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Lightweight Decoding Strategies for Increasing Specificity

2021-10-22 15:32:25
Katy Ilonka Gero, Chris Kedzie, Savvas Petridis, Lydia Chilton

Abstract

Language models are known to produce vague and generic outputs. We propose two unsupervised decoding strategies based on either word-frequency or point-wise mutual information to increase the specificity of any model that outputs a probability distribution over its vocabulary at generation time. We test the strategies in a prompt completion task; with human evaluations, we find that both strategies increase the specificity of outputs with only modest decreases in sensibility. We also briefly present a summarization use case, where these strategies can produce more specific summaries.

Abstract (translated)

URL

https://arxiv.org/abs/2110.11850

PDF

https://arxiv.org/pdf/2110.11850.pdf


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