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Intra-Daily Volume Modeling and Prediction for Algorithmic Trading


Christian T. Brownlees


Universitat Pompeu Fabra; Barcelona Graduate School of Economics (Barcelona GSE)

Fabrizio Cipollini


Universita di Firenze, Dipartimento di Statistica

Giampiero M. Gallo


Universita' di Firenze - Dipartimento di Statistica

February 2010


Abstract:     
The explosion of algorithmic trading has been one of the most prominent recent trends in the financial industry. Algorithmic trading consists of automated trading strategies that attempt to minimize transaction costs by optimally placing orders. The key ingredient of many of these strategies are intra-daily volume proportions forecasts. This work proposes a dynamic model for intra-daily volumes that captures salient features of the series such as time series dependence, intra-daily periodicity and volume asymmetry. Moreover, we introduce a loss functions for the evaluation of proportions forecasts which retains both an operational and information theoretic interpretation. An empirical application on a set of widely traded index ETFs shows that the proposed methodology is able to significantly outperform common forecasting methods and delivers significantly more precise predictions for Volume Weighted Average Price trading.

Number of Pages in PDF File: 39

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Date posted: April 24, 2009 ; Last revised: February 19, 2010

Suggested Citation

Brownlees, Christian T., Cipollini, Fabrizio and Gallo, Giampiero M., Intra-Daily Volume Modeling and Prediction for Algorithmic Trading (February 2010). Available at SSRN: http://ssrn.com/abstract=1393993 or http://dx.doi.org/10.2139/ssrn.1393993

Contact Information

Christian T. Brownlees (Contact Author)
Universitat Pompeu Fabra ( email )
Ramon Trias Fargas 25-27
Barcelona, 08005
Spain
HOME PAGE: http://www.econ.upf.edu/~cbrownlees/
Barcelona Graduate School of Economics (Barcelona GSE) ( email )
Ramon Trias Fargas 25-27
Barcelona, Catalonia 08014
Spain
Fabrizio Cipollini
Universita di Firenze, Dipartimento di Statistica ( email )
Viale Morgagni, 59
Florence, 50018
Italy
+39 055 4237253 (Phone)
+39 055 4223560 (Fax)
Giampiero M. Gallo
Universita' di Firenze - Dipartimento di Statistica ( email )
Viale G.B. Morgagni, 59
Florence, 50134
Italy
0039 055 4237273 (Phone)
0039 055 4223560 (Fax)
HOME PAGE: http://www.ds.unifi.it/gallog
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