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Large Language Models on Wikipedia-Style Survey Generation: an Evaluation in NLP Concepts

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arxiv 2308.10410 v4 pith:UXABA4HG submitted 2023-08-21 cs.CL

Large Language Models on Wikipedia-Style Survey Generation: an Evaluation in NLP Concepts

classification cs.CL
keywords evaluationgpt-4surveyarticlescomputerlanguagelargelike
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Educational materials such as survey articles in specialized fields like computer science traditionally require tremendous expert inputs and are therefore expensive to create and update. Recently, Large Language Models (LLMs) have achieved significant success across various general tasks. However, their effectiveness and limitations in the education domain are yet to be fully explored. In this work, we examine the proficiency of LLMs in generating succinct survey articles specific to the niche field of NLP in computer science, focusing on a curated list of 99 topics. Automated benchmarks reveal that GPT-4 surpasses its predecessors, inluding GPT-3.5, PaLM2, and LLaMa2 by margins ranging from 2% to 20% in comparison to the established ground truth. We compare both human and GPT-based evaluation scores and provide in-depth analysis. While our findings suggest that GPT-created surveys are more contemporary and accessible than human-authored ones, certain limitations were observed. Notably, GPT-4, despite often delivering outstanding content, occasionally exhibited lapses like missing details or factual errors. At last, we compared the rating behavior between humans and GPT-4 and found systematic bias in using GPT evaluation.

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Cited by 2 Pith papers

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  1. RWGBench: Evaluating Scholarly Positioning in Related Work Generation

    cs.DL 2026-05 unverdicted novelty 7.0

    RWGBench is a citation-centric benchmark for related work generation built from 40k CS papers and a 100-paper test set, with multi-dimensional metrics that better match human expert judgment than standard similarity scores.

  2. RWGBench: Evaluating Scholarly Positioning in Related Work Generation

    cs.DL 2026-05 accept novelty 6.5

    RWGBench evaluates related-work generation as citation decision-making (selection, placement, organization, discourse) rather than text similarity, exposing retrieval and generation failures that standard metrics miss.