CLAIJun 11, 2022

Why is constrained neural language generation particularly challenging?

arXiv:2206.05395v221 citationsh-index: 57
Originality Synthesis-oriented
AI Analysis

This is an incremental survey that informs researchers on promising directions and limitations in constrained neural language generation.

The paper surveys constrained neural language generation, defining and categorizing problems to address the challenge of controlling model outputs for user and task needs, aiming to highlight progress and trends in the field.

Recent advances in deep neural language models combined with the capacity of large scale datasets have accelerated the development of natural language generation systems that produce fluent and coherent texts (to various degrees of success) in a multitude of tasks and application contexts. However, controlling the output of these models for desired user and task needs is still an open challenge. This is crucial not only to customizing the content and style of the generated language, but also to their safe and reliable deployment in the real world. We present an extensive survey on the emerging topic of constrained neural language generation in which we formally define and categorize the problems of natural language generation by distinguishing between conditions and constraints (the latter being testable conditions on the output text instead of the input), present constrained text generation tasks, and review existing methods and evaluation metrics for constrained text generation. Our aim is to highlight recent progress and trends in this emerging field, informing on the most promising directions and limitations towards advancing the state-of-the-art of constrained neural language generation research.

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