Exploiting the potential of deep reinforcement learning for classification tasks in high-dimensional and unstructured data
Obando-Ceron, Johan S., Cano, Victor Romero, Toro, Walter Mayor
This paper presents a framework for efficiently learning feature selection policies which use less features to reach a high classification precision on large unstructured data. It uses a Deep Convolutional Autoencoder (DCAE) for learning compact feature spaces, in combination with recently-proposed Reinforcement Learning (RL) algorithms as Double DQN and Retrace.
Dec-19-2019