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Main Authors: Zheng, Shenyu, Dong, Ximing, Liu, Xiaoshuang, Oliva, Gustavo, Yong, Chong Chun, Lin, Dayi, Chen, Boyuan, Wang, Shaowei, Hassan, Ahmed E.
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2602.05891
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author Zheng, Shenyu
Dong, Ximing
Liu, Xiaoshuang
Oliva, Gustavo
Yong, Chong Chun
Lin, Dayi
Chen, Boyuan
Wang, Shaowei
Hassan, Ahmed E.
author_facet Zheng, Shenyu
Dong, Ximing
Liu, Xiaoshuang
Oliva, Gustavo
Yong, Chong Chun
Lin, Dayi
Chen, Boyuan
Wang, Shaowei
Hassan, Ahmed E.
contents As Large Language Models (LLMs) achieve breakthroughs in complex reasoning, Codeforces-based Elo ratings have emerged as a prominent metric for evaluating competitive programming capabilities. However, these ratings are often reported without critical experimental details, leading to significant discrepancies illustrated by recent reports where the score of the same model version fluctuated by nearly 500 points. This paper presents a systematic empirical study on the hidden factors biasing Elo evaluations: (1) the temporal ordering of submissions, (2) contest difficulty selection, and (3) run to run stochastic variability of LLMs. Utilizing a controlled benchmark of 37 recent Codeforces contests and 13,691 generated test cases, we demonstrate that Elo scores are highly sensitive to these parameters. Our findings reveal that varying submission orders can shift scores by 394 points, while contest selection can cause differences of up to 1,122 points for the same model. Run to run performance exhibits substantial instability, with a maximum difference of 349 points in mean scores observed when evaluating identical contests. We conclude that direct Elo comparisons are unreliable and potentially misleading without strict standardization and transparent reporting of experimental settings.
format Preprint
id arxiv_https___arxiv_org_abs_2602_05891
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle When Elo Lies: Hidden Biases in Codeforces-Based Evaluation of Large Language Models
Zheng, Shenyu
Dong, Ximing
Liu, Xiaoshuang
Oliva, Gustavo
Yong, Chong Chun
Lin, Dayi
Chen, Boyuan
Wang, Shaowei
Hassan, Ahmed E.
Software Engineering
As Large Language Models (LLMs) achieve breakthroughs in complex reasoning, Codeforces-based Elo ratings have emerged as a prominent metric for evaluating competitive programming capabilities. However, these ratings are often reported without critical experimental details, leading to significant discrepancies illustrated by recent reports where the score of the same model version fluctuated by nearly 500 points. This paper presents a systematic empirical study on the hidden factors biasing Elo evaluations: (1) the temporal ordering of submissions, (2) contest difficulty selection, and (3) run to run stochastic variability of LLMs. Utilizing a controlled benchmark of 37 recent Codeforces contests and 13,691 generated test cases, we demonstrate that Elo scores are highly sensitive to these parameters. Our findings reveal that varying submission orders can shift scores by 394 points, while contest selection can cause differences of up to 1,122 points for the same model. Run to run performance exhibits substantial instability, with a maximum difference of 349 points in mean scores observed when evaluating identical contests. We conclude that direct Elo comparisons are unreliable and potentially misleading without strict standardization and transparent reporting of experimental settings.
title When Elo Lies: Hidden Biases in Codeforces-Based Evaluation of Large Language Models
topic Software Engineering
url https://arxiv.org/abs/2602.05891