360 likes | 644 Views
Do Noise Traders Move Markets?. Brad Barber Terrance Odean Ning Zhu. Do Noise Traders Move Markets?. Small trades are proxy for individual investors trades. Individual investors trading is correlated: Across stocks Across months Individual investor trading forecasts returns:
E N D
Do Noise Traders Move Markets? Brad Barber Terrance Odean Ning Zhu
Do Noise Traders Move Markets? • Small trades are proxy for individual investors trades. • Individual investors trading is correlated: • Across stocks • Across months • Individual investor trading forecasts returns: • Short-term outperformance • Medium and long-term underperformance www.swingtum.com/institute/IWIF
Theory • Informed traders are constrained (limits of arbitrage): • Costs • Short Sale Constraints • Risk aversion • Noise traders are emotional. • Noise trading is correlated. • Noise trading moves prices from fundamental value. • Informed trading (eventually) pushes prices back to fundamental value. Shleifer & Summers (1990) De Long, Shleifer, Summers, & Waldman (1990, 1991) Shleifer, Summers, & Vishny (1991) www.swingtum.com/institute/IWIF
Informed traders are constrained. • Closed-end funds Pontiff (1996) • Short sale constraints Lamont & Jones (2002), Cohen, Diether, Malloy (2006) Bris, Woetzmann, and Zhu (2006) • S & P 500 additions Harris & Gurel (1986), Shleifer (1986) Wurgler and Zhravskaya (2002) www.swingtum.com/institute/IWIF
2. Noise traders are emotional. • Overconfidence Odean (1999) Barber & Odean (2000, 2001) Nicolosi, Peng, and Zhu (2006) • Disposition effect Shefrin & Statman (1985) Odean (1998) , Dhar and Zhu (2006) Grinblatt and Keloharju (2001) • Representativeness DeBondt (1993) DeBondt and Thaler (1997) • Limited attention Barber & Odean (2005), Hirshleifer, Hou & Teo (2005) Huberman (2002), Zhu (2005), Seasholes and Zhu (2006) www.swingtum.com/institute/IWIF
3. Noise trading is correlated. • U.S. Brokerage Data (Barber, Odean, and Zhu, 2004) • U.S. discount broker, 1991-96 • U.S. full-service broker, 1997-99 • Australian investors, 1991-2002, (Jackson, 2003) • All U.S. small trades 1983-2000 (This paper) www.swingtum.com/institute/IWIF
Primary Contribution of Paper. • Informed traders are constrained (limits of arbitrage): • Costs • Short Sale Constraints • Risk aversion • Noise traders are emotional. • Noise trading is correlated. • Noise trading moves prices from fundamental value. • Informed trading (eventually) pushes prices back to fundamental value. • Shleifer & Summers (1990) • De Long, Shleifer, Summers, & Waldman (1990, 1991) • Shleifer, Summers, & Vishny (1991) www.swingtum.com/institute/IWIF
Data • Tick-by-tick transaction data: 1983 to 2000 • Institute for the Study of Securities Markets (ISSM) NYES & ASE 1983-1992; Nasdaq 1987-1992. • Trade and Quote (TAQ) NYSE, ASE, & Nasdaq, 1992-2000 • Decimalization in January 2001 • Dramatic shift in the distribution of trade size • Small trade becomes poor proxy for individual investor trades www.swingtum.com/institute/IWIF
Number of Small Trades and Large Trades between 1/2000 and 12/2001 www.swingtum.com/institute/IWIF
Signing trades as buyer or seller initiated Trade Executes @ 10 1/8 ASK: 10 1/8 Buyer initiated Midpoint: 10 1/16 Trade Executes @ 10 Seller initiated BID: 10 www.swingtum.com/institute/IWIF
Signing trades Details • Quote rule: buyer initiated if above midpoint of quotes. • Tick rule: buyer initiated if above last executed trade. • NYSE and ASE – applied to trades at midpoint • Nasdaq – applied to trades within quotes Ellis, Michaely, and O’Hara (2000) • Ignore NYSE and ASE opening trades. Lee and Ready (1991) www.swingtum.com/institute/IWIF
Trade size as proxy for investor type • Lee & Radhakrishna (2000) • T ≤ $5,000 (Small trades, i.e., individual investors) • $5,000 < T ≤ $10,000 • $10,000 < T ≤ $20,000 • $20,000 < T ≤ $50,000 • $50,000 < T (Large trades, i.e., institutional investors) • 1991 dollars indexed to CPI www.swingtum.com/institute/IWIF
