Additionally, training procedures are proposed for dehazing networks to maximize the performance of the system on both hazy and non-hazy conditions.
Hence we outperform the single-feature setting in Fischer & Krauss (2018) and Krauss et al. (2017) consisting only of the daily returns with respect to the closing prices, having corresponding daily returns of 0. 41% and of 0. 39% with respect to LSTM and random forests, respectively.
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