2023
DOI: 10.1142/s0218001423530026
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Constraint-Based Adversarial Networks for Unsupervised Abstract Text Summarization

Abstract: text summarization is a classic sequence-to-sequence natural language generation task. In order to improve the quality of unsupervised abstract text summarization in unsupervised mode, we propose two constraints for training text summarization model, embedding space constraint and information ratio constraint. We construct a generative adversarial network with two discriminators based on these two constraints (TC-SUM-GAN). We use unsupervised and supervised methods to train the model in the experiment. Experim… Show more

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