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Earnings Announcements and Price Behavior Sam Lim
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A Little Background Information Content of Earnings Announcements Beaver 1968 Landsman and L. Maydew 2002 Abnormal volatility Volatility increases around quarterly earnings announcements Kinney et al 2002 “Surprise” materiality in returns Most surprises and returns are of same sign, but 43 to 45% of firms’ surprises associated with returns of opposite sign S-shaped surprise return relation Use HAR-RV as suggested
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Summary of last time HAR-RV Earnings surprise factor (percentage) ( EPS actual - EPS estimate ) / EPS actual * 100 Split-sign regression Statistically significant positive findings Surprise correlated with increase in volatility Not too surprising.
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(continued) Standardize returns, as suggested by Dr. Tauchen Return divided by square root of RV Alison Keane finds weekly RV works relatively better than daily or monthly RV, so I follow suit Mostly same result–surprise often correlated with overnight returns, but not intraday returns. Previously, had a problem— surprise sometimes correlated with intraday returns. Turns out F-statistic is very low in those cases, so cannot reject null hypothesis that surprise does not determine direction of intraday returns. Price corrections happen fairly quickly, before market open
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Not all firms of same interest E.g. Goldman Sachs GS 32 positive surprises, 3 negative surprises, 1 hits estimate (no surprise). Not very interesting. Positive surprises positively correlated with volatility at.1% level, positively correlated with overnight returns at 1% level, no correlation with intraday returns. McDonald’s 14 positive surprises, 10 negative surprises, 19 hits estimate
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McDonald’s 4/9/1997 to 1/7/2009 14 positive, 10 negative, 19 no surprise Did not account for quarters when firm just hits estimate (SURPRISE=0), so generate dummy variable for earnings release with no surprise. Generate dummy variables for positive and negative days as well, for comparison purposes. May be better to do anyway?
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MCD HAR-RV regression, omit RV 1, RV 5, RV 22 for simplicity. All significant at.1% level Nice results? Fits with theory that negative news has more impact on the market than positive news. No surprise days also increase volatility! Why? Analyst estimates discounted? Dispersion of estimates? Hopefully not, but could also be release of other news on same day. RV t PositiveNegativeNo surprise Coefficient3.134.232.12
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Another look – Merck, UPS, Pepsi MRK - 17 positive surprises, 7 negative, 19 no surprises Positive significant at 5% level, negative and no surprise significant at 1% level UPS - 19 positive, 5 negative, 9 no surprises All significant at.1% level PEP – 24 positive, 8 negative, 11 no surprises Positive and no surprise significant at.1%, negative at 1% Though positive coefficient is larger… RV t PositiveNegativeNo surprise Coefficient1.062.581.24 RV t PositiveNegativeNo surprise Coefficient2.043.543.09 RV t PositiveNegativeNo surprise Coefficient2.031.833.45
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Accounting for dispersion? Account for dispersion in analyst estimates, as suggested by Dr. Bollerslev The less consensus among analysts, the less information the market has (mean estimate has less informative value) Interaction term created with standard deviation of analyst estimates No surprise days (using McDonald’s) No surprise significant at 5%, dispersion at.1%, interaction at 10% RV t No surpriseDispersionInteraction Coefficient1.97201.5-183.8
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Dispersion, continued Makes more sense using absolute value of surprise, but this begs the question of whether I should use the surprise value, or the dummy values. All statistically significant at.1% level. RV t |SURPRISE|DispersionInteraction Coefficient1.03284.35-103.82
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Another issue: Sub-sampling
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Walmart: Importance of sampling rate 28 positive, 6 negative, 10 no surprise Sampled at 15 minutes Positive significant at 5%, no surprise significant at 10% Sampled at 10 minutes Negative significant at 10% Problematic? RV t PositiveNegativeNo surprise Coefficient1.03Not significant1.24 RV t PositiveNegativeNo surprise CoefficientNot significant1.66Not significant
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Further work Have a list of different S&P 100 firms, is there some systematic pattern to results? Industry? When looking at returns, picture further complicated. Do announcements of one firm affect another firm’s stock behavior? Jumps? Last time, concluded jumps do not occur in higher frequencies on earnings release dates. Perhaps this is not the case? IBM – 27.9% jumps (BNS test at 5% level) on earnings release dates, 16.3% other days.. Similar numbers for Intel.
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