1. Introduction
The outbreak of COVID-19 in December 2019 and the consequent increase in uncertainty has had a massive financial effect on the real economy (
Bakas and Triantafyllou 2020). The hike in uncertainty due to COVID-19 is typically associated with falling aggregate demand and, as a result, disrupting economic activity. The World Industrial Production Index fell by 4.5% in the first quarter of 2020 (
Baumeister and Hamilton 2019). The IMF, in its world economic outlook (
Gopinath 2020), documented that it was expected that the world economy would experience the worst COVID-19-related recession since the 1930s Great Depression
1. This unprecedented outcome not only upon human lives but also on the global economy was due to many governments implementing drastic measures to prevent the spread of COVID-19. They instituted lockdowns, strict quarantine policies, social distancing (
Rahman et al. 2021) and travel bans both inward and outward.
On the other hand, to combat the above adversaries, governments also put huge economic stimulus packages through their monetary and fiscal policies. Since this study relates to Australian stock returns and their volatility, it would be pertinent to briefly describe how the monetary and fiscal tools used by the Australian federal government to support the economy. On the fiscal side, some of the major actions
2 taken by the Australian government which are listed below in
Table 1.
On the other hand, Australia adopted an expansionary monetary policy by reducing interest rates and simultaneously expansionary fiscal policy by increasing transfer payments. The Reserve Bank of Australia’s (RBA) cash rate, which influences the market interest rate, was 0.75% in January 2020. However, to save the COVID-19 smashed economy, the RBA slashed its official cash rate three times in 2020 and, in February 2021, decided to let it stay at its current level of 0.10%
3.
Our study relates to the strand of literature that examines the effect of COVID-19 on stock market performance in terms of returns and returns’ volatility. Given the time frame of our study, limited studies have examined the effect of the COVID-19 pandemic on stock market performance.
Zhang et al. (
2020), using a minimum spanning tree analysis, on top ten countries provide general patterns of risks associated with specific countries having the highest number of COVID-19 cases as of 27 March 2020. Their results suggest that stock market risks significantly rose in the sample countries. Also, the rise in the uncertainty of COVID-19 and its negative effect on the real economy has increased financial markets’ volatility.
Al-Awadhi et al. (
2020) implement panel data analysis to examine the effect of COVID-19 on Chinese stock markets for the period 10 January 2020 to 16 March 2020. Their results suggest that COVID-19 has a significant negative effect on Chinese stock returns.
Mazur et al. (
2021) examine the performance of the US stock market (evidence from S&P 500) and provide evidence that the stocks of natural gas, food, healthcare and software stocks earn higher positive returns, while on the other hand, stock prices of petroleum, real estate, entertainment and hospitality sectors fall dramatically because of COVID-19. This paper investigates the effect of COVID-19 on the volatility of Australian stock returns and further analyses the effect of both negative and positive news (shocks) on the volatility of Australian stock returns by investigating the presence of asymmetry and purportedly leverage.
In addition to the above, choosing the Australian stock market is motivated by several factors. Firstly, although Australia was not among the most affected nations in terms of human cost (death, physical effect of COVID-19 infection and mental trauma)
4, its stock market was one of the most affected in the world, making it an interesting candidate for analysis. The benchmark Australian stock price index-S&P/ASX 200
5-declined more than 27%, which was the most compared to top world stock price indices (see
Table 2). Although the stock market seemed to be decoupled from the GFC, which originated in the USA in 2008, the reaction of the Australian stock market to the COVID-19 pandemic again makes it a strong point for our study. Our study aims to fill this gap by examining the effect of COVID-19 on the volatility of Australian stock returns using the top 200 Australian stocks by market capitalisation listed on S&P/ASX200. We also analyse the impact of both negative and positive news (shocks) on the stock returns’ volatility and investigate the asymmetric nature of the shocks’ impact and the possible presence of leverage as a special case of asymmetry.
We employ the GARCHX model, which makes it possible to include variables of interest in both the mean and conditional variance specification. We use three proxies for COVID-19, namely: total number of confirmed cases due to COVID-19; the total number of deaths due to COVID-19; and a dummy variable indicating negative news for the period between 24 February 2020 to 22 March 2020. To capture the asymmetric effects of the random shocks, we utilise exponential GARCH (EGARCH), which capture asymmetry and leverage as a special case of asymmetry with appropriate restrictions imposed on the model’s parameters. Asymmetry arises when the positive and negative shocks of the same magnitude have an unequal impact on returns volatility. On the other hand, according to
McAleer and Hafner (
2014), leverage as a special case of asymmetry is related to increased volatility. This is due to negative shocks to returns and a decline in volatility due to positive shocks to returns, so what it means that leverage captures the negative correlation between returns shocks and subsequent shocks to volatility.
