The response of Karachi Stock Exchange to nuclear detonation.
Javed, Attiya Y. ; Ahmed, Ayaz
Event studies focus on the impact of particular type of event such
as political changes or unexpected financial hardships etc. on the
behaviour of the stock market. The present study has attempted to
analyse the consequences of nuclear detonation by India and the one
followed by Pakistan in May 1998 on the activities at the major stock
market in Pakistan, namely the Karachi Stock Exchange (KSE). The three
indicators of stock market activities considered are average return,
volume and volatility. For this analysis we applied the ARCH model by
using daily data of KSE. The results showed that the nuclear detonation
by India has significant adverse effect on the daily rate of return at
the KSE, which declined by 2.7 percent on average. The event also
resulted in a significant increase in trade volume. The increase in
volume obviously resulted from extra-ordinary selling pressure as the
investors attempted to off-load their holdings. Besides these two
effects the Indian detonation also resulted in increased level of
volatility, though the increase was statistically insignificant. The
event of nuclear detonation by Pakistan, on the other hand, did not have
any significant effect on the average rate of return. However it
resulted in an increase in volatility and trade volume. It is
interesting to note that the stock market's response to the two
events in May 1998 was quite different. The declining trend in the share
prices between the two events is not only a reaction to the Indian
detonation; it was also the result of pessimistic expectations in the
light of expected response from Pakistan. The response to Pakistani
detonation was rather mild because most of the reaction had already been
absorbed in the wake of expectations. The market however reacted to the
financial curbs imposed on Pakistan from outside and the unexpected
freeze on foreign currency account. The market remained highly volatile
after 28 May 1998 with no clear direction.
1. INTRODUCTION
Stock markets are highly reactive to internal and external
developments. News of major events take no time to impact, the Stock
Exchange that quite often serves as a barometer of the good and bad for
the market. The importance of particular events and their effect on the
stock market has been a subject of study in financial literature. Such
studies attempt to assess the extent to which stock markets'
performance stray's from the normal around the time of the
occurrence of subject events. The stock market crash in the USA of
October 1987 and related crash in the Far East later in January 1998 led
to several studies of the event.
On October 14, 1987; the US stock market began the steepest decline
of its history, culminating in the crash of October 19, when the Dow
Jones Industrial Average fell 508 points (22.6 percent). Certain aspects
of the event of Black Monday as it is called emphasised the need for
research to explore what fundamental economic factors triggered the
large decline and the institutional and structural factors that were
inherent in the trading strategies of investors. Michell and Netter
(1989) have presented evidence that a tax bill containing anti takeover
provision proposed by the U.S. House Ways and Means Committee of Oct.
13, 1987 was the economic event that triggered the October 19 crash.
Other events and economic conditions during October 14-16 have been
cited in the literature including higher than expected trade deficits,
rising interest rate and increased worries about the government deficit
and fear of inflation by many studies. Certain trading strategies such
as index arbitrage and portfolio insurance has been cited by the Report
of Presidential Task Force (1988). Roll (1988) has argued the crash did
not begin in US since many other world markets experienced a severe
decline on October 19 before US markets opened. Lelland and Rubinstein
(1988) have claimed several institutional investors who were aware of
arching tried to sell on early 19th, before the portfolio insurance
sales adding to downward price pressure. Secondly October 14-16 decline
was news itself.
The present study attempts to analyse the consequences of nuclear
detonation by India followed by Pakistan in May 1998 on the activities
at Pakistan's major stock market, the Karachi Stock Exchange (KSE).
India conducted nuclear tests on 11 May, 1998. Pakistan followed suit on
28 May, 1998. The intervening period between these two events was marked
by a generally held expectation that Pakistan will also test its nuclear
devices. The major uncertainty was about the timing of the test. The
stock market strongly reacted to the Indian detonation and the KSE-100
index declined by a massive 137.80 points within three trading days
(from 1551.91 to 1412.36). As the expectation of a Pakistani response in
kind held firmer ground the index continued to decline till 28 May when
Pakistan did respond as expected. During the subsequent period Pakistan
was subjected to imposition of financial sanctions and economic curbs
from the world community and the stock market could not recover from the
recession for the remaining months of 1998.
