Publication | Open Access
Prompt Compression and Contrastive Conditioning for Controllability and Toxicity Reduction in Language Models
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Citations
19
References
2022
Year
Unknown Venue
EngineeringPrompt CompressionCorpus LinguisticsText MiningNatural Language ProcessingSyntaxLanguage AdaptationComputational LinguisticsLanguage EngineeringGrammarLanguage StudiesToxicity ReductionMachine TranslationCode GenerationCompressed PromptsLanguage NetworkComputer ScienceGrammar InductionComplex PromptsLanguage MonitoringSemantic ParsingSpeech CommunicationAutomated ReasoningLanguage ScienceContrastive ConditioningOriginal PromptLinguisticsLanguage Generation
We explore the idea of compressing the prompts used to condition language models, and show that compressed prompts can retain a substantive amount of information about the original prompt. For severely compressed prompts, while fine-grained information is lost, abstract information and general sentiments can be retained with surprisingly few parameters, which can be useful in the context of decode-time algorithms for controllability and toxicity reduction. We find that some complex prompts can be effectively compressed into a single token to guide generation. We also show that compressed prompts are largely compositional, and can be constructed such that they can be used to control independent aspects of generated text.
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