Rachid Guennouni Hassani

1paper

1 Paper

CPMar 6, 2020
Predicting Stock Returns with Batched AROW

Rachid Guennouni Hassani, Alexis Gilles, Emmanuel Lassalle et al.

We extend the AROW regression algorithm developed by Vaits and Crammer in [VC11] to handle synchronous mini-batch updates and apply it to stock return prediction. By design, the model should be more robust to noise and adapt better to non-stationarity compared to a simple rolling regression. We empirically show that the new model outperforms more classical approaches by backtesting a strategy on S\&P500 stocks.