Search Results for author: Neha Srikanth

Found 5 papers, 3 papers with code

How often are errors in natural language reasoning due to paraphrastic variability?

no code implementations17 Apr 2024 Neha Srikanth, Marine Carpuat, Rachel Rudinger

We propose a metric for evaluating the paraphrastic consistency of natural language reasoning models based on the probability of a model achieving the same correctness on two paraphrases of the same problem.

Natural Language Inference

Partial-input baselines show that NLI models can ignore context, but they don't

1 code implementation24 May 2022 Neha Srikanth, Rachel Rudinger

When strong partial-input baselines reveal artifacts in crowdsourced NLI datasets, the performance of full-input models trained on such datasets is often dismissed as reliance on spurious correlations.

Partial-input baselines show that NLI models can ignore context, but they don’t.

1 code implementation NAACL 2022 Neha Srikanth, Rachel Rudinger

When strong partial-input baselines reveal artifacts in crowdsourced NLI datasets, the performance of full-input models trained on such datasets is often dismissed as reliance on spurious correlations.

Elaborative Simplification: Content Addition and Explanation Generation in Text Simplification

1 code implementation Findings (ACL) 2021 Neha Srikanth, Junyi Jessy Li

Much of modern-day text simplification research focuses on sentence-level simplification, transforming original, more complex sentences into simplified versions.

Explanation Generation Sentence +2

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