Predicting Abnormal Returns From News Using Text Classification

Authors: Ronny Luss, Alexandre d'Aspremont

Larger data sets, results on time of day effect, and use of delta hedged covered call options to trade on daily predictions

Abstract: We show how text from news articles can be used to predict intraday price movements of financial assets using support vector machines. Multiple kernel learning is used to combine equity returns with text as predictive features to increase classification performance and we develop an analytic center cutting plane method to solve the kernel learning problem efficiently. We observe that while the direction of returns is not predictable using either text or returns, their size is, with text features producing significantly better performance than historical returns alone.

Submitted to arXiv on 16 Sep. 2008

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