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Showing items 11-20 of 28  (3 Page(s) Totally)
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Institution Date Title Author
元智大學 2015-07-12 A prediction system for bike sharing using artificial immune system with regression trees Jheng-Long Wu; Chang P.C.
元智大學 2014-10-1 An Intelligent Stock Trading System using Comprehensive Features Jheng-Long Wu; Liang-Chih Yu; Chang P.C.
元智大學 2014-10-1 An Intelligent Stock Trading System using Comprehensive Features Jheng-Long Wu; Liang-Chih Yu; Chang P.C.
元智大學 2013-9-1 The stability analysis for a novel feedback neural network with partial connection Didi Wang; Chang P.C.; Li Zhang; Jheng-Long Wu; Changle Zhou
元智大學 2013-03 Using a Contextual Entropy Model to Expand Emotion Words and Their Intensity for the Sentiment Classification of Stock Market News Liang-Chih Yu; Jheng-Long Wu; Pei-Chann Chang; Hsuan-Shou Chu
元智大學 2013 基於交易資訊及市場訊息的全面性特徵於智慧型股市交易模型之研究 吳政隆; Jheng-Long Wu
元智大學 2012-12-22 Stock Price Predication Using Combinational Features from Sentimental Analysis of Stock News and Technical Analysis of Trading Information Jheng-Long Wu; Chen-Chi Su; Liang-Chih Yu; Pei-Chann Chang
元智大學 2012-07 Detecting Causality from Online Psychiatric Texts Using Inter-Sentential Language Patterns Jheng-Long Wu; Liang-Chih Yu; Chang P.C.
元智大學 2012-02 Sentiment Analysis of Stock News Using a PMI-based Term Expansion Method Jheng-Long Wu; Hsuan-Shuo Chu; Liang-Chih Yu; Chang P.C.
元智大學 2011-10 Emotion Classification by Removal of the Overlap from Incremental Association Language Features Jheng-Long Wu; Liang-Chih Yu; Chang P.C.

Showing items 11-20 of 28  (3 Page(s) Totally)
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