The findings provide evidence that infectious diseases like COVID-19 can seriously impact stock market returns and their volatility. The findings could be of substantial interest to specific stakeholders, such as market participants, portfolio and hedge managers, regulators, and policymakers. The rest of the paper is organised as follows. In the subsequent sections, data and descriptive statistics are presented. In
Section 3, we briefly elaborated on the choice of our model, while
Section 4 presents an empirical study related to asymmetry, leverage and NIC for four models and monitor the impact of shocks on the conditional volatility of returns and forecasts evaluation in
Section 5.
Section 6 contains some concluding remarks.
2. Data & Descriptive Statistics
We examine the effect of COVID-19 on the value-weighted returns (VWR) of Australian stock prices and their volatility. As our sample, we consider daily Australian stocks (close) prices data of 200 stocks listed on S&P/ASX200 (ASX-200) taken from Yahoo Finance and covers the period 27 January 2020 to 29 December 2020
6. We choose 27 January 2020 as the start of our period because the very first case of COVID-19 infection was reported on 26 January 2020 for Australia. Due to the non-availability of stocks data for Caltex Australia and TPG Telecom Ltd for the period of our interest and missing values of United Malt Group from 27 January 2020 to 22 March 2020, we use stock prices of 197 stocks of ASX-200 in our study. Following
Apergis and Apergis (
2020), we employ the total number of confirmed cases of COVID-19 (COVID-19A) and the number of deaths due to COVID-19 (COVID-19B) as proxies for COVID-19’s effect on the VWR of the stocks of ASX-200 and their volatility
7. The data for COVID-19A and COVID-19B are obtained from Our World in Data.
Additionally, to capture the effect of negative news, following
Rahman et al. (
2021), we also introduce a dummy variable in our model representing negative news (COVID-19C) as a proxy for the COVID-19 effect on the VWR of the stocks of ASX-200 and their volatility. However, the use of the dummy variable differs from
Rahman et al. (
2021) in that instead of being only a specific date, we use this dummy variable for 24 February 2020 to 22 March 2020. The date 24 February 2020 is the day on which the Australian Health Protection Principal Committee (AHPPC) issued a statement on COVID-19
8, stating that if COVID-19 develops as a pandemic, then its widespread community transmission would almost be impossible to prevent. Hence a significant local outbreak would place enormous pressure on the healthcare system. Then on 11 March 2020, WHO did declare that COVID-19 a pandemic by saying that “we are deeply concerned both by the alarming levels of spread and severity and by the alarming levels of inaction. We have therefore made the assessment that COVID-19 can be characterised as a pandemic”
9. Such a situation could be a blow to the economy without adequate financial support from the government. Thus, the impact of the negative news was likely to persist until the Government intervenes to save the economy substantially. We consider 22nd March 2020 as the date that features the Australian federal government’s economic response to COVID-19 by announcing its second economic stimulus package of
$130 billion.
Thus, our selected period from 24 February 2020 to 22 March 2020 signifies the time of negative news due to COVID-19’s effect on the VWR of ASX-200 stocks and their volatility (see panel A of
Figure 1). To better visualise the returns volatility, we compute the variance of returns using a rolling window having a length of 22 days and present the information in Panel B of
Figure 1. We find there is a significant rise in the variance from 5.7 to 22.37 on the dates when the first news (AHPPC’s statement) and the first economic package of AUD 17.6 billion was announced. However, we observe the volatility continues to rise and reaches the maximum of 25.43 on 19 March 2020 and only drops to 24.99, indicating the first economic response was not very effective in terms of reducing stock market volatility. However, what is notable is a significant and rapid decline in volatility after the second economic package of AUD 130 billion was announced, incorporating the Jobseeker and Jobkeeper payments to eligible individuals and businesses. We observe that from the beginning of May 2020, the volatility has been consistently below 2.63. Thus, the visualisation provides insights that both positive and negative news affect volatility; a negative news increases volatility and vice-versa, albeit with asymmetric effects.
