CLMay 13, 2025

Towards Contamination Resistant Benchmarks

arXiv:2505.08389v1
Originality Incremental advance
AI Analysis

This addresses the need for more rigorous LLM evaluation to assess true capabilities, though it is incremental as it proposes a specific benchmark rather than a broad solution.

The paper tackles the problem of contamination undermining LLM evaluation reliability by introducing a contamination resistant benchmark based on Caesar ciphers, finding that widely used LLMs struggle with it when contamination is controlled.

The rapid development of large language models (LLMs) has transformed the landscape of natural language processing. Evaluating LLMs properly is crucial for understanding their potential and addressing concerns such as safety. However, LLM evaluation is confronted by various factors, among which contamination stands out as a key issue that undermines the reliability of evaluations. In this work, we introduce the concept of contamination resistance to address this challenge. We propose a benchmark based on Caesar ciphers (e.g., "ab" to "bc" when the shift is 1), which, despite its simplicity, is an excellent example of a contamination resistant benchmark. We test this benchmark on widely used LLMs under various settings, and we find that these models struggle with this benchmark when contamination is controlled. Our findings reveal issues in current LLMs and raise important questions regarding their true capabilities. Our work contributes to the development of contamination resistant benchmarks, enabling more rigorous LLM evaluation and offering insights into the true capabilities and limitations of LLMs.

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