Measuring Agreeableness Bias in Multimodal Models

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Authors Jaehyuk Lim, Bruce W. Lee arXiv ID 2408.09111 Category cs.AI: Artificial Intelligence Cross-listed cs.CL, cs.CV, cs.HC Citations 2 Last Checked 4 months ago
Abstract
This paper examines a phenomenon in multimodal language models where pre-marked options in question images can significantly influence model responses. Our study employs a systematic methodology to investigate this effect: we present models with images of multiple-choice questions, which they initially answer correctly, then expose the same model to versions with pre-marked options. Our findings reveal a significant shift in the models' responses towards the pre-marked option, even when it contradicts their answers in the neutral settings. Comprehensive evaluations demonstrate that this agreeableness bias is a consistent and quantifiable behavior across various model architectures. These results show potential limitations in the reliability of these models when processing images with pre-marked options, raising important questions about their application in critical decision-making contexts where such visual cues might be present.
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