CNN-DRL with Shuffled Features in Finance

16 Jan 2024  ·  Sina Montazeri, Akram Mirzaeinia, Amir Mirzaeinia ·

In prior methods, it was observed that the application of Convolutional Neural Networks agent in Deep Reinforcement Learning to financial data resulted in an enhanced reward. In this study, a specific permutation was applied to the feature vector, thereby generating a CNN matrix that strategically positions more pertinent features in close proximity. Our comprehensive experimental evaluations unequivocally demonstrate a substantial enhancement in reward attainment.

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