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Clustering High-frequency Stock Data for Trading Volatility Analysis

Published: 12 December 2010 Publication History

Abstract

This paper proposes a Realized Trading Volatility (RTV) model for dynamically monitoring anomalous volatility in stock trading. Specifically, the RTV model first extracts the sequences for price volatility, volume volatility, and realized trading volatility. Then, the K-means algorithm is exploited for clustering the summary data of different stocks. The RTV model investigates the joint-volatility between share price and trading volume, and has the advantage of capturing anomalous trading volatility in a dynamic fashion. As a case study, we apply the RTV model for the analysis of real-world high-frequency stock data. For the resultant clusters, we focus on the categories with large volatility and study their statistical properties. Finally, we provide some empirical insights for the use of the RTV model.
  1. Clustering High-frequency Stock Data for Trading Volatility Analysis

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    Published In

    cover image Guide Proceedings
    ICMLA '10: Proceedings of the 2010 Ninth International Conference on Machine Learning and Applications
    December 2010
    955 pages
    ISBN:9780769543000

    Publisher

    IEEE Computer Society

    United States

    Publication History

    Published: 12 December 2010

    Author Tags

    1. Clustering Analysis
    2. Price Volatility
    3. Realized Trading Volatility
    4. Volume Volatility

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