Rarely A Problem? Language Models Exhibit Inverse Scaling In Their Predictions Following Few-type Quantifiers · The Large Language Model Bible Contribute to LLM-Bible

Rarely A Problem? Language Models Exhibit Inverse Scaling In Their Predictions Following Few-type Quantifiers

Michaelov James A., Bergen Benjamin K.. Arxiv 2022

[Paper]    
GPT Model Architecture Pretraining Methods Reinforcement Learning Transformer

How well do language models deal with quantification? In this study, we focus on ‘few’-type quantifiers, as in ‘few children like toys’, which might pose a particular challenge for language models because the sentence components with out the quantifier are likely to co-occur, and ‘few’-type quantifiers are rare. We present 960 English sentence stimuli from two human neurolinguistic experiments to 22 autoregressive transformer models of differing sizes. Not only do all the models perform poorly on ‘few’-type quantifiers, but overall the larger the model, the worse its performance. This inverse scaling is consistent with previous work suggesting that larger models increasingly reflect online rather than offline human processing, and we argue that the decreasing performance of larger models may challenge uses of language models as the basis for natural language systems.

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