Short Selling Bans around the World: Evidence from the 2007-09 Crisis



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Short Selling Bans around the World: Evidence from the 2007-09 Crisis Alessandro Beber Cass Business School and CEPR Marco Pagano University of Naples Federico II, CSEF, EIEF and CEPR February, 2011

Motivation Short selling bans and liquidity 19 Sept. 2008: The emergency order temporarily banning short selling of financial stocks will restore equilibrium to markets 31 Dec. 2008: Knowing what we know now, I believe on balance the commission would not do it again. The costs (of the short selling ban on financials) appear to outweigh the benefits. Christopher Cox SEC Chairman

Motivation World-scale experiment Short sales restrictions in most countries. But not in some. Different ban introduction dates: most European countries acted after the U.S. Different ban lift dates: U.S. and Canada were the first to remove the ban. Different group of stocks subject to ban: Financials only (e.g., Germany) versus all stocks (e.g., Japan). Variation in stringency of short sales restrictions: uncovered short sales only, covered sales as well, mere disclosure.

Overview Our paper: We will use panel data and matching techniques to test if the ban restrictions are associated with changes in market liquidity speed of price discovery overpricing

Related literature Liquidity: theoretical predictions The effect of a ban on liquidity is ambiguous in the Glosten-Milgrom adverse selection model (Diamond and Verrecchia, 1987): Raises liquidity: if it affects mainly informed sellers (likely) but Lowers liquidity: if it equally affects informed and uninformed, as it slows the resolution of uncertainty. Unambiguous if market makers are risk-averse: Lowers liquidity: the ban increases the market makers cost of supplying liquidity and reduces competition from other liquidity suppliers. Moreover, by delaying price discovery it increases market-making risk.

Related literature Liquidity: empirical evidence Jones and Lamont (JFE, 2002): during the Great Depression in the U.S., results vary with type of restriction. Charoenrook and Daouk (2005): short-sale restrictions reduce liquidity in a cross-country, market-wide study where trading volume is a proxy for liquidity. Crisis-related papers: Boehmer, Jones and Zhang (2010): recent U.S. short selling ban on financials reduced liquidity (using several measures of liquidity).

Related literature Price Discovery Theory: in Glosten and Milgrom adverse selection model, Diamond and Verrecchia (1987) show that a ban slows down price discovery. Evidence: consistent negative effect. Bris, Goetzmann and Zhu (2005): cross-country (not panel) evidence for 46 equity markets. Saffi and Sigurdson (2007) and Boehmer and Wu (2008): ease to short sell increases informational efficiency. Reed (2007): bans induce asymmetry in price response to earnings announcements.

Related literature Overpricing Theory: Miller s (1977) model with heterogeneous beliefs: the ban prevents full revelation of negative opinions. Rational expectations with risk neutrality (Diamond and Verrecchia again): no effect, as the ban is discounted. Rational expectations with risk aversion (Bai, Chang & Wang, 2006): delaying price discovery increases risk lowers prices; preventing short-sales to hedge other risks (e.g., endowment risk) raises demand for the stock raises prices. Evidence: Jones & Lamont (2002), Chang, Cheng & Hu (2007) : higher prices. Diether, Lee & Werner (2009), Boehmer et al. (2008): no effect. Boehmer et al. (2009), Harris et al (2009): overpricing (endogenous?)

Overview Preview of the Results Liquidity: Short-selling bans were detrimental for liquidity. Cross-sectional evidence: different effects with respect to size, volatility, country, optionable stocks, dual-listing. Price Discovery: Short-selling bans reduced the speed of price discovery, especially for negative information. Overpricing: Short-selling bans did not seem to support prices, with the potential spurious exception of the U.S.

Overview Outline 1. Data 2. Liquidity Results: Descriptive Evidence Regression Analysis Cross-Sectional Evidence 3. Price Discovery Results 4. Overpricing Results 5. Conclusions

Data Data All stocks in Datastream for 30 countries (European markets and developed non-european): sample of 17,040 stocks, 5,992,679 obs. Sample period: January 2008 June 2009. Daily bid-ask prices, volume, number of shares from Datastream. Characteristics of short-selling bans: drawn from reports by regulatory bodies and CESR (Committee of European Security Regulators). Ban applies to 12.4% of observations, 31.5% of stocks (as of 1 October 2008). 11

Data Ban time-series and cross-sectional variation

Data Percentage of stocks affected by the ban

Data Average bid-ask spread around the world 7 Average Percentage Bid-Ask Spread Around the World 6.5 6 5.5 5 4.5 4 3.5 3 2.5 2 Jan-08 Feb-08 Mar-08 Apr-08 May-08 Jun-08 Jul-08 Aug-08 Sep-08 Oct-08 Nov-08 Dec-08 Jan-09 Feb-09 Mar-09 Apr-09 May-09 Jun-09

