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arxiv:2309.10546

Mean Absolute Directional Loss as a New Loss Function for Machine Learning Problems in Algorithmic Investment Strategies

Published on Sep 19, 2023
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Abstract

This paper investigates the issue of an adequate loss function in the optimization of machine learning models used in the <PRE_TAG><PRE_TAG>forecasting</POST_TAG></POST_TAG> of financial time series for the purpose of <PRE_TAG>algorithmic investment strategies</POST_TAG> (AIS) construction. We propose the Mean Absolute Directional Loss (MADL) function, solving important problems of classical forecast error functions in extracting information from forecasts to create efficient buy/sell signals in algorithmic investment strategies. Finally, based on the data from two different asset classes (cryptocurrencies: Bitcoin and commodities: Crude Oil), we show that the new loss function enables us to select better hyperparameters for the LSTM model and obtain more efficient investment strategies, with regard to risk-adjusted return metrics on the out-of-sample data.

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