It is interesting to note that the stock market's response to
the two events in May 1998 was quite different. The declining trend in
the share prices between the two events was not only a reaction to the
Indian detonation; it was also the result of pessimistic expectations in
the light of expected response from Pakistan. The response to Pakistani
detonation was rather mild because most of the reaction had already been
absorbed in the wake of expectations. The market however reacted to the
financial curbs imposed on Pakistan from outside and the unexpected
freeze on foreign currency account. The market remained highly volatile
after 28 May 1998 with no clear direction.
In the light of the above background this study analyses changes in
the behaviour of stock market around May 1998. In particular we study
the effects of the two events on the average rate of return in the
market, its volatility and trading volume at Karachi Stock Exchange
(KSE). The study is based on daily data and it covers the period April
1995 to June 1999.
2. MARKET OVERVIEW
It is also interesting to present a brief overview of the market
specially its performance during these two events. The Karachi Stock
Exchange (KSE) came into existence on September 18, 1947. Though two
other stock exchanges were later established in the country, in Lahore
and Islamabad in 1970 and 1992 respectively, the KSE remains the main
centre of activity where 75-80 percent of current trading takes place.
It gained momentum in 1960 and made significant progress in listings and
capitalisation. However it lost momentum in 1970 due to political unrest
and then nationalisation policies adopted by the government. The policy
of greater reliance on private enterprise restored the market sentiment in the 1980s. However the market actually regained its momentum in early
1990s when it was opened to international investors. This put a new life
in the market giving rise to an unprecedented bullish trend. The size
and depth of the market was also improved. In terms of its performance
the market has been ranked third among emerging markets. Unfortunately
the market could not maintain its performance in later years because of
political and economic instability.
The KSE depicted handsome improvement when the previous government
assumed office in Feb. 1997. Due to some extraneous factors, where
Government has no control, like sharp fall in the Far Eastern capital
markets and heavy drop in the value of their currencies, the
international fund managers started to offload their holdings in the
region. The shock waves emitted by that market badly affected our stock
market as well. The selling pressure by foreign fund managers resulted
in the fall of KSE-100 index which came down to 1746.31 points on
January 1, 1998 and due to unremitting selling pressure further declined
to 1609.16 points on January 28, 1998.
The stock market came under severe stress following the Indian
nuclear tests on May 11, and 13, 1998, when KSE-100 index dropped to
1514.11 points on May 11 from 1551.91 points on May 8, 1998 and 1412.36
points on May 14, 1998. This downward slide continued due to unable
security environments created by the detonation of nuclear devices and
belligerent statements by Indian leaders. The stock market further
declined when Pakistan conducted its own nuclear test on May 28, 1998
and due to multifarious reasons like repercussions arising out of
sanctions imposed by the United States of America, western countries,
Australia and Japan followed by the World Bank, IMF and the Asian
Development Bank. The downgrading of Pakistan's credit by
Moody's South Asian Crisis, freezing of foreign currency accounts
and panic selling by foreign fund managers further accentuated the
situation and the market continued sliding and touched the lowest level
of 765.74 points on July 14, 1998. The recessionary tendencies continued
to affect the stock markets in the aftermath of these monumental events.
Government took several steps to stabilise the economy and successfully
concluded an agreement with the IMF and rescheduled its foreign debt
with the Pads club and subsequently with the London Club. These steps
substantially reduced the pressure on our economy. The government also
announced unification of the exchange rate. These steps gradually
started impacting the stock market in a positive manner, the KSE-100
index improved to 976.55 points on September 1, 1998, 1104.68 points on
October 1, 1998. The Stock market depicted improvement during second
week of November 1998 due to partial lifting of sanctions by USA and
Japan, expected resumption of IMF support and fading of prospects of
sovereign default risk. The market had been moving in the range of
950-1050 till the third week of April 1999. Thereafter it started
showing improvement as reflected in KSE-100 index which was 1416.62 on
May 24, 1999 due to stabilisation measures initiated by that Government.
However flare-up of conflict on the line of control in Kashmir with
India in Kargil has adversely affected the market and looming dangers of
war depressed it. Thus the gain made during several months was eroded,
the index came down to 1052.19 points on June 18, 1999. The stock market
has continued to remain listless and directionless ever since and has
been moving in the range of 11001250 points.
The present government has taken some steps for the rescue of the
stock market. The results of these measures have not come out so far.
