Title
Tracking Multiple Social Media for Stock Market Event Prediction.
Abstract
The problem of modeling the continuously changing trends in finance markets and generating real-time, meaningful predictions about significant changes in those markets has drawn considerable interest from economists and data scientists alike. In addition to traditional market indicators, growth of varied social media has enabled economists to leverage micro-and real-time indicators about factors possibly influencing the market, such as public emotion, anticipations and behaviors. We propose several specific market related features that can be mined from varied sources such as news, Google search volumes and Twitter. We further investigate the correlation between these features and financial market fluctuations. In this paper, we present a Delta Naive Bayes (DNB) approach to generate prediction about financial markets. We present a detailed prospective analysis of prediction accuracy generated from multiple, combined sources with those generated from a single source. We find that multi-source predictions consistently outperform single-source predictions, even though with some limitations.
Year
DOI
Venue
2017
10.1007/978-3-319-62701-4_2
ADVANCES IN DATA MINING: APPLICATIONS AND THEORETICAL ASPECTS, ICDM 2017
Keywords
Field
DocType
Market prediction,Multiple social media,Features combination,Google trends,Twitter burst,News sentiment
Econometrics,Traditional economy,Economics,Leverage (finance),Actuarial science,Social media,Naive Bayes classifier,Financial market,Stock market
Conference
Volume
ISSN
Citations 
10357
0302-9743
1
PageRank 
References 
Authors
0.35
13
6
Name
Order
Citations
PageRank
Fang Jin130226.61
Wei Wang27122746.33
Prithwish Chakraborty317917.22
Nathan Self41019.65
Feng Chen545148.47
Naren Ramakrishnan61913176.25