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國立雲林科技大學
National Yunlin University of Science and Technology
N.Y.U.S.T.
I. M.
A quantitative stock prediction
system based on financial news
Presenter : Chun-Jung Shih
Authors :Robert P. Schumaker , Hsinchun Chen
IPM 2009
1
Intelligent Database Systems Lab
Outline

Motivation

Objective

Methodology

Experiments

Conclusion

Comments
N.Y.U.S.T.
I. M.
2
Intelligent Database Systems Lab
Motivation
N.Y.U.S.T.
I. M.

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.
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Intelligent Database Systems Lab
Objective
N.Y.U.S.T.
I. M.

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
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Intelligent Database Systems Lab
Methodology
N.Y.U.S.T.
I. M.
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Intelligent Database Systems Lab
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


N.Y.U.S.T.
I. M.
Provide superior performance to all combinations tested
Trading Experts

Gathers the daily buy/sell recommendations from a variety of trading
experts
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Intelligent Database Systems Lab
Methodology

Metrics

Evaluates system output
N.Y.U.S.T.
I. M.



Closeness
Directional Accuracy
Simulated Trading
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Intelligent Database Systems Lab
Experiments
N.Y.U.S.T.
I. M.
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Intelligent Database Systems Lab
Experiments
N.Y.U.S.T.
I. M.
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Intelligent Database Systems Lab
Experiments
N.Y.U.S.T.
I. M.
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Intelligent Database Systems Lab
Experiments
N.Y.U.S.T.
I. M.
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Intelligent Database Systems Lab
Conclusion
N.Y.U.S.T.
I. M.

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
Intelligent Database Systems Lab
Comments

Advantage


Predicting changes in the stock market
Drawback


N.Y.U.S.T.
I. M.
DayTraders.com’s Directional Accuracy batter than AZFinText
Application

Information Retrieval
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Intelligent Database Systems Lab