Ratio of average bid-ask spread of stocks with ban to stocks without ban European countries with partial bans, 100 days before/after the ban was introduced Preliminaries 2.1 1.9 BAS with/bas without ban 1.7 1.5 1.3 1.1 0.9-98 -94-88 -82-76 -70-66 -60-54 -48-42 -38-32 -26-20 -14-10 -4 2 8 14 18 24 30 36 45 56 64 81 92 days to ban

Preliminaries Preliminaries: countries with ban on all stocks Country Median percentage bid-ask spread for stocks with ban Median ratio of bid-ask spread for stocks with ban before during after during/before during/after Australia 3.3333 5.2632 *** 4.7244 1.58 1.11 (55.0) Japan 0.6006 0.6976 *** 1.16 (50.9) South Korea 0.4494 0.5249 *** 1.17 (27.4) Spain 0.5840 0.9611 *** 1.65 (36.6) Italy 0.5721 2.7682 *** 4.84 (168.1) 16

Preliminaries: countries with ban on financials Preliminaries Austria 1.63 1.02 financials Belgium 1.88 1.59 Canada 3.33 1.70 1.98 0.85 Denmark 1.97 1.37 Non-financials France 2.04 1.42 Germany 2.36 1.38 Ireland 3.36 1.71 Netherlands 2.32 1.56 1.18 0.86 Norway 1.71 1.56 Portugal 2.09 1.54 Switzerland 1.12 1.20 1.43 1.18 U.K. 3.23 1.58 1.73 1.00 U.S. 3.43 1.86 1.54 1.04 Averages 2.27 1.50 1.49 0.99 17

Methodology Methodology I: panel Regress measures of liquidity (percentage quoted bid-ask spread and Amihud illiquidity measure) on three ban dummy variables: Naked ban, covered ban, disclosure requirements. Stock characteristics (e.g., number of market makers, analyst coverage, capitalization, ) correlate with liquidity: Control for unobserved heterogeneity at stock and country level via stock-level fixed effects. Liquidity auto-correlated SE clustered at stock level, AR(1) errors Risk is a potential determinant of bid-ask spreads: Control for the volatility of returns of individual stocks Control for changes in aggregate risk (proxies, calendar dummies, time trend, etc.)

Results on Liquidity Ban associated with higher bid-ask spreads Stocks All All Financials All Constant 3.93 *** 4.97 *** 3.76 *** 4.90 *** Naked Ban 1.28 *** 0.89 *** 0.86 *** 0.90 *** Covered Ban 1.98 *** 1.63 *** 2.14 *** 1.63 *** Disclosure -0.65 *** -0.37 *** -0.27 ** -0.37 *** Volatility 0.99 *** Stock-Level Fixed Effects Yes Yes Yes Yes AR(1) disturbances No Yes No Yes Number of observations 5,143,173 5,126,682 878,279 5,124,349 Number of stocks 16,491 16,456 2,718 16,452 Note: qualitatively similar results with Amihud Illiquidity ratio

Results on Liquidity Countries with partial bans Constant 4.18 *** (1112.91) Naked Ban 2.44 *** (20.18) Covered Ban 2.76 *** (24.90) Disclosure 1.79 *** ( 15.14) 4.20 *** (997.52) 2.43 *** (20.06) 2.75 *** (24.75) 1.79 *** ( 15.10) Volatility 0.36 *** TED Spread ( 14.65) 0.0005 *** (3.71) 0.23 *** (3.99) 0.46 *** (2.39) 0.50 *** ( 2.25) VIX Day Fixed Effects No No Yes Stock-Level Fixed Effects Yes Yes Yes Number of observations 3,188,903 3,188,903 3,188,903 Number of stocks 10,253 10,253 10,253

Methodology Methodology II: matching Restrict sample period: window of 50 days around ban inception. Match each banned stock with a non-banned stock, traded in the same country, same option listing status, and smallest distance in market capitalization and stock price. Regress liquidity differential between the banned and its matching stock on three ban dummy variables: Naked ban, covered ban, disclosure requirements. Control for unobserved heterogeneity at stock and country level via stock-level fixed effects

Results on Liquidity Ban associated with higher bid-ask spreads Panel Methodology Matching Methodology Constant 4.90 *** 0.71 *** Naked Ban 0.90 *** 0.56 *** Covered Ban 1.63 *** 1.19 *** Disclosure -0.37 *** -0.54 * Volatility 0.99 *** Stock-Level Fixed Effects Yes Yes AR(1) disturbances Yes No Note: qualitatively similar results with Amihud Illiquidity ratio

Results on Liquidity Size: stronger liquidity effect on small-cap stocks Stocks in top/bottom quartile of own country size distribution: Large-Cap Stocks Small-Cap Stocks Constant 4.19 *** (580.10) 6.66 *** (700.13) Ban 1.16 *** (18.03) 1.50 *** (18.52) Stock-Level Fixed Effects Yes Yes

