Fr. 64.00

News Mining Agent for Automated Stock Trading - System to Apply data mining techniques in real time to predict movement of stocks

English, German · Paperback / Softback

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Description

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Stock market dynamics have drawn the attention of analysts from varied academic disciplines and commercial circles. The advent of online trading and real time facilities in the stock markets has fired a new field of interest in developing automatic trading agents that conduct trades in a relatively autonomous fashion under fixed strategies. This book examines a trading strategy based on analysis of external input in the form of online news. A machine-learning model is built using the reaction of stock markets to news items spread over a period of time. The news-based agent uses this model in real time to predict the price movement of stocks, and place orders accordingly. The performance the agent is evaluated by conducting controlled experiments with proven opponent strategies based on statistical models.

About the author










Guru Hariharan is a veteran in eCommerce having held leadership roles at several Fortune-500 online retailers. Guru spent several years at Amazon.com, Shutterfly.com, eBay.com where he created retail products and services from scratch. Guru has multiple patents in eCommerce. Guru has a Masters in Engineering from the University of Texas at Austin

Product details

Authors Gurushyam Hariharan
Publisher LAP Lambert Academic Publishing
 
Languages English, German
Product format Paperback / Softback
Released 16.03.2012
 
EAN 9783846532447
ISBN 978-3-8465-3244-7
No. of pages 120
Subject Guides > Law, job, finance > Money, bank, stock market

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