The paper is organised in four sections. After the introduction,
the inquiry will proceed as follows: Section 2 provides the analytical
framework and the third section discusses the data, estimation and
results. The final section offers conclusions.
3. ANALYTICAL FRAMEWORK
As mentioned in the introduction, this paper studies the effects of
India's and Pakistan's nuclear tests in May 1998 on the
activities at the KSE. The three indicators of stock market activities
used for analysis are average return, volume and volatility on the basis
of daily data. While trading volume at KSE is readily available, the
return series can be computed by taking the logarithmic first difference
of the series on the general price index. For the measurement of daily
volatility, we shall use the series of ARCH variance derived from the
best-fitted ARCH (Autoregressive conditional heteroskedasticity) model
to the series of return (see Enders (1995) for ARCH models).
The ARCH models, originally introduced in Engle (1982) are useful
in the study of the pattern of volatility clusters in a series. The ARCH
models are frequently used for analysing financial time series [see
Engle, Lillen and Bellerslev (1987); Agairy (1989) and Chou (1988)] and
their application to event studies has been done by Jong, Kemma and
Klock (1992). These models have been quite successfully applied to stock
market data in Pakistan as well [see, for example, Uppal (1993) and
Ahmed and Rosser (1995)]. An ARCH model consists of two parts, an
autoregressive moving average (ARMA) equation and an ARCH equation. The
generalised version of ARCH model, called GARCH model includes the
following ARMA process:
[Y.sub.t] = [[alpha].sub.0] + [p.summation over (i=1)]
[a.sub.i][Y.sub.t-i] + [q.summation over (j=0)][beta]
[sub.j][[epsilon].sub.t-j], [[beta].sub.0] = 1 ... ... ... ... (1)
where p and q are the orders of autoregressive (AR) and moving
average (MA) terms to yield an ARMA (p, q) model. It is assumed that the
random error term has mean equal to zero and no autocorrelation at any
lag. To specify an ARCH process it is assumed that
[[epsilon].sub.t] = [v.sub.t] [square root of [h.sub.t]] ... ...
... ... ... ... (2)
According to the above equation the random error term is decomposed
into, [v.sub.t], which is homoskedastic with, [MATHEMATICAL EXPRESSION
NOT REPRODUCIBLE IN ASCII] and [square root of [h.sub.t]], which is
heteroskedastic with the ARMA process:
[h.sub.t] = [[phi].sub.0] + [r.summation over
(k=1)][[phi].sub.h][[epsilon].sup.2.sub.t-k] + [s.summation over
(m=1)][[lambda].sub.m][h.sub.t-m] ... ... ... ... (3)
where r and s are the orders of MA and AR terms in the
heteroskedastic variance. The above equation is called ARCH equation, in
which the parameter [[phi].sub.k] is the ARCH coefficient of order k and
[[lambda].sub.m] the GARCH coefficients of order m.
The ARCH Equation (3) allows heteroskedasticity in the time series
of residuals, This heteroskedasticity in time series represents the
special feature of financial variables, especially stock prices. It is
typically observed that stock price series contain periods of large
volatility followed by periods of relative stability. The instability in
stock markets introduced by some major shock usually initiates a
sequence of continuing fluctuations. These fluctuations partly reflect
the genuine response of agents to continuously revising information.
Another reason could be that not all the agents jump on the
'band-wagon' of 'mass psychology' and, therefore,
some of the reaction to the shock could be delayed. Furthermore, agents
may have stocky expectations regarding the consequence of the shock on
share prices.
It is also important to note that the volatility clusters generated
by any shock are not made of shocks in the same direction. For example
following a bad news not all the price fluctuations are in the downward
direction; the period of volatility would include negative as well as
positive changes, reflecting 'technical correction' and
reaction to delayed information respectively. Therefore the inertia in
volatility causes autocorrelation in the size of random fluctuations
ignoring their algebraic signs and it cannot be properly captured by the
conventional linear autocorrelation in residuals. The ARCH equation that
captures this inertia is a simple ARMA process in squared residuals.
Since the squared residuals approximate variances at each point, the
ARCH equation basically parameterises heteroskedastic residuals in time
series.
It is to be noted that ARCH model is applicable to a stationary
series. Therefore appropriate unit root tests need to be applied on the
Series under consideration in order to determine the order of its
integration and subsequently taking the difference of the series by the
required number of times.