Results on Liquidity Volatility: Stronger liquidity effect on high-volatility stocks Stocks in top/bottom quartile of own country volatility distribution: Low- Volatility Stocks Constant 2.59 *** (314.26) High- Volatility Stocks 5.92 *** (747.00) Ban 0.94 *** (16.79) 1.30 *** (13.45) Stock-Level Fixed Effects Yes Yes

Results on Liquidity Evidence by country Allowing for country-specific ban slopes in bid-ask spread regression: 3.5 3 2.5 2 1.5 1 0.5 0 Austria Belgium Denmark France Germany Italy Japan Netherlands Portugal Spain Switzerland Australia Canada Ireland Italy Netherlands Norway S. Korea Switzerland UK USA Naked Covered

Results on Liquidity Country characteristics Dep. Variable: ban coefficient All Countries with Ban Constant 0.99*** (5.11) Median Size 0.11 ( 0.51) Median Volatility 0.45* (1.84) Countries with Covered Ban 1.44*** (7.05) 0.44* ( 1.80) 0.49** (2.41) Ownership Concentration 0.44* (1.80) 1.13*** (4.36) R 2 0.26 0.79 Observations 18 10

Results on Liquidity Stocks with/without listed options Stocks With Listed Options Constant 0.60 *** (193.48) Naked Ban 0.33 *** (5.94) Covered Ban 0.67 *** (9.66) Disclosure -0.20 *** (-3.42) Stocks Without Listed Options 4.23 *** (1015.57) 1.40 *** (12.24) 2.14 *** (25.95) -0.72 *** (-6.54) Stock-Level Fixed Effects Yes Yes Number of Observations 427,164 4,716,009 Number of Stocks 1,306 15,185

Results on Liquidity Liquidity of dually-listed stocks Domestic Market Liquidity Constant 1.00 *** (97.28) U.S. Dual Listing Liquidity 0.84 *** (37.93) Ban on Domestic Market 0.17 *** (3.07) Ban on U.S. Market -0.03 (-0.78) 0.62 *** (5.35) 0.79 *** (5.20) Stock-Level Fixed Effects Yes Yes Number of Observations 42,371 46,181 Number of Stocks 131 133

Results on Price Discovery Bans associated with slower price discovery The autocorrelation of residuals in a market-model regression with weekly returns is higher for banned stocks and negative residuals: Median Autocorrelation of Market Model Residuals Median Downside Crossautocorrelation between Stock Returns and Market Returns Median Upside Crossautocorrelation between Stock Returns and Market Returns Median of the Difference between Downside and Upside Crossautocorrelation (1) (2) (3) (4) Ban = 0 0.0824 0.2833 0.2340 0.0358 Ban = 1 0.1011 0.3552 0.2638 0.0565 Difference 0.0187 *** (0.0000) 0.0719 *** (0.0000) 0.0298 *** (0.0000) 0.0207 ** (0.0470)

Results on Price Discovery Bans associated with slower price discovery A variance-ratio test shows that for banned stocks, the random-walk hypothesis can be rejected more often: Random walk hypothesis cannot be rejected Random walk hypothesis cannot be rejected Ban = 0 53% 52% Ban = 1 39% 39% Difference 14% *** (0.0000) 13% *** (0.0000) Sample All Stocks Only Stocks that were eventually banned

Results on Returns Bans associated with abnormal returns? In the United States, yes, but 0,12 0,1 0,08 0,06 0,04 0,02 0 0 2 4 6 8 10 12 14 16-0,02 covered ban no ban

Results on Returns Bans associated with abnormal returns? elsewhere, no. 0,12 0,1 0,08 0,06 0,04 0,02 0 0 10 20 30 40 50 60-0,02 covered or naked ban no ban

Results on Returns Bans are not associated with higher returns (except for the U.S.) Panel Methodology Panel Methodology Matching Methodology Matching Methodology Constant 0.0583 *** (29.82) 0.0017 *** ( 58.50) 0.0022 *** (10.78) 0.0008 ( 1.17) Naked Ban 0.0026 ( 0.67) 0.0081 *** ( 3.13) Covered Ban 0.0611 *** (18.82) 0.0004 ( 0.12) 0.0041 *** (3.77) -0.0025 (-0.67) Disclosure 0.0066 (1.17) -0.0006 (-0.17) Stock-Level Fixed Effects Time Fixed Effects Yes Yes Yes Yes Yes Yes Yes Yes Countries in the sample U.S. Partial ban exc. U.S. U.S. Partial ban exc. U.S.

Conclusion Conclusion The short-selling bans imposed during the crisis have damaged stock market liquidity: at a time when liquidity was already low more so for small-caps, high-volatility and no listed options stocks They have slowed down price discovery. They have failed to support stock prices, except (perhaps) for U.S. financial stocks.