For this reason, we intend to explore the impact of news together with the effects caused by changes in both interest rate and the relative oil price on the VWR-ASX200 volatility. Hence, following
Apergis and Apergis (
2020), this paper employs daily data of a 1-month interbank interest rateto proxy for short-term interest rates and crude oil prices. The data on interest rates and crude oil prices are obtained from the Reserve Bank of Australia and Yahoo Finance, respectively. We do not have missing values in our final dataset. Summary statistics and correlation matrix on these variables are presented in
Table 3.
3. Methodology and Empirical Design
This paper considers GARCHX and EGARCH models to examine the effect of COVID-19 on value-weighted returns of Australian stock prices. The motivation to select these models comes from prior studies discussing the correlation between stock returns and their volatility (
Al-Awadhi et al. 2020;
Zhang et al. 2020;
Mazur et al. 2021). The EGARCH model is particularly useful for measuring the asymmetric effects of news and the consequent leverage if it exists. Both these volatility models are introduced with additional covariates that can affect the mean of stock returns in the GARCH equation. Since we are specifically interested in examining the impact of the COVID-19 shock on the average and conditional volatility of stock returns, we include this factor in both the conditional mean and variance equations. GARCH models are preferable over the ARCH models because (1) we do not require non-negativity constraint in parameters (2) GARCH (1,1) and EGARCH(1,1) models are capable of capturing higher order ARCH (p,q) models.
Moreover, it is well established in the literature that oil prices (
Cologni and Manera 2008;
Kilian 2009;
Nguyen and Bhatti 2012;
Reboredo and Rivera-Castro 2014) and interest rates (
Laopodis 2013;
Huang et al. 2016;
Assefa et al. 2017) are useful in determining the stock prices and stock returns. For this reason, we also include both percentage changes in oil prices and the changes in the short-term interest rates as covariates in the mean equation of both the volatility models. The mean equation of our volatility models takes a common form as shown below in Equation (1); nonetheless, the conditional variances of the two models are presented in Equations (2) and (3) below.
Mean Equation:
where
represents the value-weighted return of 197 stocks listed on S&P ASX-200. The first sum is the autoregressive (AR) component, with
and
being a constant and the error term, respectively. Since we are using the GARCHX variant of the GARCH family, so we have added
which is composed of COVID19-A, COVID19-B and COVID19-C (see
Section 2). Moreover, literature has established a role of oil prices (
Cologni and Manera 2008;
Kilian 2009;
Nguyen and Bhatti 2012;
Reboredo and Rivera-Castro 2014) and interests rates (
Laopodis 2013;
Huang et al. 2016,
Assefa et al. 2017) in determining the stock prices and stock returns, so Equation (1) also includes both oil prices as
and short-term interest as
.
Conditional Volatility or Variance Equation:
where
represents conditional volatility and the variable,
denotes the standardised errors.
Throughout, we assume that the random shocks,
follow Generalized Error Distribution (GED) such that
, where
is the shape parameter that would also be estimated along with the other parameters.
10 To estimate these models, we will apply the Quasi-Maximum Likelihood Estimation (QMLE) method using EVIEWS 11. Note that by setting
in Equation (2), the GARCHX model reduces to a simple GARCH model. Following
Bollerslev (
1986), we require the constraints,
and
such that the conditional variances or the GARCH term,
, are postive and stationary. Furthermore, the restriction
is a sufficient condition to ensure that the QMLE of GARCH(1,1) model in Equation (2) are consistent and asymptotically normal (
Chang and McAleer 2017). Likewise, as stated in
He et al. (
2002) and
McAleer and Hafner (
2014), the EGARCH model will be stable only if
< 1, whereas the asymmetry holds if
. Meanwhile, leverage exists when we observe
and
. This justifies the choice of our model(s) to conduct empirical analysis which is done in the next section.
4. Empirical Analysis
Our empirical analysis in this section begins with the identification of an optimal ARIMA (ARIMAX) model and then followed by estimating ARCH/GARCH specification. In the diagnostic part, firstly, we execute a graphical plot of all the time series used in our study. A visual analysis indicates that the variables do not show a trend and that the fluctuations in each series are around its mean but with a larger variability (refer to
Figure 2). Secondly, we apply the Box-Jenkins methodology and obtain ARMA (1,11) with covariates as a parsimonious model for our mean equation. To identify the possible presence of heteroskedasticity and the ARCH effects, we construct correlograms of the squared residuals in
Figure 3 below. This qualitative analysis reveals significant ARCH effects in both the initial model (with constant only) and ARMA (1,11) model. The outcome is also confirmed by the Breusch-Pagan test of heteroskedasticity and the LM test, respectively (see panel B of
Table 2. The results in panel B of
Table 4 confirms the presence of heteroskedasticity and (G)ARCH effect, also evident from the correlogram of residuals squared from the mean equation with constant only and ARMA (1,11) models (see
Figure 3).
