RT Journal Article SR Electronic T1 End-of-Day Stock Trading Volume Prediction with a
Two-Component Hierarchical Model JF The Journal of Trading FD Institutional Investor Journals SP 61 OP 68 DO 10.3905/jot.2011.6.3.061 VO 6 IS 3 A1 Shuhao Chen A1 Rong Chen A1 Gary Ardell A1 Biquan Lin YR 2011 UL https://pm-research.com/content/6/3/61.abstract AB We present a hierarchical model approach for predicting the end-of-day stock trading volume (total daily volume). It effectively combines two sources of information: the trading volume already accumulated from the beginning of the trading day to the time of the prediction, and the historical daily trading volume dynamics. The hierarchical model assumes an ARMA–GARCH model for the daily volume series and a Gaussian multinomial distribution for the volume distribution within the trading day. This model is an extension of the stable-seasonal model in Chen and Fomby [1999] used for tourism prediction. We also present out-of-sample prediction performance, with a comparison to several simpler approaches, using real volume series, where the improvement is quite significant (30% to 40%).TOPICS: Statistical methods, information providers/credit ratings, exchanges/markets/clearinghouses