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Earnings Management? Alternative Explanations for Observed Discontinuities in the Frequency Distribution of Earnings, Earnings Changes, and Analyst Forecast Errors

Earnings Management? Alternative Explanations for Observed Discontinuities in the Frequency Distribution of Earnings, Earnings Changes, and Analyst Forecast Errors
Author: Cindy Durtschi
Publisher:
Total Pages: 58
Release: 2005
Genre:
ISBN:

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The discontinuities at zero in the frequency distributions of reported net income (deflated by beginning-of-period market capitalization), deflated change in net income, I/B/E/S quot;actualquot; earnings, and analysts' forecast errors are the most widely cited evidence of earnings management. We provide evidence consistent with alternative explanations for each of these discontinuities. We show that firms reporting small losses are priced significantly differently from firms that report small profits. An effect of this difference in pricing is that earnings to the left of zero are deflated by significantly different denominators than earnings to the right of zero inducing a discontinuity in the distributions of deflated net income and deflated changes in net income at zero. We also show that sample selection criteria may contribute to the discontinuity in these distributions as well as the discontinuity in I/B/E/S actual earnings. Finally, the presumption in the literature which focuses on the discontinuity at zero in the distribution of analysts' forecasts errors is that earnings are managed to meet or beat analysts' forecasts. We provide an alternative explanation: the discontinuity is caused by the fact that analysts' forecast errors tend to be much greater when the forecasts are optimistic than when they are pessimistic. This tendency leads to more small positive forecasts errors (pessimistic forecasts) than small negative forecast errors (optimistic forecasts).


Earnings quality and earnings management

Earnings quality and earnings management
Author: Sanjay Wikash Bissessur
Publisher: Rozenberg Publishers
Total Pages: 217
Release: 2005
Genre:
ISBN: 9051709870

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Earnings Management and Its Determinants

Earnings Management and Its Determinants
Author: Igor Goncharov
Publisher: Europäische Hochschulschriften / European University Studies / Publications Universitaires Européennes
Total Pages: 184
Release: 2005
Genre: Business & Economics
ISBN:

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Originally presented as the author's thesis (doctoral)--University of Bremen.


Biased Forecasts or Biased Earnings? The Role of Reported Earnings in Explaining Apparent Bias and Over/Underreaction in Analysts' Earnings Forecasts

Biased Forecasts or Biased Earnings? The Role of Reported Earnings in Explaining Apparent Bias and Over/Underreaction in Analysts' Earnings Forecasts
Author: Jeffery S. Abarbanell
Publisher:
Total Pages: 52
Release: 2012
Genre:
ISBN:

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We demonstrate the role of three empirical properties of cross-sectional distributions of analysts' forecast errors in generating evidence pertinent to three important and heretofore separately analyzed phenomena studied in the analyst earnings forecast literature: purported bias (intentional or unintentional) in analysts' earnings forecasts, forecaster over/underreaction to information in prior realizations of economic variables, and positive serial correlation in analysts' forecast errors. The empirical properties of interest include: the existence of two statistically influential asymmetries found in the tail and the middle of typical forecast error distributions, the fact that a relatively small number of observations comprise these asymmetries and, the unusual character of the reported earnings benchmark used in the calculation of the forecast errors that fall into the two asymmetries that is associated with firm recognition of unexpected accruals. We discuss competing explanations for the presence of these properties of forecast error distributions and their implications for conclusions about analyst forecast rationality that are pertinent to researchers, regulators, and investors concerned with the incentives and judgments of analysts.Previously titled quot;Biased Forecasts or Biased Earnings? The Role of Earnings Management in Explaining Apparent Optimism and Inefficiency in Analysts' Earnings Forecastsquot.


Earnings Management

Earnings Management
Author: Joshua Ronen
Publisher: Springer Science & Business Media
Total Pages: 587
Release: 2008-08-06
Genre: Business & Economics
ISBN: 0387257713

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This book is a study of earnings management, aimed at scholars and professionals in accounting, finance, economics, and law. The authors address research questions including: Why are earnings so important that firms feel compelled to manipulate them? What set of circumstances will induce earnings management? How will the interaction among management, boards of directors, investors, employees, suppliers, customers and regulators affect earnings management? How to design empirical research addressing earnings management? What are the limitations and strengths of current empirical models?


