key: cord-1044424-hykf28oi authors: Ortmann, Regina; Pelster, Matthias; Wengerek, Sascha Tobias title: COVID-19 and investor behavior() date: 2020-08-08 journal: Financ Res Lett DOI: 10.1016/j.frl.2020.101717 sha: 65e276cdca2b833e18da87408ff8aa558810c4e2 doc_id: 1044424 cord_uid: hykf28oi How do retail investors respond to the outbreak of COVID-19? We use transaction-level trading data to show that investors significantly increase their trading activities as the COVID-19 pandemic unfolds, both at the extensive and at the intensive margin. Investors, on average, increase their brokerage deposits and open more new accounts. The average weekly trading intensity increases by 13.9% as the number of COVID-19 cases doubles. The increase in trading is especially pronounced for male and older investors, and affects stock and index trading. Following the 9.99%-drop of the Dow Jones on March 12, investors significantly reduce the usage of leverage. •We investigate trading patterns of retail investors during the outbreak of COVID-19. •Investors increase their weekly trading intensity and establish more new positions. •Investors add funds to their accounts and open more new accounts. •Investors significantly reduce the usage of leverage. •Investors marginally increase their tendency to engage in short selling. The novel coronavirus has led to unprecedented repercussions on daily life and the economy. The outbreak makes investors, policy makers, and the public at large aware of the fact that natural disasters can inflict economic damage on a previously unknown scale (Goodell, 2020) . While the aggregate effect of the pandemic on the stock market (Baker et al., 2020a; Ramelli and Wagner, 2020; Zhang et al., 2020) and the spending behavior of households (Baker et al., 2020b) have been documented, little is known about the behavior of retail investors during such a turbulent time. Considering that retail trades move stock prices in the direction of their trades (Barber et al., 2009; Burch et al., 2016; Han and Kumar, 2013) and in particular retail short selling has predictive ability for future (negative) stock returns (Kelley and Tetlock, 2016) , it is, however, important to investigate their behavior in these unprecedented conditions at the micro-level to better understand aggregate market outcomes. We investigate trading patterns and financial risk-taking of a large sample of retail investors based on their individual trading records during the outbreak of COVID-19. We use two lines of argumentation to express contrasting expectations about investor behavior during the COVID-19 outbreak. First, the outbreak of the pandemic is in many regards comparable to terrorist attacks (see, e.g., Goodell, 2020) : it is an exogenous shock, that has drastic consequences on everyday life, raises public fear, and causes great (economic) uncertainty. Investor behavior in the aftermath of terrorist activity is associated with more risk averse choices, such as a reduced trading intensity and a reduced flow to risky assets (Levy and Galili, 2006; Luo et al., 2020; Wang and Young, 2020) . Burch et al. (2016) show heavy retail investor selling in the crisis period set off by 9/11 that drives down asset prices. In line with these results, but against the background of the outbreak of COVID-19, Bu et al. (2020) survey Chinese students in Wuhan and find substantially lower general preferences for risk. Individuals that are more exposed to COVID-19 consequences display a decreased willingness to take risky investments and more pessimistic beliefs on the economy. Thus, in response to the outbreak of COVID-19, investors may reduce their market exposure and risk-taking. Second, in line with this increased uncertainty, press articles, media reports, and expert opinions display a torn image of the future economic development and, thus, of optimal investment and portfolio strategies. The outbreak of COVID-19 has led to significant financial market declines and increased financial market risks around the world (Zhang et al., 2020) . Central banks and governments have thrown their policy instruments into the market and launched support programs never seen before (see Figure 1 ). In spite of these support programs, a great deal of uncertainty persists. With the exact global economic impacts not yet clear, different opinions circulate. Whereas, for example, President Donald Trump confidently proclaimed that there will be a quick V-shaped recovery of the US economy and Hanspal et al. (2020) report that US households expect a faster recovery of the stock market relative to previous crashes, Janet Yellen expressed that it is common for economic growth after a crisis to remain on a lower track for years, not months (Lee, 2020) . Against the backdrop of these inconclusive expectations, it is highly interesting to investigate investors' trading activities during the outbreak of COVID-19. The remainder of our paper proceeds as follows. We present the data and our methodology in the next section. In section 3, we present the results. In the final section, we discuss our findings and conclude. We use transactional-level brokerage data from a discount broker that offers an online trading platform to retail investors under a UK broker license. Our data sample contains all trades that the investors executed with the broker between August 1, 2019 and April 17, 2020. The data contain the exact time-stamp and instrument of the trade, together with an indicator for long or short positions, and the leverage. In total, the dataset