DocumentCode
104281
Title
Dynamic Business Network Analysis for Correlated Stock Price Movement Prediction
Author
Wenping Zhang ; Chunping Li ; Yunming Ye ; Wenjie Li ; Ngai, Eric W. T.
Author_Institution
City Univ. of Hong Kong, Hong Kong, China
Volume
30
Issue
2
fYear
2015
fDate
Mar.-Apr. 2015
Firstpage
26
Lastpage
33
Abstract
Although much research is devoted to the analysis and prediction of individuals´ behavior in social networks, very few studies analyze firms´ performance with respect to business networks. Empowered by recent research on the automated mining of business networks, this article illustrates the design of a novel business network-based model called the energy cascading model (ECM) for predicting directional stock price movements of related firms. More specifically, the proposed network-based predictive analytics model considers both influential business relationships and Twitter sentiments to infer a firm´s middle to long-term directional stock price movements. The reported empirical experiments are based on a publicly available financial corpus and social media postings that reveal the proposed ECM model to be effective for predicting directional stock price movements. It outperforms the best baseline model, the Pearson correlation-based prediction model, in upward stock price movement prediction by 11.7 percent in terms of F-measure.
Keywords
data mining; pricing; social networking (online); stock markets; ECM; F-measure; Pearson correlation-based prediction model; Twitter sentiments; business network automated mining; correlated stock price movement prediction; directional stock price movement prediction; dynamic business network analysis; energy cascading model; financial corpus; firm middle-long-term directional stock price movements; firm performance analysis; influential business relationships; network-based predictive analytics model; social media postings; social networks; upward stock price movement prediction; Behavioral analysis; Business; Forecasting; Marketing and sales; Predictive models; Social network services; Twitter sentiments; business network mining; intelligent systems; network-based inference; predictive analytics; stock movement prediction;
fLanguage
English
Journal_Title
Intelligent Systems, IEEE
Publisher
ieee
ISSN
1541-1672
Type
jour
DOI
10.1109/MIS.2015.25
Filename
7061664
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