Once the ARCH model is estimated, the next step in our context is
to estimate the series of ARCH variance given by Equation (3). This
series along with the series of average return and volume are then
studied to determine their responses to nuclear detonations in India and
Pakistan on 12 and 28 May 1998 respectively. The period between these
two dates was crucial for the stock market because it triggered intense
speculations regarding the likely response from Pakistan. Most of the
statements from the relevant official departments lent support to the
general perception that Pakistan was preparing for a rigorous response
by conducting its own detonations. As it turned out, the perception
turned into reality on 28 May 1998.
Since the event of 28 May was anticipated, the stock market
response was rather mild. The reason was that probably most of the
adjustments had already been made in anticipation during 12 to 28 May.
What followed from 28 May onward was a reaction more to economic
hardships that Pakistan faced from outside than to the detonation
itself. Thus we shall consider the response of stock market to the
events of May 1998 as having two phases, the first corresponding to the
period of speculation from 12 to 28 May and the second to economic
sanctions and curbs against Pakistan from world community from 28 May
onwards.
Thus to analyse the effects of these events on the KSE we define
two event-dummies. One of these event-dummies, denoted D1, corresponds
to the period intervening between 12 and 28 May, when India and Pakistan
conducted nuclear experiments respectively, while the second
event-dummy, denoted D2, corresponds to the period from 29 May onwards,
that is
D1 = 1 for the days from 12 May to 28 May, = 0 otherwise.
D2 = 1 for the days from 29 May onwards, = 0 otherwise.
To determine the response of KSE to the two events we postulate the
following relationships:
[R.sub.t] = [[alpha].sub.0] + [[alpha].sub.1]D1 + [[alpha].sub.2]D2
+ [p.summation over (i=1)] [[alpha].sub.i][R.sub.t-i] + [q.summation
over (j=1)][[beta].sub.i][[epsilon].sub.t-j] ... ... ... (4)
[h.sub.t] = [[alpha].sub.0] + [[alpha].sub.1]D1 + [[alpha].sub.2]D2
+ [p.summation over (i=1)] [[alpha].sub.i][h.sub.t-i] + [q.summation
over (j=1)][[beta].sub.i][[epsilon].sub.t-j] ... ... ... (5)
[V.sub.t] = [[alpha].sub.0] + [[alpha].sub.1]D1 + [[alpha].sub.2]D2
+ [p.summation over (i=1)][[alpha].sub.i] [V.sub.t-i] + [q.summation
over (j=1)][[beta].sub.i][[epsilon].sub.t-j] ... ... ... (6)
In these equations [R.sub.t], [h.sub.t] and [V.sub.t] denote
return, ARCH variance and the natural log of trade volume respectively.
4. DATA, ESTIMATION AND RESULTS
We use daily data on trading volume and the general share price
index prepared by the State Bank of Pakistan (SBP). The index is
adjusted for cash dividends, bonus shares and right issues. Therefore no
further adjustment is required for the computation of returns from price
index. The study is based on 998 daily observations covering the period
from April 1995 to June 1999.
For the estimation of the ARCH model we first test the stationary
properties of the series of share price index. An application of
Augmented Dickey-Fuller (ADF) tests indicates that the series of natural
log of share price index has a unit root, that is, it is non-stationary.
We then applied the ADF tests on the series of return (logarithmic first
difference of the series of price index). The results indicate that the
return series is stationary, that is, the series of the natural log of
price index is integrated of order one. Therefore the ARCH model as
specified by Equations (1), (2) and (3) is applicable for the
logarithmic first difference of the share price index.
In order to diagnose the ARCH models we start with correlograms for
the series of return and make a rough guess about the autoregressive
(AR) and moving average (MA) terms on the basis of the shapes of
autocorrelation and partial autocorrelation functions. The selected
AR/MA equation is estimated and correlograms for residuals are studied
to determine the precise specification of ARIMA equation. In addition
correlograms for squared residuals are also studied to determine the
nature of heteroskedasticity in residual variance, which is used for the
specification of ARCH equation. The specified ARCH model is estimated
and the correlograms for residuals and squared residuals are again
studied in order to make further improvements in the specification.
This step-wise procedure is continued until the regression
residuals approximate white noise. To confirm that the residuals are
white noise, the [chi square] test with Q-statistic is applied on the
cumulative autocorrelation coefficients for sufficiently lengthy lags
[see Maddala (1992) for Q-statistic]. We chose lag one to 36 for the
application of [chi square] test.