We estimate the parameters of the GARCHX model using Equations (2) and (3); for brevity, results are not presented here. The findings concerning three alternative model specifications correspond to three alternative proxies of COVID-19 variables. Column 1 corresponds to COVID-19A, i.e., the total number of confirmed cases of COVID-19, column 2 relates to COVID-19B, i.e., the total number of deaths due to COVID-19 and column 3 parallels to COVID-19C. It is a dummy variable that depicts the negative news, and it takes a value of 1 from 24 February 2020 to 22 March 2020 otherwise 0. In the mean equation, while the coefficients of COVID-19A and COVID-19B are positive and insignificant, the coefficient of COVID-19C provides evidence that COVID-19 has a negative and statistically significant effect on Australian stock returns. Surprisingly, the coefficients of COVID-19A and COVID-19B are insignificant. However, a negative and statistically significant coefficient of COVID-19C implies that the stock market has already taken the effect of negative news and may explain why the coefficients of COVID-19A and COVID-19B are insignificant. Most importantly, the model provides evidence across all specifications, i.e., from column 1 to column 3, to predict negative stock returns for tomorrow as the coefficients of VWR-ASX200t−1 are negative and overwhelmingly statistically significant.
Similarly, in the conditional volatility equation, the results show that the dummy for COVID-19, when included in the variance equation, has a positive and statistically significant effect on tomorrow’s volatility of stock returns. The impact of COVID-19 is more pronounced for COVID-19C, i.e., the negative news relating to COVID-19. Additionally, among the drivers of stock returns, crude oil prices have the expected, i.e., positive and significant effect on stock returns for all the specifications. In contrast, while the interest rate is insignificant for the specifications in columns 1 and 2, it has the expected sign (negative) with a statistically significant effect on stock returns for the specification in column 3.
4.1. Analysis of GARCH and EGARCH Models
Table 5 provides the estimation results of the GARCH and EGARCH models with and without news. From the results under the mean equation, we observe that the constant term is not statistically significantly different from zero in all the models. This outcome is not unexpected based on the mean value or the observed returns from the descriptive statistics. We also observe negative but statistically significant autocorrelation of the current period returns with its own one-period (day) lag values,
VWR-ASX200t−1. Similarly, the individual coefficients of both the percentage change in oil price and the moving average term, MA(11), are positive and statistically significant. In contrast, the interest rate changes wield a negative impact which is insignificant in the GARCH(1,1)-without News specification, but significant in GARCH(1,1)-with News, EGARCH(1,1)-with News and EGARCH(1,1)-without News models. However, the coefficient is weakly significant in the EGARCH-with News specification. A potential explanation of this weak significance is the strong stance of the RBA to keep the target cash rate low with changes from 0.75% to 0.5% to 0.25% on the 4th and 20th March, respectively, and 0.1% on 4th November 2020. We observe that the first two changes correspond to the period where the returns were extremely volatile as can be seen in
Figure 2. Overall, we observe the consistency in the signs of the covariates with only minor variation in the sizes across the models in the mean equation.
When analysing the GARCH(1,1) without news specification, we observe that the coefficient estimates satisfy the constraints , and (where this condition implies that the QMLE of the GARCH model is consistent with approximately normal distribution). However, we note that the constant term, is statistically insignificant. In the case of the GARCH(1,1) with the News model, we observe that the coefficient, of COVID-19Ct is positive and statistically significant, implying that positive news impacts the returns positively and vice-versa. In contrast to the model with no news, the results reveal that constraint is statistically highly significant, while implies a long memory of the volatility (which is explosive in nature). Also, the GARCH model assumes symmetric effects of both positive and negative shocks on volatility. For these reasons, we pay attention to the asymmetric or EGARCH model.
