Publication | Open Access
Predicting risk from financial reports with regression
251
Citations
33
References
2009
Year
Unknown Venue
Volatility ModelingFinancial Risk ManagementRisk AnalysisText Regression ProblemAsset PricingRisk ManagementManagementStatisticsFinancial ModelingAccountingPredictive AnalyticsFinanceBusinessStock Market PredictionFinancial ForecastFinancial EngineeringSec-mandated Financial ReportPast VolatilityHigh-frequency Financial EconometricsFinancial Reports
We address a text regression problem: given a piece of text, predict a real-world continuous quantity associated with the text's meaning. In this work, the text is an SEC-mandated financial report published annually by a publicly-traded company, and the quantity to be predicted is volatility of stock returns, an empirical measure of financial risk. We apply well-known regression techniques to a large corpus of freely available financial reports, constructing regression models of volatility for the period following a report. Our models rival past volatility (a strong baseline) in predicting the target variable, and a single model that uses both can significantly outperform past volatility. Interestingly, our approach is more accurate for reports after the passage of the Sarbanes-Oxley Act of 2002, giving some evidence for the success of that legislation in making financial reports more informative.
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