2023
DOI: 10.21203/rs.3.rs-3276873/v1
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A noise audit of human-labeled benchmarks for machine commonsense reasoning

Mayank Kejriwal,
Henrique Santos,
Ke Shen
et al.

Abstract: With the advent of large language models, evaluating and benchmarking these systems on important AI problems has taken on newfound importance. Such benchmarking typically involves comparing the predictions of a system against human labels (or a single 'ground-truth'). However, much recent work in psychology has suggested that most tasks involving significant human judgment can have non-trivial degrees of noise. In his book, Kahneman suggests that noise may be a much more significant component of inaccuracy com… Show more

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