2022
DOI: 10.48550/arxiv.2204.03592
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Testing the limits of natural language models for predicting human language judgments

Abstract: Neural network language models can serve as computational hypotheses about how humans process language. We compared the model-human consistency of diverse language models using a novel experimental approach: controversial sentence pairs. For each controversial sentence pair, two language models disagree about which sentence is more likely to occur in natural text. Considering nine language models (including n-gram, recurrent neural networks, and transformer models), we created hundreds of such controversial se… Show more

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