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Autori principali: She, Jingyuan Selena, Potts, Christopher, Bowman, Samuel R., Geiger, Atticus
Natura: Preprint
Pubblicazione: 2023
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Accesso online:https://arxiv.org/abs/2305.19426
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author She, Jingyuan Selena
Potts, Christopher
Bowman, Samuel R.
Geiger, Atticus
author_facet She, Jingyuan Selena
Potts, Christopher
Bowman, Samuel R.
Geiger, Atticus
contents A number of recent benchmarks seek to assess how well models handle natural language negation. However, these benchmarks lack the controlled example paradigms that would allow us to infer whether a model had learned how negation morphemes semantically scope. To fill these analytical gaps, we present the Scoped Negation NLI (ScoNe-NLI) benchmark, which contains contrast sets of six examples with up to two negations where either zero, one, or both negative morphemes affect the NLI label. We use ScoNe-NLI to assess fine-tuning and in-context learning strategies. We find that RoBERTa and DeBERTa models solve ScoNe-NLI after many shot fine-tuning. For in-context learning, we test InstructGPT models and find that most prompt strategies are not successful, including those using step-by-step reasoning. To better understand this result, we extend ScoNe with ScoNe-NLG, a sentence completion test set that embeds negation reasoning in short narratives. Here, InstructGPT is successful, which reveals the model can correctly reason about negation, but struggles to do so on prompt-adapted NLI examples outside of its core pretraining regime.
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id arxiv_https___arxiv_org_abs_2305_19426
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publishDate 2023
record_format arxiv
spellingShingle ScoNe: Benchmarking Negation Reasoning in Language Models With Fine-Tuning and In-Context Learning
She, Jingyuan Selena
Potts, Christopher
Bowman, Samuel R.
Geiger, Atticus
Computation and Language
Machine Learning
A number of recent benchmarks seek to assess how well models handle natural language negation. However, these benchmarks lack the controlled example paradigms that would allow us to infer whether a model had learned how negation morphemes semantically scope. To fill these analytical gaps, we present the Scoped Negation NLI (ScoNe-NLI) benchmark, which contains contrast sets of six examples with up to two negations where either zero, one, or both negative morphemes affect the NLI label. We use ScoNe-NLI to assess fine-tuning and in-context learning strategies. We find that RoBERTa and DeBERTa models solve ScoNe-NLI after many shot fine-tuning. For in-context learning, we test InstructGPT models and find that most prompt strategies are not successful, including those using step-by-step reasoning. To better understand this result, we extend ScoNe with ScoNe-NLG, a sentence completion test set that embeds negation reasoning in short narratives. Here, InstructGPT is successful, which reveals the model can correctly reason about negation, but struggles to do so on prompt-adapted NLI examples outside of its core pretraining regime.
title ScoNe: Benchmarking Negation Reasoning in Language Models With Fine-Tuning and In-Context Learning
topic Computation and Language
Machine Learning
url https://arxiv.org/abs/2305.19426