The final estimate of the ARCH model is given in Table 1. The ARIMA
equation shows the presence of strong autocorrelation of autoregressive
variety, suggesting inertia in the series of returns over a long period
though it diminishes geometrically over time. We also observe the
presence of significant ARCH effect indicating clusters of volatility.
The ARCH coefficient is small but statistically significant. This
coefficient shows that about 15 percent of a volatility shock in the
current period is carded to the next period. The (}ARCH coefficient is
much larger and highly significant. The estimate suggests that about
82.4 percent of the volatility shock in, say period 0 is carded to
period 1, 67.9 percent (82.4 percent of 82.4 percent) to period 2 and so
on. This means that ARCH effect is persistent, causing strong inertia in
volatility. The insignificance of Q-statistics at lags one to 36
indicates that the specified model appropriately captures
autocorrelation as well as heteroskedasticity.
Using the estimated ARCH model, we have estimated the series of
ARCH variance to be used for the study of the two events on the activity
at the KSE. The results of estimation for Equations (4), (5) and (6)
after removing autocorrelation in residuals by appropriate AR or MA
terms, are presented in Table 2.
The results show that the nuclear detonation by India had
significant adverse effect on the daily rate of return at the KSE, which
declined by 2.7 percent on average. The event also resulted in a
significant increase in trade volume. The increased volume obviously
resulted from extra-ordinary selling pressure as the investors attempted
to off-load their holdings. Besides these two effects the Indian
detonation also resulted in increased level of volatility, though the
increase was statistically insignificant. The event of nuclear
detonation by Pakistan, on the other hand, did not have any significant
effect on the average rate of return. However it resulted in an increase
in volatility and trade volume.
The above results have interesting interpretations. The decrease in
average return, and increase in trade volume during the period between
the nuclear detonations by India and Pakistan clearly indicate that the
agents had firm expectations for the upcoming recession in the stock
market. Furthermore since there was no significant increase in
volatility, the agents seemed to be quite certain about the pessimistic
outlook. These expectations were formed in the backdrop of generally
held perception that Pakistan was actively preparing for a response in
kind to the Indian detonation despite political and economic pressures
from abroad. These expectations indeed turned out to be true on 28 May
1998.
Following the almost certain expected response from Pakistan, the
stock market became highly volatile with no change in the average
return, which had already dropped to the record low level as a result of
pessimism prevailing during 12 to 28 May. The uncertainty can mainly be
attributed to an initial severe reaction from the USA, World Bank and
the IMF, which later softened. Besides the economic sanctions and curbs
there were so many other factors that contributed to the increased
uncertainty. Three important factors were the uncertainty about the
outcome of negotiations for debt rescheduling from the London and Paris
clubs of lenders, stalling of the negotiations with the IPPs
(independent power producers) on power tariff rates and general
degradation in political and law-and-order situation in the country. One
or the other of these factors continued to haunt the investors.
5. CONCLUSION
This study has examined the effects of nuclear experiment in India
on 11 May 1998, shortly followed by the one in Pakistan, on the
activities at the KSE. The three indicators of stock market activities
considered are average return, volume and volatility. For this analysis
we have applied the ARCH model by using daily data of KSE.
The results show that the nuclear detonation by India had
significant adverse effects on the daily rate of return at the KSE,
while trading volume and the level of volatility increased. The event of
nuclear detonation by Pakistan, on the other hand, did not have any
significant effect on the average rate of return. However it resulted in
an increase in volatility and trade volume.
The decrease in average return, and increase in trade volume during
the period between the nuclear detonations by India and Pakistan clearly
indicated that the event was anticipated and most of the adjustment had
already been made. After 28 May onward the reaction was more due to
economic hardships that Pakistan faced from internal recession and the
outside sanctions.
The reaction of the stock market to the nuclear detonations by
India and Pakistan was therefore not uncharacteristic in any sense; it
was quite consistent with the common expectations.
Authors' Note: We are highly indebted to Dr Eatzaz Ahmad,
Associate Professor at Quaid-i-Azam University and Dr Fazal Husain,
Senior Research Economist at Pakistan Institute of Development
Economies, Islamabad for their valuable suggestions.
