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Forex-foreteller: A News Based Currency Predictor Fang Jin (fang8), Nathan Self (nwself), Parang Saraf (parang), Patrick Butler (pabutler), Wei Wang (tskatom) & Naren Ramakrishnan (naren) Department of Computer Science, Virginia Tech Email: [email protected] Introduction - Foreign Exchange Market • Most liquid financial market in the world • Average daily turnover was USD 3.98 trillion in April 2010 • Growth of approximately 20% as compared to 2007 • United States GDP is around USD 16.62 trillion • Operates 24 hours a day except on weekends • Geographically Dispersed • Traders include large banks, central banks, institutional investors, currency speculators, corporations, governments and retail investors • A variety of factors effect exchange rate: • Economic Factors • Political Conditions • Market Psychology Related Work • Fundamental Analysis • • • • • • Analyses economic health of a country Employment Reports Inflation Productivity Trade Growth • Technical Analysis • Mathematical Techniques like VAR, ARCH, GARCH etc • Based on Past Trends of financial indicators • Can’t rely on just one type. Have to use a combination of both the techniques Our Approach Fundamental Technical Bloomberg News Interest Rates Inflation Past Currency Values Unanticipated News Linear Regression Model Final Prediction Past Stock Values System Framework Language Modeling Latent Dirichlet Allocation Model to identify different topics Different Types of News Top 30 topics are Identified Out of 30 topics, manually identify topics of Interest List of Interesting topics Topic Clustering Identify trending topics by tracking topic distribution movement over time Sentiment Analysis Inflation Increase/Decrease Interest Rate Increase/Decrease Sentiment Analysis Unanticipated News Linear Regression Interest Rates Inflation Unanticipated News Past Currency Values Past Stock Values Final Prediction Linear Regression Model Where: • Δc is currency change • Δr is interest rate change • Δf is interest rate change • Δs is currency change • Δe is currency change • βr, βf, βs, βe are respective weights Off-line Components Online Components Displays the generated alerts and associated Audit trails for user analysis EMBERS Visualizer Link: http://embers.cs.vt.edu/embers/alerts/visualizer_fin?layout=grid Other EMBERS Products Civil Unrest Predictor Influenza Like Illness Predictor Rare Diseases Predictor Ablation Visualizer Link: http://embers.cs.vt.edu/embers/alerts/visualizer_fin?layout=grid