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Main Authors: Sui, Peiqi, Rodriguez, Juan Diego, Laban, Philippe, Murphy, Dean, Dexter, Joseph P., So, Richard Jean, Baker, Samuel, Chaudhuri, Pramit
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.09825
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author Sui, Peiqi
Rodriguez, Juan Diego
Laban, Philippe
Murphy, Dean
Dexter, Joseph P.
So, Richard Jean
Baker, Samuel
Chaudhuri, Pramit
author_facet Sui, Peiqi
Rodriguez, Juan Diego
Laban, Philippe
Murphy, Dean
Dexter, Joseph P.
So, Richard Jean
Baker, Samuel
Chaudhuri, Pramit
contents Each year, tens of millions of essays are written and graded in college-level English courses. Students are asked to analyze literary and cultural texts through a process known as close reading, in which they gather textual details to formulate evidence-based arguments. Despite being viewed as a basis for critical thinking and widely adopted as a required element of university coursework, close reading has never been evaluated on large language models (LLMs), and multi-discipline benchmarks like MMLU do not include literature as a subject. To fill this gap, we present KRISTEVA, the first close reading benchmark for evaluating interpretive reasoning, consisting of 1331 multiple-choice questions adapted from classroom data. With KRISTEVA, we propose three progressively more difficult sets of tasks to approximate different elements of the close reading process, which we use to test how well LLMs may seem to understand and reason about literary works: 1) extracting stylistic features, 2) retrieving relevant contextual information from parametric knowledge, and 3) multi-hop reasoning between style and external contexts. Our baseline results find that, while state-of-the-art LLMs possess some college-level close reading competency (accuracy 49.7% - 69.7%), their performances still trail those of experienced human evaluators on 10 out of our 11 tasks.
format Preprint
id arxiv_https___arxiv_org_abs_2505_09825
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle KRISTEVA: Close Reading as a Novel Task for Benchmarking Interpretive Reasoning
Sui, Peiqi
Rodriguez, Juan Diego
Laban, Philippe
Murphy, Dean
Dexter, Joseph P.
So, Richard Jean
Baker, Samuel
Chaudhuri, Pramit
Computation and Language
Each year, tens of millions of essays are written and graded in college-level English courses. Students are asked to analyze literary and cultural texts through a process known as close reading, in which they gather textual details to formulate evidence-based arguments. Despite being viewed as a basis for critical thinking and widely adopted as a required element of university coursework, close reading has never been evaluated on large language models (LLMs), and multi-discipline benchmarks like MMLU do not include literature as a subject. To fill this gap, we present KRISTEVA, the first close reading benchmark for evaluating interpretive reasoning, consisting of 1331 multiple-choice questions adapted from classroom data. With KRISTEVA, we propose three progressively more difficult sets of tasks to approximate different elements of the close reading process, which we use to test how well LLMs may seem to understand and reason about literary works: 1) extracting stylistic features, 2) retrieving relevant contextual information from parametric knowledge, and 3) multi-hop reasoning between style and external contexts. Our baseline results find that, while state-of-the-art LLMs possess some college-level close reading competency (accuracy 49.7% - 69.7%), their performances still trail those of experienced human evaluators on 10 out of our 11 tasks.
title KRISTEVA: Close Reading as a Novel Task for Benchmarking Interpretive Reasoning
topic Computation and Language
url https://arxiv.org/abs/2505.09825