Modelling Transaction Costs When Trades May Be Crowded: A Bayesian Network Using Partially Observable Orders Imbalance
Brière, Marie; Lehalle, Charles Albert; Nefedova, Tamara; Raboun, Amine (2020), Modelling Transaction Costs When Trades May Be Crowded: A Bayesian Network Using Partially Observable Orders Imbalance, in Jurczenko, Emmanuel, Machine Learning for Asset Management, Wiley-ISTE : London, p. 387-427
Book titleMachine Learning for Asset Management
Book authorJurczenko, Emmanuel
Number of pages460
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Laboratoire d'Economie de Dauphine [LEDa]
Lehalle, Charles Albert
Department of Mathematics [Imperial College London]
Dauphine Recherches en Management [DRM]
Université Paris sciences et lettres [PSL]
Abstract (EN)Using a large database of US institutional investors’ trades in the equity market, this paper explores the effect of simultaneous executions on trading cost. We design a Bayesian network modelling the inter-dependencies between investors’ transaction costs, stock characteristics (bid-ask spread, turnover and volatility), meta-order attributes (side and size of the trade) and market pressure during execution, measured by the net order flow imbalance of investors meta-orders. Unlike standard machine learning algorithms, Bayesian networks are able to account for explicit inter-dependencies between variables. They also prove to be robust to missing values, as they are able to restore their most probable value given the state of the world. Order flow imbalance being only partially observable (on a subset of trades or with a delay), we show how to design a Bayesian network to infer its distribution and how to use this information to estimate transaction costs. Our model provides better predictions than standard (OLS) models. The forecasting error is smaller and decreases with the investors' order size, as large orders are more informative on the aggregate order flow imbalance (R2 increases out-of-sample from -0.17% to 2.39% for the smallest to the largest decile of order size). Finally, we show that the accuracy of transaction costs forecasts depends heavily on stock volatility, with a coefficient of 0.78.
Subjects / KeywordsTrading Costs; Liquidity; Crowding; Bayesian Networks
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