2021
DOI: 10.48550/arxiv.2103.15335
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Changing the Mind of Transformers for Topically-Controllable Language Generation

Abstract: Large Transformer-based language models can aid human authors by suggesting plausible continuations of text written so far. However, current interactive writing assistants do not allow authors to guide text generation in desired topical directions. To address this limitation, we design a framework that displays multiple candidate upcoming topics, of which a user can select a subset to guide the generation. Our framework consists of two components: (1) a method that produces a set of candidate topics by predict… Show more

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