We observe all the coefficients in the conditional variance equation of the EGARCH models without and with news are statistically significant, including the intercept term (that has weak significance). We also observe that the stability condition < 1 is also satisfied. Furthermore, the negative estimates of the coefficient of implies the asymmetric effect of negative news than the positive news of the same magnitude. Meanwhile, the coefficient of has a negative estimated value and is highly significant, thus indicating the existence of the leverage effect. That is, positive shocks cause volatility to decrease and vice-versa. Also, in the EGARCH model with news, the statistically significant coefficient of the news dummy variable with positive value indicates that positive news will diminish volatility and vice-versa. The results not shown here; however, GARCH(1,1), EGARCH(1,1) models are still preferable to higher order variants based on the AIC.
4.2. News Impact Curve
To further support the presence of asymmetry and leverage, we plot the news impact curves (NIC) using the parameters’ estimates from all four models and monitor the impact of shocks on the conditional volatility of returns. Details on various specifications of the NIC corresponding to variants of the GARCH model can be found in
Caporin and Costola (
2019). Asymmetry of the GARCH model requires that the past positive and negative shocks of the same magnitude have different effects on the conditional volatility, that is,
. As stated earlier, the leverage effect holds when a positive shock reduces volatility, but a negative shock leads to an increase in the conditional volatility.
From
Figure 4 below, we find that the GARCHX (1,1)-Without News is a symmetric and U-shaped curve implying that the past positive and negative shocks of the same magnitude have the same effect on the conditional volatility. Also, we find the larger the magnitude of the shock, the larger the impact there is on the volatility. However, GARCHX (1,1) model-With News is unstable since
and provides negative volatilities for larger shocks which is not possible. For this reason, we do not interpret this unstable model.
In the case of the asymmetric model-EGARCH with and without news, we observe asymmetry and the leverage effect of shocks in the volatility of ASX-200 returns. However, another interesting finding is that the EGARCH model with volatility equation without news demonstrates a larger (smaller) leverage effect of the negative (positive) shocks on the conditional volatility compared to its variant with the news. This outcome is obvious from the larger magnitude of
from the model without news compared to the estimation from the model with news in the volatility equation. So, the EGARCH model conforms to asymmetry and leverage, whether the dummy for news is included in the conditional volatility equation. When the announcement of negative news by AHPPC that the COVID-19 developing into a pandemic and that a local outbreak would place enormous pressure on the healthcare system (see
Section 2), stocks of companies in S&P ASX 200 decreased substantially, causing the leverage to increase. The higher level of leverage led the perception of the risk associated with the companies in S&P ASX 200 to increase with the volatility of their stocks. Therefore, we observe higher volatility on the release of negative news versus when the positive news arrives on the market. On the other hand, this unequal impact on volatility corresponds to the asymmetry effect.
6. Concluding Remarks
This paper examines the impact of COVID-19 on the volatility of Australian stock returns. It further examines the presence of asymmetry and suspected leverage due to both negative and positive news (shocks) on the volatility of Australian stock returns by employing GARCHX (1,1), EGARCH(1,1) and News impact curve (NIC). We observe some of the following important findings.
- (i)
COVID-19 has a negative effect on Australian stock returns in both GARCHX (1,1) and EGARCH(1,1) specifications.
- (ii)
We also find that the negative news has increased the volatility of Australian stock returns for both GARCHX (1,1) and EGARCH(1,1) with News (negative news) specifications.
- (iii)
We further find that the GARCHX (1,1)-with News model and GARCHX (1,1)-without News model exhibit symmetry. However, EGARCH(1,1) with the News model and EGARCH(1,1) without News model indicates the presence of asymmetry and leverage.
To further validate the presence of symmetry in GARCHX (1,1) without News and GARCHX (1,1) with News models and the presence of asymmetry and purported leverage in EGARCH(1,1)-without News and EGARCH(1,1)-with News models, we employ NIC. It is also observed that NIC shows that GARCHX (1,1)-without News is symmetric, implying that the past positive and negative shocks of the same magnitude have the same effect on the conditional volatility. On the other hand, NIC shows that GARCHX (1,1) with News is unstable. In terms of both the models of EGARCH(1,1), the NIC confirms the presence of asymmetry and leverage. NIC provides another interesting finding that the EGARCH model with volatility equation without news demonstrates a larger (smaller) leverage effect of the negative (positive) shocks on the conditional volatility compared to its variant with the news. The findings suggest that EGARCH(1,1) can represent the asymmetric conditional volatility process for daily returns time series of ASX-200. The forecast evaluation of both the specifications of EGARCH(1,1) suggest that both the models are preferable; however, EGARCH is superior to a naïve model.