYMA 0.1452*** 0.0547 0.2067*** 0.0763
Ln(FDIST) -0.0113 0.0225 0.0271 0.0258
DFDIST -0.0512 0.0642 0.2246** 0.1011
Ln(CA) -0.0536*** 0.0176 -0.0466** 0.0240
WHEATP 0.5071*** 0.1339 0.3012 0.2180
RICEP 0.9919*** 0.1704 1.7579*** 0.2028
COTTONP 1.9209*** 0.1168 0.4036 0.2500
SUGARP 1.4033*** 0.1568 1.2508*** 0.2194
VEFRUTP -0.0793 0.2309 0.4765** 0.2314
MAIZP
CONSTANT 3.2519*** 0.2063 3.6498*** 0.3153
Adj. [R.sup.2] 0.34 0.32
NWFP
Variable Coefficient S.Error
PRIM 0.1201 0.1363
MID 0.3142** 0.1360
MATR 0.1483 0.1170
INT 0.2968** 0.1486
Ln(AGE) -0.2494** 0.1166
EXTEN 0.3209** 0.1556
NOLOAN -0.1167 0.0936
COMERC
OTEN 0.0272 0.1021
TENE 0.1917** 0.0990
CAN - 0.0411 0.1698
TUB -
Ln(FYMA) 0.0535** 0.0267
DFYMA 0 2810** 0.1445
Ln(FDIST) - 0.0461 0.0432
DFDIST - 0.0757 0.1068
Ln(CA) --0.2170*** 0.0506
WHEATP 0.5140* 0.2923
RICEP 0.8542*** 0.3252
COTTONP
SUGARP 0.9128*** 0.2971
VEFRUTP - 0.7091*** 0.2866
MAIZP 0.3668 0.3090
CONSTANT 3 4.4986*** 0.5174
Adj. [R.sup.2] 0.19
# Various tests were performed to detect the presence of
heteroscedaticity problem in the data. The dependent variable
heteroscedasticity problem was detected in case of both Punjab and
Sindh and the results presented in this table are obtained using the
transformed data [see Ramanathan (1992) for detailed procedure].
However, no heteroscedasticity problem was detected in case of NWFP.
Moreover, the linear versions of all of these three models were
also tried and in most of the cases the standard errors of the
estimates were very large and in some cases unexpected signs were
also observed. *,**,*** represent 10, 5 and I percent level of
significance respectively.