The content discusses the challenges in user modeling for interactive AI assistant systems. Key points:
Interactive AI assistants are designed to guide users through complex tasks, but one of the main challenges is understanding the user's mental states, such as frustration, familiarity with the task, detail-orientation, etc. to provide personalized guidance.
The authors extended the WTaG dataset to incorporate 6 categories of user mental profiles (frustration, eagerness to ask questions, talkativeness, experience, familiarity with tools, and detail-orientation) during task execution.
Analysis of the dataset revealed that users exhibit different levels of consistency across the user profile categories, suggesting the need for AI assistants to adapt their guidance based on both user-specific traits and task-specific factors.
The authors investigated the performance of the ChatGPT language model in predicting the user mental states from the dialog history. The results showed that the model performed well in detecting "detail-oriented", "eager to ask questions", and "talkative" users, but struggled with accurately identifying "frustrated" users and understanding users' task-related experience.
The authors conclude that significant improvements are needed in user modeling capabilities of large language models to enable interactive AI assistants to better accommodate users' personalized needs and improve task completion outcomes.
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arxiv.org
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