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Deep Reinforcement Learning with a Combinatorial Action Space for Predicting Popular Reddit Threads

Published 12 Jun 2016 in cs.CL, cs.AI, and cs.LG | (1606.03667v4)

Abstract: We introduce an online popularity prediction and tracking task as a benchmark task for reinforcement learning with a combinatorial, natural language action space. A specified number of discussion threads predicted to be popular are recommended, chosen from a fixed window of recent comments to track. Novel deep reinforcement learning architectures are studied for effective modeling of the value function associated with actions comprised of interdependent sub-actions. The proposed model, which represents dependence between sub-actions through a bi-directional LSTM, gives the best performance across different experimental configurations and domains, and it also generalizes well with varying numbers of recommendation requests.

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