ProfiLLM: An LLM-Based Framework for Implicit Profiling of Chatbot Users
Shahaf David, Yair Meidan, Ido Hersko, Daniel Varnovitzky, Dudu Mimran, Yuval Elovici, Asaf Shabtai

TL;DR
ProfiLLM introduces an LLM-based framework for implicit, dynamic user profiling in chatbots, enabling personalized responses in specialized domains like IT security by inferring user proficiency from ongoing interactions.
Contribution
The paper presents a novel, adaptable framework for implicit user profiling using LLMs, specifically tailored for dynamic personalization in knowledge-intensive domains.
Findings
ProfiLLM[ITSec] accurately infers user profiles within a few interactions.
The framework reduces profiling errors by up to 65%.
Demonstrates effectiveness in real chatbot conversations with synthetic users.
Abstract
Despite significant advancements in conversational AI, large language model (LLM)-powered chatbots often struggle with personalizing their responses according to individual user characteristics, such as technical expertise, learning style, and communication preferences. This lack of personalization is particularly problematic in specialized knowledge-intense domains like IT/cybersecurity (ITSec), where user knowledge levels vary widely. Existing approaches for chatbot personalization primarily rely on static user categories or explicit self-reported information, limiting their adaptability to an evolving perception of the user's proficiency, obtained in the course of ongoing interactions. In this paper, we propose ProfiLLM, a novel framework for implicit and dynamic user profiling through chatbot interactions. This framework consists of a taxonomy that can be adapted for use in diverse…
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Taxonomy
TopicsAI in Service Interactions · Misinformation and Its Impacts · Social Robot Interaction and HRI
