Aligning VLM Assistants with Personalized Situated Cognition
Abstract
A framework called PCogAlign constructs a reward model for aligning vision-language models with personalized situated cognition, using a benchmark with varied Role-Sets.
Vision-language models (VLMs) aligned with general human objectives, such as being harmless and hallucination-free, have become valuable assistants of humans in managing visual tasks. However, people with diversified backgrounds have different cognition even in the same situation. Consequently, they may have personalized expectations for VLM assistants. This highlights the urgent need to align VLM assistants with personalized situated cognition for real-world assistance. To study this problem, we first simplify it by characterizing individuals based on the sociological concept of Role-Set. Then, we propose to evaluate the individuals' actions to examine whether the personalized alignment is achieved. Further, we construct a benchmark named PCogAlignBench, which includes 18k instances and 20 individuals with different Role-Sets. Finally, we present a framework called PCogAlign, which constructs a cognition-aware and action-based reward model for personalized alignment. Experimental results and human evaluations demonstrate the reliability of the PCogAlignBench and the effectiveness of our proposed PCogAlign. We will open-source the constructed benchmark and code at https://github.com/NLPGM/PCogAlign.
Community
Hi, we’re excited to share our ACL 2025 main conference paper: Aligning VLM Assistants with Personalized Situated Cognition.
In this work, we propose a new task: aligning VLM assistants with personalized situated cognition, aiming to adapt models to individual users' cognitive differences in real-world visual tasks. To support this, we introduce PCogAlignBench, a benchmark with 18k instances and 20 diverse individuals based on the sociological concept of Role-Set. We also propose PCogAlign, a cognition-aware reward framework for personalized alignment. Experimental results demonstrate its effectiveness in capturing individual expectations.
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