comprises 45,003,637 transactions executed by 456,365 investors. Additionally, it includes the deposits to and withdrawals from the brokerage accounts. The data also contain details of push notifications that inform investors of volatility events (see Arnold et al., 2020) . Lastly, the dataset comprises basic demographic information. We obtain data on the number of COVID-19 cases from the European Centre for Disease Prevention and Control. We study the relation between the outbreak of COVID-19 and investors' trading activities using an OLS regression analysis. We use several variables to proxy investors' trading activities. Trading intensity denotes the number of trades in a given week. The variable takes a value of zero for investors who do not trade in a given week. Leverage, a pure measure of risk-taking, denotes the leverage employed for a trade. Short sale is a dummy variable that takes a value of one, if a trade establishes a short position, and zero otherwise. Abnorm. net deposits denotes the number of deposits minus the number of withdrawals on a given day, divided by the average net deposits prior to the outbreak of the pandemic. Abnorm. first deposits denotes the number of deposits by investors who opened a new account on a given day, divided by the average first deposits prior to the outbreak of the pandemic. Buy-sell imbalances (BSI) denote the relation between long minus short to total positions. Finally, abnormal trading volume in an industry denotes the trading volume on day t divided by the average trading volume in that industry over the last six months. To capture the outbreak of the pandemic, we use the following variables. COVID-19 denotes the logarithm of the number of corona cases plus one. Dow drop is a dummy variable that takes a value of one on March 13, the day after the Dow and the FTSE, the UK's main index, recorded major losses, and zero otherwise. The Dow fell a record 2,352.60 points (9.99%) to close at 21,200.62. The FTSE dropped more than 10% and recorded its worst day since 1987. Lastly, we use three dummy variables to define various stages of the outbreak. The first stage (Jan. 23 -Feb. 22 ) begins when China ordered the lockdown. At this time, investors will have started to understand the importance of the disease, as this lockdown affected supply chains in Europe and other parts of the world. The second stage (Feb. 23 -Mar. 22 ) begins when Italy ordered the lockdown in February, as then the disease had become a pandemic that reached Europe. The third stage (Mar. 23 -Apr. 17 ) begins when the UK ordered the lockdown in March, as a large part of countries across the world had already issued lockdowns or severe restrictions on public life by then (see Figure 1 ). Our specification includes investor fixed effects to control for observed and unobserved heterogeneity across investors such as their demographics or wealth. We also include a full set of asset class dummies to control for different trading behaviors across asset classes. Lastly, we control for push notifications before investors' trades, as Arnold et al. (2020) show that such push notifications increase risk-taking and trading within a 24-hour time period. We present the evolution of investors' trading activities in Figure 2 in detail. We observe a significant increase in index trading, mostly between February 23 and March 23, which decreases again after March 23. Slightly less pronounced, we observe an increase in stock trading, followed by a decline after March 23. Contracts for difference (CFD) trading on stocks shows several spikes over the course of the pandemic. Crypto trading shows a distinct spike following the drop of the Dow on March 12. Figure 2 (b) shows a decline in leverage-usage across asset classes between February 23 and March 23, that is most pronounced following the drop of the Dow. Panel (c) shows an increase in short-selling using CFDs on stocks, but no clear trend across other asset classes. Please place Figure 2 and Table 1 about here Table 1 presents our main results. Panel A, Model 1 shows a 13.9% increase in the average weekly trading intensity, compared to the average trading before the pandemic, as the number of COVID-19 cases doubles. The increase in trading is mainly driven by male investors (Model 4) and by older investors (Model 5). Model 2 shows that the trading intensity increased by 222%, compared to the average trading before the pandemic, following the 9.99%-drop of the Dow on March 12, which is largely driven by the spike in cryptocurrency trading (untabulated). Finally, Model 3 shows that the largest increase in trading is observed between February 23 to March 22. Table 1 , Panel B, shows that the increase in trading is driven by increased stock and index trading, while CFDs on stocks, cryptocurrencies, and gold are less affected. The increase in trading is also prevalent for new created positions in stocks and indizes (Panel C). Table 2 shows that investors, on average, add additional funds to their trading accounts. The Please place Figure 4 about here Lastly, we study the investor behavior with a focus on industries, based on the North American Industry Classification System (NAICS). We study the abnormal trading volume and the fraction of short sales jointly for stock trading and CFDs on stocks. Figure 5 shows the evolution for the five industries that record the largest values in these variables during our sample period. We observe the highest abnormal trading volume in Transit and Ground Passenger Transportation, Motion Picture