Customizable LLM-Powered Chatbot for Behavioral Science Research
- URL: http://arxiv.org/abs/2501.05541v3
- Date: Sun, 02 Feb 2025 20:04:51 GMT
- Title: Customizable LLM-Powered Chatbot for Behavioral Science Research
- Authors: Zenon Lamprou, Yashar Moshfeghi,
- Abstract summary: Large Language Models (LLMs) produce text that closely resembles human communication.
The potential utility of chatbots transcends traditional applications, particularly in research contexts.
In this study, we present a Customizable LLM-Powered (CLPC) system designed to assist in behavioral science research.
- Score: 6.084958172018792
- License:
- Abstract: The rapid advancement of Artificial Intelligence has resulted in the advent of Large Language Models (LLMs) with the capacity to produce text that closely resembles human communication. These models have been seamlessly integrated into diverse applications, enabling interactive and responsive communication across multiple platforms. The potential utility of chatbots transcends these traditional applications, particularly in research contexts, wherein they can offer valuable insights and facilitate the design of innovative experiments. In this study, we present a Customizable LLM-Powered Chatbot (CLPC), a web-based chatbot system designed to assist in behavioral science research. The system is meticulously designed to function as an experimental instrument rather than a conventional chatbot, necessitating users to input a username and experiment code upon access. This setup facilitates precise data cross-referencing, thereby augmenting the integrity and applicability of the data collected for research purposes. It can be easily expanded to accommodate new basic events as needed; and it allows researchers to integrate their own logging events without the necessity of implementing a separate logging mechanism. It is worth noting that our system was built to assist primarily behavioral science research but is not limited to it, it can easily be adapted to assist information retrieval research or interacting with chat bot agents in general.
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