Inference Time Style Control for Summarization
Shuyang Cao, Lu Wang
Abstract
How to generate summaries of different styles without requiring corpora in the target styles, or training separate models? We present two novel methods that can be deployed during summary decoding on any pre-trained Transformer-based summarization model. ( (2) Word unit prediction constrains the word usage to impose strong lexical control during generation. In experiments of summarizing with simplicity control, automatic evaluation and human judges both find our models producing outputs in simpler languages while still informative. We also generate news headlines with various ideological leanings, which can be distinguished by humans with a reasonable probability.
Topics & Concepts
Automatic summarizationComputer scienceInferenceDecoding methodsWord (group theory)Natural language processingArtificial intelligenceTransformerStyle (visual arts)SimplicityControl (management)Machine learningLinguisticsAlgorithmVoltageArchaeologyHistoryQuantum mechanicsEpistemologyPhysicsPhilosophyTopic ModelingNatural Language Processing TechniquesAdvanced Text Analysis Techniques