Mengjie Ren
2024
StructEval: Deepen and Broaden Large Language Model Assessment via Structured Evaluation
Boxi Cao
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Mengjie Ren
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Hongyu Lin
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Xianpei Han
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Feng Zhang
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Junfeng Zhan
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Le Sun
Findings of the Association for Computational Linguistics: ACL 2024
Evaluation is the baton for the development of large language models. Current evaluations typically employ a single-item assessment paradigm for each atomic test objective, which struggle to discern whether a model genuinely possesses the required capabilities or merely memorizes/guesses the answers to specific questions. To this end, this paper proposes a novel evaluation framework referred to as StructEval. Starting from an atomic test objective, StructEval deepens and broadens the evaluation by conducting a structured assessment across multiple cognitive levels and critical concepts, and therefore offers a comprehensive, robust and consistent evaluations for large language models. Experiments on three widely-used benchmarks demonstrate that StructEval serves as a reliable tool for resisting the risk of data contamination, and reducing the interference of potential biases, thereby providing a more reliable and consistent conclusion regarding model capabilities. Our framework also sheds light on the design of future principled and trustworthy LLM evaluation protocols.
Learning or Self-aligning? Rethinking Instruction Fine-tuning
Mengjie Ren
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Boxi Cao
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Hongyu Lin
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Cao Liu
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Xianpei Han
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Ke Zeng
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Wan Guanglu
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Xunliang Cai
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Le Sun
Proceedings of the 62nd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Instruction Fine-tuning (IFT) is a crucial phase in building large language models (LLMs). Previous works mainly focus on the IFT’s role in the transfer of behavioral norms and the learning of additional world knowledge. However, the understanding of the underlying mechanisms of IFT remains significantly limited. In this paper, we design a knowledge intervention framework to decouple the potential underlying factors of IFT, thereby enabling individual analysis of different factors. Surprisingly, our experiments reveal that attempting to learn additional world knowledge through IFT often struggles to yield positive impacts and can even lead to markedly negative effects. Further, we discover that maintaining internal knowledge consistency before and after IFT is a critical factor for achieving successful IFT. Our findings reveal the underlying mechanisms of IFT and provide robust support for some very recent and potential future works.
2022
ISCAS at SemEval-2022 Task 10: An Extraction-Validation Pipeline for Structured Sentiment Analysis
Xinyu Lu
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Mengjie Ren
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Yaojie Lu
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Hongyu Lin
Proceedings of the 16th International Workshop on Semantic Evaluation (SemEval-2022)
ISCAS participated in both sub-tasks in SemEval-2022 Task 10: Structured Sentiment competition. We design an extraction-validation pipeline architecture to tackle both monolingual and cross-lingual sub-tasks. Experimental results show the multilingual effectiveness and cross-lingual robustness of our system. Our system is openly released on: https://github.com/luxinyu1/SemEval2022-Task10/.
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Co-authors
- Hongyu Lin 3
- Boxi Cao 2
- Xianpei Han 2
- Le Sun 2
- Feng Zhang 1
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