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Main Authors: Shen, Hao, Yang, Hang, Gu, Zhouhong, Han, Weili
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.21654
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author Shen, Hao
Yang, Hang
Gu, Zhouhong
Han, Weili
author_facet Shen, Hao
Yang, Hang
Gu, Zhouhong
Han, Weili
contents Large language models have advanced from single-turn question answering to deep research systems that iteratively decompose research questions, invoke retrieval tools, and synthesize information across multiple rounds. Evaluating such systems typically involves scoring their final research reports holistically, but this end-to-end paradigm tightly couples the language model's decision-making, workflow design, and environmental feedback, precluding decomposable analysis of individual components. We introduce ScholarGym, an evaluation environment that isolates the information-gathering stage of deep research on academic literature. Under a unified workflow, ScholarGym decomposes the research process into three explicit stages -- Query Planning, Tool Invocation, and Relevance Assessment -- and evaluates each against 2,536 expert-annotated queries over a static corpus of 570K papers with deterministic retrieval. Systematic experiments reveal that iterative query decomposition yields 2.9--3.3$\times$ F1 gains over single-query retrieval, models with extended thinking trade recall for precision, and Query Planning quality together with Relevance Assessment constitute dual bottlenecks that separate proprietary from open-source model performance.
format Preprint
id arxiv_https___arxiv_org_abs_2601_21654
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle ScholarGym: Benchmarking Large Language Model Capabilities in the Information-Gathering Stage of Deep Research
Shen, Hao
Yang, Hang
Gu, Zhouhong
Han, Weili
Artificial Intelligence
Large language models have advanced from single-turn question answering to deep research systems that iteratively decompose research questions, invoke retrieval tools, and synthesize information across multiple rounds. Evaluating such systems typically involves scoring their final research reports holistically, but this end-to-end paradigm tightly couples the language model's decision-making, workflow design, and environmental feedback, precluding decomposable analysis of individual components. We introduce ScholarGym, an evaluation environment that isolates the information-gathering stage of deep research on academic literature. Under a unified workflow, ScholarGym decomposes the research process into three explicit stages -- Query Planning, Tool Invocation, and Relevance Assessment -- and evaluates each against 2,536 expert-annotated queries over a static corpus of 570K papers with deterministic retrieval. Systematic experiments reveal that iterative query decomposition yields 2.9--3.3$\times$ F1 gains over single-query retrieval, models with extended thinking trade recall for precision, and Query Planning quality together with Relevance Assessment constitute dual bottlenecks that separate proprietary from open-source model performance.
title ScholarGym: Benchmarking Large Language Model Capabilities in the Information-Gathering Stage of Deep Research
topic Artificial Intelligence
url https://arxiv.org/abs/2601.21654