ACL2025

Blinded by Context: Unveiling the Halo Effect of MLLM in AI Hiring

Kyusik Kim, Jeongwoo Ryu, Hyeonseok Jeon, Bongwon Suh

Abstract

This study investigates the halo effect in AIdriven hiring evaluations using Large Language Models (LLMs) and Multimodal Large Language Models (MLLMs). Through experiments with hypothetical job applications, we examined how these models' evaluations are influenced by non-job-related information, including extracurricular activities and social media images. By analyzing models' responses to Likert-scale questions across different competency dimensions, we found that AI models exhibit significant halo effects, particularly in image-based evaluations, while text-based assessments showed more resistance to bias. The findings demonstrate that supplementary multimodal information can substantially influence AI hiring decisions, highlighting potential risks in AI-based recruitment systems.