Reinforced Abstractive Summarization with Adaptive Length Controlling
Abstract
Document summarization, as a fundamental task in natural language generation, aims to generate a short and coherent summary for a given document. Controllable summarization, especially of the length, is an important issue for some practical applications, especially how to trade-off the length constraint and information integrity. In this paper, we propose an Adaptive Length Controlling Optimization (ALCO) method to leverage two-stage abstractive summarization model via reinforcement learning. ALCO incorporates length constraint into the stage of sentence extraction to penalize the overlength extracted sentences. Meanwhile, a saliency estimation mechanism is designed to preserve the salient information in the generated sentences. A series of experiments have been conducted on a wildly-used benchmark dataset CNN/Daily Mail. The results have shown that ALCO performs better than the popular baselines in terms of length controllability and content preservation.
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