Learning to Encode Text as Human-Readable Summaries using Generative Adversarial Networks
About
Auto-encoders compress input data into a latent-space representation and reconstruct the original data from the representation. This latent representation is not easily interpreted by humans. In this paper, we propose training an auto-encoder that encodes input text into human-readable sentences, and unpaired abstractive summarization is thereby achieved. The auto-encoder is composed of a generator and a reconstructor. The generator encodes the input text into a shorter word sequence, and the reconstructor recovers the generator input from the generator output. To make the generator output human-readable, a discriminator restricts the output of the generator to resemble human-written sentences. By taking the generator output as the summary of the input text, abstractive summarization is achieved without document-summary pairs as training data. Promising results are shown on both English and Chinese corpora.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Text Summarization | Gigaword (test) | ROUGE-121.26 | 75 | |
| Abstractive Summarization | Gigaword (test) | ROUGE-127.09 | 58 |