Debiasing Large Language Models toward Social Factors in Online Behavior Analytics through Prompt Knowledge Tuning
Hossein Salemi, Jitin Krishnan, Hemant Purohit

TL;DR
This paper proposes a prompt-based method to reduce social attribution bias in large language models during social media behavior analysis, improving accuracy across multiple tasks and languages.
Contribution
It introduces a scalable prompt knowledge tuning approach that mitigates social attribution bias in LLMs for behavior analytics tasks.
Findings
Method reduces social attribution bias in LLMs.
Improves zero-shot classification performance on intent and theme detection.
Effective across multiple LLMs and languages.
Abstract
Attribution theory explains how individuals interpret and attribute others' behavior in a social context by employing personal (dispositional) and impersonal (situational) causality. Large Language Models (LLMs), trained on human-generated corpora, may implicitly mimic this social attribution process in social contexts. However, the extent to which LLMs utilize these causal attributions in their reasoning remains underexplored. Although using reasoning paradigms, such as Chain-of-Thought (CoT), has shown promising results in various tasks, ignoring social attribution in reasoning could lead to biased responses by LLMs in social contexts. In this study, we investigate the impact of incorporating a user's goal as knowledge to infer dispositional causality and message context to infer situational causality on LLM performance. To this end, we introduce a scalable method to mitigate such…
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