More Bias, Less Bias: BiasPrompting for Enhanced Multiple-Choice Question Answering
- URL: http://arxiv.org/abs/2511.20086v1
- Date: Tue, 25 Nov 2025 09:01:08 GMT
- Title: More Bias, Less Bias: BiasPrompting for Enhanced Multiple-Choice Question Answering
- Authors: Duc Anh Vu, Thong Nguyen, Cong-Duy Nguyen, Viet Anh Nguyen, Anh Tuan Luu,
- Abstract summary: We introduce BiasPrompting, a novel inference framework for large language models (LLMs)<n>It guides LLMs to generate and critically evaluate reasoning across all plausible answer options before reaching a final prediction.<n>It demonstrates significant improvements in five widely used multiple-choice question answering benchmarks.
- Score: 53.09478307383865
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: With the advancement of large language models (LLMs), their performance on multiple-choice question (MCQ) tasks has improved significantly. However, existing approaches face key limitations: answer choices are typically presented to LLMs without contextual grounding or explanation. This absence of context can lead to incomplete exploration of all possible answers, ultimately degrading the models' reasoning capabilities. To address these challenges, we introduce BiasPrompting, a novel inference framework that guides LLMs to generate and critically evaluate reasoning across all plausible answer options before reaching a final prediction. It consists of two components: first, a reasoning generation stage, where the model is prompted to produce supportive reasonings for each answer option, and then, a reasoning-guided agreement stage, where the generated reasonings are synthesized to select the most plausible answer. Through comprehensive evaluations, BiasPrompting demonstrates significant improvements in five widely used multiple-choice question answering benchmarks. Our experiments showcase that BiasPrompting enhances the reasoning capabilities of LLMs and provides a strong foundation for tackling complex and challenging questions, particularly in settings where existing methods underperform.
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