Earnings Skewness and Analyst Forecast Bias

Earnings Skewness and Analyst Forecast Bias
Author: Joanna S. Wu
Publisher:
Total Pages: 43
Release: 2000
Genre:
ISBN:

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Statistically optimal forecasts need not be unbiased. If analysts' objective is to provide the most accurate forecast through minimizing the mean absolute forecast error, the optimal forecast is the median instead of the mean earnings. When earnings distribution is skewed, the median is different from the mean and forecast bias is observed. Thus, analyst forecast bias could be a natural result of analysts' effort to improve forecast accuracy combined with skewed distribution of earnings. We find that earnings skewness explains a significant amount of variation in analyst forecast bias across firms, across fiscal quarters and across time. Moreover, the market appears to understand at least part of the skewness-induced bias and adjusts accordingly. One salient feature of our explanation is that we predict not only forecast optimism for firms with negatively skewed earnings, but also pessimism for firms with positively skewed earnings, thus providing a more coherent explanation of analyst forecast bias.


Managerial Behavior and the Bias in Analysts' Earnings Forecasts

Managerial Behavior and the Bias in Analysts' Earnings Forecasts
Author: Lawrence D. Brown
Publisher:
Total Pages: 0
Release: 2014
Genre:
ISBN:

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Managerial behavior differs considerably when managers report quarterly profits versus losses. When they report profits, managers seek to just meet or slightly beat analyst estimates. When they report losses, managers do not attempt to meet or slightly beat analyst estimates. Instead, managers often do not forewarn analysts of impending losses, and the analyst's signed error is likely to be negative and extreme (i.e., a measured optimistic bias). Brown (1997 Financial Analysts Journal) shows that the optimistic bias in analyst earnings forecasts has been mitigated over time, and that it is less pronounced for larger firms and firms followed by many analysts. In the present study, I offer three explanations for these temporal and cross-sectional phenomena. First, the frequency of profits versus losses may differ temporally and/or cross-sectionally. Since an optimistic bias in analyst forecasts is less likely to occur when firms report profits, an optimistic bias is less likely to be observed in samples possessing a relatively greater frequency of profits. Second, the tendency to report profits that just meet or slightly beat analyst estimates may differ temporally and/or cross-sectionally. A greater tendency to 'manage profits' (and analyst estimates) in this manner reduces the measured optimistic bias in analyst forecasts. Third, the tendency to forewarn analysts of impending losses may differ temporally and/or cross-sectionally. A greater tendency to 'manage losses' in this manner also reduces the measured optimistic bias in analyst forecasts. I provide the following temporal evidence. The optimistic bias in analyst forecasts pertains to both the entire sample and the losses sub-sample. In contrast, a pessimistic bias exists for the 85.3% of the sample that consists of reported profits. The temporal decrease in the optimistic bias documented by Brown (1997) pertains to both losses and profits. Analysts have gotten better at predicting the sign of a loss (i.e., they are much more likely to predict that a loss will occur than they used to), and they have reduced the number of extreme negative errors they make by two-thirds. Managers are much more likely to report profits that exactly meet or slightly beat analyst estimates than they used to. In contrast, they are less likely to report profits that fall a little short of analyst estimates than they used to. I conclude that the temporal reduction in optimistic bias is attributable to an increased tendency to manage both profits and losses. I find no evidence that there exists a temporal change in the profits-losses mix (using the I/B/E/S definition of reported quarterly profits and losses). I document the following cross-sectional evidence. The principle reason that larger firms have relatively less optimistic bias is that they are far less likely to report losses. A secondary reason that larger firms have relatively less optimistic bias is that their managers are relatively more likely to report profits that slightly beat analyst estimates. The principle reason that firms followed by more analysts have relatively less optimistic bias is that they are far less likely to report losses. A secondary reason that firms followed by more analysts have relatively less optimistic bias is that their managers are relatively more likely to report profits that exactly meet analyst estimates or beat them by one penny. I find no evidence that managers of larger firms or firms followed by more analysts are relatively more likely to forewarn analysts of impending losses. I conclude that cross-sectional differences in bias arise primarily from differential 'loss frequencies,' and secondarily from differential 'profits management.' The paper discusses implications of the results for studies of analysts forecast bias, earnings management, and capital markets. It concludes with caveats and directions for future research.