Task Supportive And Personalized Human-large Language Model Interaction: A User Study · The Large Language Model Bible Contribute to LLM-Bible

Task Supportive And Personalized Human-large Language Model Interaction: A User Study

Wang Ben, Liu Jiqun, Karimnazarov Jamshed, Thompson Nicolas. Proceedings of the 2024

[Paper]    
Applications Ethics And Bias GPT Interpretability And Explainability Model Architecture Prompting Reinforcement Learning Tools

Large language model (LLM) applications, such as ChatGPT, are a powerful tool for online information-seeking (IS) and problem-solving tasks. However, users still face challenges initializing and refining prompts, and their cognitive barriers and biased perceptions further impede task completion. These issues reflect broader challenges identified within the fields of IS and interactive information retrieval (IIR). To address these, our approach integrates task context and user perceptions into human-ChatGPT interactions through prompt engineering. We developed a ChatGPT-like platform integrated with supportive functions, including perception articulation, prompt suggestion, and conversation explanation. Our findings of a user study demonstrate that the supportive functions help users manage expectations, reduce cognitive loads, better refine prompts, and increase user engagement. This research enhances our comprehension of designing proactive and user-centric systems with LLMs. It offers insights into evaluating human-LLM interactions and emphasizes potential challenges for under served users.

Similar Work