From Credit Assignment to Entropy Regularization: Two New Algorithms for Neural Sequence PredictionDownload PDFOpen Website

Published: 2018, Last Modified: 26 Sept 2023CoRR 2018Readers: Everyone
Abstract: In this work, we study the credit assignment problem in reward augmented maximum likelihood (RAML) learning, and establish a theoretical equivalence between the token-level counterpart of RAML and the entropy regularized reinforcement learning. Inspired by the connection, we propose two sequence prediction algorithms, one extending RAML with fine-grained credit assignment and the other improving Actor-Critic with a systematic entropy regularization. On two benchmark datasets, we show the proposed algorithms outperform RAML and Actor-Critic respectively, providing new alternatives to sequence prediction.
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