Bridging UI Design and chatbot Interactions: Applying Form-Based Principles to Conversational Agents
Abstract
Domain specific chatbot applications often involve multi step interactions, such as refining search filters, selecting multiple items, or performing comparisons. Traditional graphical user interfaces (GUIs) handle these workflows by providing explicit "Submit" (commit data) and "Reset" (discard data) actions, allowing back-end systems to track user intent unambiguously. In contrast, conversational agents rely on subtle language cues, which can lead to confusion and incomplete context management. This paper proposes modeling these GUI inspired metaphors acknowledgment (submit like) and context switching (reset-like) as explicit tasks within large language model (LLM) prompts. By capturing user acknowledgment, reset actions, and chain of thought (CoT) reasoning as structured session data, we preserve clarity, reduce user confusion, and align domain-specific chatbot interactions with back-end logic. We demonstrate our approach in hotel booking and customer management scenarios, highlighting improvements in multi-turn task coherence, user satisfaction, and efficiency.
Cite
@article{arxiv.2507.01862,
title = {Bridging UI Design and chatbot Interactions: Applying Form-Based Principles to Conversational Agents},
author = {Sanjay Krishna Anbalagan and Xinrui Nie and Umesh Mohan and Vijay Kumar Kanamarlapudi and Anughna Kommalapati and Xiaodan Zhao},
journal= {arXiv preprint arXiv:2507.01862},
year = {2025}
}
Comments
8 pages, 1 figure, pre-print of poster accepted for HCI International 2025 (HCII 2025), CCIS vol 2529