[go: up one dir, main page]
More Web Proxy on the site http://driver.im/ skip to main content
10.1109/SCC.2012.35guideproceedingsArticle/Chapter ViewAbstractPublication PagesConference Proceedingsacm-pubtype
Article

Stock Market Volatility Prediction: A Service-Oriented Multi-kernel Learning Approach

Published: 24 June 2012 Publication History

Abstract

Stock market is an important and active part of nowadays financial markets. Stock time series volatility analysis is regarded as one of the most challenging time series forecasting due to the hard-to-predict volatility observed in worldwide stock markets. In this paper we argue that the stock market state is dynamic and invisible but it will be influenced by some visible stock market information. Existing research on financial time series analysis and stock market volatility prediction can be classified into two categories: in depth study of one market factor on the stock market volatility prediction or prediction by combining historical price fluctuations with either trading volume or news. In this paper we present a service-oriented multi-kernel based learning framework (MKL) for stock volatility analysis. Our MKL service framework promotes a two-tier learning architecture. In the top tier, we develop a suite of data preparation and data transformation techniques to provide a source-specific modeling, which transforms and normalizes a source specific input dataset into the MKL ready data representation. Then we apply data alignment techniques to prepare the datasets from multiple information sources based on the classification model we choose for cross-source correlation analysis. In the next tier, we develop model integration methods to perform three analytic tasks: (i) building one sub-kernel per source, (ii) learning and tuning the weights for sub-kernels through weight adjustment methods and (iii) performing multi-kernel based cross-correlation analysis of market volatility. To validate the effectiveness of our service oriented MKL approach, we performed experiments on HKEx 2001 stock market datasets with three important market information sources: historical prices, trading volumes and stock related news articles. Our experiments show that 1) multi-kernel learning method has a higher degree of accuracy and a lower degree of false prediction, compared to existing single kernel methods; and 2) integrating both news and trading volume data with historical stock price information can significantly improve the effectiveness of stock market volatility prediction, compared to many existing prediction methods.

Cited By

View all
  • (2018)Next Generation Business Intelligence and AnalyticsProceedings of the 2nd International Conference on Business and Information Management10.1145/3278252.3278292(163-168)Online publication date: 20-Sep-2018
  • (2016)Forecasting movements of health-care stock prices based on different categories of news articles using multiple kernel learningDecision Support Systems10.1016/j.dss.2016.03.00185:C(74-83)Online publication date: 1-May-2016
  • (2014)Exploiting Social Media for Stock Market Prediction with Factorization MachineProceedings of the 2014 IEEE/WIC/ACM International Joint Conferences on Web Intelligence (WI) and Intelligent Agent Technologies (IAT) - Volume 0210.1109/WI-IAT.2014.91(142-149)Online publication date: 11-Aug-2014
  1. Stock Market Volatility Prediction: A Service-Oriented Multi-kernel Learning Approach

    Recommendations

    Comments

    Please enable JavaScript to view thecomments powered by Disqus.

    Information & Contributors

    Information

    Published In

    cover image Guide Proceedings
    SCC '12: Proceedings of the 2012 IEEE Ninth International Conference on Services Computing
    June 2012
    714 pages
    ISBN:9780769547534

    Publisher

    IEEE Computer Society

    United States

    Publication History

    Published: 24 June 2012

    Author Tags

    1. multi-data source integration
    2. multiple kernel learning
    3. stock prediction
    4. support vector machine

    Qualifiers

    • Article

    Contributors

    Other Metrics

    Bibliometrics & Citations

    Bibliometrics

    Article Metrics

    • Downloads (Last 12 months)0
    • Downloads (Last 6 weeks)0
    Reflects downloads up to 18 Jan 2025

    Other Metrics

    Citations

    Cited By

    View all
    • (2018)Next Generation Business Intelligence and AnalyticsProceedings of the 2nd International Conference on Business and Information Management10.1145/3278252.3278292(163-168)Online publication date: 20-Sep-2018
    • (2016)Forecasting movements of health-care stock prices based on different categories of news articles using multiple kernel learningDecision Support Systems10.1016/j.dss.2016.03.00185:C(74-83)Online publication date: 1-May-2016
    • (2014)Exploiting Social Media for Stock Market Prediction with Factorization MachineProceedings of the 2014 IEEE/WIC/ACM International Joint Conferences on Web Intelligence (WI) and Intelligent Agent Technologies (IAT) - Volume 0210.1109/WI-IAT.2014.91(142-149)Online publication date: 11-Aug-2014

    View Options

    View options

    Media

    Figures

    Other

    Tables

    Share

    Share

    Share this Publication link

    Share on social media