Inadequacies of Large Language Model Benchmarks in the Era of Generative Artificial Intelligence

ArXiv Pub Date : 2024-02-15 DOI:10.48550/arXiv.2402.09880
Timothy R. McIntosh, Teo Susnjak, Tong Liu, Paul Watters, M. Halgamuge
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Abstract

The rapid rise in popularity of Large Language Models (LLMs) with emerging capabilities has spurred public curiosity to evaluate and compare different LLMs, leading many researchers to propose their LLM benchmarks. Noticing preliminary inadequacies in those benchmarks, we embarked on a study to critically assess 23 state-of-the-art LLM benchmarks, using our novel unified evaluation framework through the lenses of people, process, and technology, under the pillars of functionality and security. Our research uncovered significant limitations, including biases, difficulties in measuring genuine reasoning, adaptability, implementation inconsistencies, prompt engineering complexity, evaluator diversity, and the overlooking of cultural and ideological norms in one comprehensive assessment. Our discussions emphasized the urgent need for standardized methodologies, regulatory certainties, and ethical guidelines in light of Artificial Intelligence (AI) advancements, including advocating for an evolution from static benchmarks to dynamic behavioral profiling to accurately capture LLMs' complex behaviors and potential risks. Our study highlighted the necessity for a paradigm shift in LLM evaluation methodologies, underlining the importance of collaborative efforts for the development of universally accepted benchmarks and the enhancement of AI systems' integration into society.
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生成式人工智能时代大型语言模型基准的不足之处
具有新兴功能的大型语言模型(LLM)迅速普及,激发了公众对评估和比较不同 LLM 的好奇心,导致许多研究人员提出了自己的 LLM 基准。我们注意到了这些基准的初步不足,于是开始了一项研究,在功能性和安全性的支柱下,使用我们新颖的统一评估框架,从人员、流程和技术的角度,对 23 个最先进的 LLM 基准进行了严格评估。我们的研究发现了重大的局限性,包括偏差、难以衡量真正的推理、适应性、实施不一致、及时工程的复杂性、评估者的多样性,以及在一次全面评估中忽视文化和意识形态规范。我们的讨论强调,鉴于人工智能(AI)的进步,迫切需要标准化方法、监管确定性和道德准则,包括倡导从静态基准发展到动态行为分析,以准确捕捉法学硕士的复杂行为和潜在风险。我们的研究强调,有必要转变本地语言学习者评估方法的范式,强调合作努力对于制定普遍接受的基准和促进人工智能系统融入社会的重要性。
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