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AI
2009
Springer

Financial Forecasting Using Character N-Gram Analysis and Readability Scores of Annual Reports

13 years 8 months ago
Financial Forecasting Using Character N-Gram Analysis and Readability Scores of Annual Reports
Abstract. Two novel Natural Language Processing (NLP) classification techniques are applied to the analysis of corporate annual reports in the task of financial forecasting. The hypothesis is that textual content of annual reports contain vital information for assessing the performance of the stock over the next year. The first method is based on character n-gram profiles, which are generated for each annual report, and then labeled based on the CNG classification. The second method draws on a more traditional approach, where readability scores are combined with performance inputs and then supplied to a support vector machine (SVM) for classification. Both methods consistently outperformed a benchmark portfolio, and their combination proved to be even more effective and efficient as the combined models yielded the highest returns with the fewest trades. Key words: automatic financial forecasting, n-grams, CNG, readability scores, support vector machines
Matthew Butler, Vlado Keselj
Added 02 Sep 2010
Updated 02 Sep 2010
Type Conference
Year 2009
Where AI
Authors Matthew Butler, Vlado Keselj
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