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A quantitative stock prediction system based on financial news

A quantitative stock prediction system based on financial news. Presenter : Chun-Jung Shih Authors :Robert P. Schumaker , Hsinchun Chen. 國立雲林科技大學 National Yunlin University of Science and Technology. IPM 2009. Outline. Motivation Objective Methodology Experiments Conclusion

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A quantitative stock prediction system based on financial news

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  1. A quantitative stock prediction system based on financial news Presenter : Chun-Jung Shih Authors :Robert P. Schumaker , Hsinchun Chen 國立雲林科技大學 National Yunlin University of Science and Technology IPM 2009

  2. Outline • Motivation • Objective • Methodology • Experiments • Conclusion • Comments

  3. Motivation • Predicting changes in the stock market has always had a certain appeal to researchers. • Acquiring relevant textual data is an important facet of stock market prediction.

  4. Objective • To create the Arizona Financial Text System (AZFinText) • Seeks to contribute to the AZFinText system by comparing AZFinText’s predictions against existing quantitative funds and human stock pricing experts. 2317鴻海

  5. Methodology

  6. Methodology • Textual analysis • To identify the Proper Nouns • Use Arizona Text Extractor (AzTeK) system • Stock Quotations • Gathers stock price data in 1 min increments • Model Building • Provide superior performance to all combinations tested • Trading Experts • Gathers the daily buy/sell recommendations from a variety of trading experts

  7. Methodology • Metrics • Evaluates system output • Closeness • Directional Accuracy • Simulated Trading

  8. Experiments

  9. Experiments

  10. Experiments

  11. Experiments

  12. Conclusion • Sector had the best Directional Accuracy at 71.18% and Simulated Trading of 8.50% return on investment. • Sector also had the second-lowest Closeness score, 0.1954, as compared to Universal, 0.0443. • AZFinText had a Directional Accuracy of 71.18%, which was second-best to DayTraders.com’s 81.82%. 12

  13. Comments • Advantage • Predicting changes in the stock market • Drawback • DayTraders.com’sDirectionalAccuracybatterthanAZFinText • Application • Information Retrieval 13

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