REFERENCES
Agiray, V. (1989) Conditional Heteroscedasticity in Time Series of
Stock Returns: Evidence and Forecasts. Journal of Business 1: 55-80.
Ahmed, E., and J. B. Rosser Jr. (1995) Non-linear Speculative
Bubbles in the Pakistani Stock Market. The Pakistan Development Review
34: 1 25-41.
Chou, R. (1988) Volatility Persistence and Stock Valuations: Some
Empirical Evidence Using GARCH Journal of Applied Econometric 56: 3
701-714.
Enders, W. (1995) Applied Econometric Time Series. New York: John
Wiley & Sons.
Engle, R. E. (1982) Autoregressive Conditional Heteroscedasticity
with Estimates of the Variance of United Kingdom Inflation.
Econometrical 50: 987-1007.
Engle, R. F., D. M. Lilen, and Bollerslev (1987) Estimating Time
Varying Risk in the Term Structure: The ARCH-M Model. Econometrica 55:
391-407.
Jung, Frank De, Angelien Kemma, and Teun Klock (1992) The
Contribution to Event Study Methodology with an Application to the Duch
Stock Market. Journal of Banking and Finance 16: 11-36.
Lelland, Hayne, and Mark Rubinstein (1988) Comments on the Market
Crash: Six Months After. Journal of Economic Perspectives 2: 45-50.
Maddala, G. S. (1992) Introduction to Econometrics, Second Edition.
New York: MacMillan.
Michell, M. L., and Jeffrey N. Natter (1989) Trigging the 1987
Stock Market Crash. Journal of Financial Economics 24: 37-68.
Report of Presidential Task Force on Market Mechanism, Nicholas F.
Brady (1988) Chairman, January 8.
Roll, Richard (1988) The International Crash of Oct 1987. In R.
Kamphuis, R. Kormendi and J. Walson (eds) Black Monday and Future of
Financial Markets (Irwin Homewood II).
Uppal, J. (1993) The Internationalisation of the Pakistani Stock
Market: An Empirical Investigation. The Pakistan Development Review 32:4
605-618.
Attiya Y. Javed and Ayaz Ahmed are Research Economists at the
Pakistan Institute of Development Economics, Islamabad.
Table 1
Results of ARCH Model for Daily Return
ARIMA Equation
Intercept -0.000109
(-1.16)
AR(1) Coefficient 0.156
(4.76 *)
AR(3) Coefficient 0.075
(2.40 **)
ARCH Equation
Intercept 0.000012
(4.64 *)
ARCH(1) Coefficient 0.155
(9.53 *)
GARCH(1) Coefficient 0.824
(75.77 *)
[R.sup.2] 0.016
F-Statistic 3.28 *
D.W. Statistic 2.07
Q-Statistics for Residuals (lag 1 to 36) All Insignificant
Q-Statistics for Squared Residuals (lag 1 to 36) All Insignificant
* Significant at 1 percent level.
** Significant at 5 percent level.
Table 2
The Event Effects on Stock Market Activities at the KSE
Rate of Return ARCH Variance
Intercept -0.00011 0.00028
(-0.14 *) (4.34 *)
Coefficient of Dl -0.027 0.00020
(-4.53 *) (1.60)
Coefficient of D2 0.00013 0.00046
-0.08 (4.13 *)
AR(1) Coefficient 0.097 0.885
(3.06 *) (52.68 *)
MA(1) Coefficient
MA(2) Coefficient 0.215
(6.19 *)
MA(4) Coefficient 0.110
(3.27 *)
[R.sup.2] 0.036 0.897
F-Statistic 12.27 * 1720.09 *
D.W. Statistic 2.00 1.94
Q-Statistics (lag 1 to 36) All Insignificant All Insignificant
Natural Log of
Trading Volume
Intercept 17.178
(106.91 *)
Coefficient of Dl 0.803
(3.05 *)
Coefficient of D2 1.137
(4.41 *)
AR(1) Coefficient 0.965
(100.19 *)
MA(1) Coefficient -0.622
(-21.55 *)
MA(2) Coefficient
MA(4) Coefficient
[R.sup.2] 0.775
F-Statistic 855.30 *
D.W. Statistic 1.90
Q-Statistics (lag 1 to 36) All Insignificant
* Significant at 1 percent level.
** Significant at 5 percent level.