Measuring Trade Imbalance • Calculate ratio by trade value and trade number. • Calculate separate imbalance measure for each of five trade size quintiles. • Ignore stocks with less than 10 signed trades. www.swingtum.com/institute/IWIF
Are small signed trades a good proxy for individual investor trades? Calculate monthly proportion buys for: • U.S. Discount Broker Data • 1991 to 1996 • 78,000 investors • U.S. Full-Service Broker Data • 1997 to 1999 • 650,000 investors • Transaction Level Data – Five Trade Size Bins In each month, calculate correlation across datasets Average Correlations across months www.swingtum.com/institute/IWIF
Small trades as proxy for individual investors Mean Monthly Correlation in the Proportion of Trades that are Buyer Initiated across Datasets www.swingtum.com/institute/IWIF
Correlation Matrix in Proportion of Trades that are Buyer Initiated for Five Trade Size Bins www.swingtum.com/institute/IWIF
Are the trades of individual investors correlated over time? • Percentage Spread between Deciles 1 and 10 • Week Small Trades Large Trades 0 58.1 55.9 1 23.0 8.1 3 16.9 4.7 6 13.7 3.4 12 10.4 2.8 www.swingtum.com/institute/IWIF
Do Noise Traders Move Prices? • Calculate Annual Proportion Buys • December 1983 to December 2000 • Separately for Small Trades and Large Trades • Sort Stocks into Quintiles • Construct Portfolios based on Quintile Sorts • Calculate Monthly Portfolio Returns in year following formation www.swingtum.com/institute/IWIF
Descriptive Statistics www.swingtum.com/institute/IWIF
Abnormal Returns • Market-Adjusted Returns • Four-Factor Alphas • Market • Size (SMB) • Value (HML) • Momentum (UMD) www.swingtum.com/institute/IWIF
Mean Monthly Percentage Abnormal Returns Portfolios formed on the basis of Annual Proportion of Buyer-Initiated Trades: 1984 to 2001 www.swingtum.com/institute/IWIF
Monthly Percentage Abnormal Returns for Portfolios formed from Five-by-Five Partition on Proportion Buyer-Initiated Trades based on Small Trades (columns) and Large Trades (Rows) Equally-Weighted Portfolios www.swingtum.com/institute/IWIF
Monthly Percentage Abnormal Returns by Firm Size for Value-Weighted Portfolios formed on the basis of Proportion Buyer-Initiated Trades using Small and Large Trades www.swingtum.com/institute/IWIF
Monthly Percentage Abnormal Returns by Small Trade Turnover for Value-Weighted Portfolios formed on the basis of Proportion Buyer-Initiated Trades using Small and Large Trades www.swingtum.com/institute/IWIF
Mean Monthly Percentage Abnormal Returns for Portfolios formed on the basis of Weekly Proportion of Buyer-Initiated Trades: 1984 to 2001 www.swingtum.com/institute/IWIF
Cross-Sectional Regressions of Weekly Returns • Dependent Variable: Weekly Return • Independent Variables: • Trading Variable • Weekly Lags of Proportion Buys based on Small Trades (through one year) • Control Variables: • Size • Book-to-Market • Four Lags of Weekly Returns (Short-term Reversals) • Return from week t-52 to t-5 (Momentum) www.swingtum.com/institute/IWIF
Fama-MacBeth Regressions Mean coefficient estimates from weekly cross-sectional regressions of return on lagged small trade imbalance www.swingtum.com/institute/IWIF
Do Noise Traders Move Markets? • Push prices in short-term… • Weekly Horizon • Stocks bought outperform stocks sold in subsequent week • Leading to poor long-run returns • Annual Horizon • Stocks bought underperform stocks sold in subsequent year www.swingtum.com/institute/IWIF
Implications to Asian Markets • Greater individual presence • Electronic trading system • Relatively less efficient price discovery • Greater profitability from noise traders?? www.swingtum.com/institute/IWIF