and Sound Recording Industries, Accommodation, Water Transportation, and Air Transportation. We find the highest short selling in Motion Picture and Sound Recording Industries, Accommodation, Air Transportation, Supportive Activities for Transportation, and Administrative and Support Services, which includes travel-related companies such as TripAdvisor, Expedia, or TUI. We show that the trading volume starts to increase during the period from January 23 to February 23, in particular for the Accommodation and Water transportation industries. The timing coincides with the first cruise ship having a major outbreak on board and 1 In additional (untabulated) analyses, we study the trading patterns and risk-taking of investors during other recent market downturns, such as the drastic drop of the Dow in December 2018. A comparison of the results from past market downturns and activities around the COVID-19 outbreak indicates that investorsâĂŹ activities around the outbreak of COVID-19 are unique, in line with the unprecedented nature of the crisis. In particular, changes in trading amount to at most 5% of the effect size that we observe during the outbreak of the pandemic. Moreover, we observe that investors, on average, withdraw funds from their accounts, open fewer new accounts, and do not significantly change their risk-taking during other recent market downturns. being quarantined from February 4 onward. We also find an early increase in short selling in the most affected industries, such as the Accommodation, Air Transportation, or Administrative and Support Services industries, at the beginning of February, more than a month before the large spikes in March. Please place Figure industries that tend to be losers as the crisis progresses. Here, especially travel-related industries are exposed to early short selling at the beginning of February, in line with the notion that retail short selling has predictive ability for future stock returns (Kelley and Tetlock, 2016) . Our results indicate that, in line with the torn image that press articles, media reports, and expert opinions paint these days, investors' trading activities are also not clear-cut. Our findings stand in contrast to investors' reactions to other shocks that increase uncertainty, such as terrorist attacks, which are associated with reduced flows to risky asset classes (Wang and Young, 2020) and heavy retail investor selling (Burch et al., 2016) . While investors increase their trading intensity and more readily open new positions, we nonetheless show that investors act more cautiously following the drop of the Dow on March 12. Following the 9.99%-drop of the Dow, investors reduce their leverage-usage, which is in line with the notion that investors make more risk-averse choices due to public fear (Levy and Galili, 2006; Luo et al., 2020; Wang and Young, 2020) . The fact that (i) buy-sell imbalances in index positions are close to zero and (ii) some investors take long stock positions while others short single name stocks using CFDs, underscores that investors have different expectations, in line with the torn picture experts and media outlets paint. Investors who take long stock or index positions may buy into the narrative of the fast economic recovery once the pandemic passes , and believe that the lockdown offers a favorable opportunity to enter the stock market, while those taking short positions may hold the opinion that this narrative is too optimistic. Inconsistencies between investors' shortterm and long-term expectations created by unlimited quantitative easing programs (Gormsen and Koijen, 2020) may further contribute to ambiguous investor behaviors. A caveat of our analysis is that investors in our dataset may not be representative of the average household. Investors likely select a brokerage service based on their preferences. Notwithstanding this limitation, we believe that our study provides important insights into the trading activities of retail investors during the outbreak of the pandemic. Our study provides initial insights that may inform future research that attempts to explore the impact of the outbreak of a pandemic on retail investor behavior further. Attention triggers and investors' risk taking The unprecedented stock market reaction to covid-19 How does household spending respond to an epidemic? consumption during the 2020 covid-19 pandemic Do retail trades move markets? Risk taking during a global crisis: Evidence from wuhan Who moves markets in a sudden marketwide crisis? evidence from 9/11 Covid-19 and finance: Agendas for future research Coronavirus: Impact on stock prices and growth expectations Speculative retail trading and asset prices Income and wealth shocks and expectations during the covid-19 pandemic Retail short selling and stock prices, The Review of Financial Studies Coronavirus recession now expected to be deeper and longer Terror and trade of individual investors Do terrorist attacks make inventors more risk taking? Terrorist attacks and investor risk preference: Evidence from mutual fund flows Financial markets under the global pandemic of covid-19 CRediT author statement for the article: COVID-19 and investor behavior Regina Ortmann: investigation, writing -original draft, writing -review & editing, validation Matthias Pelster: conceptualization, methodology, data curation, writing -original draft, writing -review & editing, formal analysis Sascha Tobias Wengerek: methodology, data curation, writing -original draft, formal analysis, visualization, validation