CommunityBots: Creating and Evaluating A Multi-Agent Chatbot Platform for Public Input Elicitation

Author:

Jiang Zhiqiu1ORCID,Rashik Mashrur1ORCID,Panchal Kunjal1ORCID,Jasim Mahmood1ORCID,Sarvghad Ali1ORCID,Riahi Pari1ORCID,DeWitt Erica2ORCID,Thurber Fey1ORCID,Mahyar Narges1ORCID

Affiliation:

1. University of Massachusetts Amherst, Amherst, MA, USA

2. University of Massachusetts, Amherst, Amherst, MA, USA

Abstract

In recent years, the popularity of AI-enabled conversational agents or chatbots has risen as an alternative to traditional online surveys to elicit information from people. However, there is a gap in using single-agent chatbots to converse and gather multi-faceted information across a wide variety of topics. Prior works suggest that single-agent chatbots struggle to understand user intentions and interpret human language during a multi-faceted conversation. In this work, we investigated how multi-agent chatbot systems can be utilized to conduct a multi-faceted conversation across multiple domains. To that end, we conducted a Wizard of Oz study to investigate the design of a multi-agent chatbot for gathering public input across multiple high-level domains and their associated topics. Next, we designed, developed, and evaluated CommunityBots - a multi-agent chatbot platform where each chatbot handles a different domain individually. To manage conversation across multiple topics and chatbots, we proposed a novel Conversation and Topic Management (CTM) mechanism that handles topic-switching and chatbot-switching based on user responses and intentions. We conducted a between-subject study comparing CommunityBots to a single-agent chatbot baseline with 96 crowd workers. The results from our evaluation demonstrate that CommunityBots participants were significantly more engaged, provided higher quality responses, and experienced fewer conversation interruptions while conversing with multiple different chatbots in the same session. We also found that the visual cues integrated with the interface helped the participants better understand the functionalities of the CTM mechanism, which enabled them to perceive changes in textual conversation, leading to better user satisfaction. Based on the empirical insights from our study, we discuss future research avenues for multi-agent chatbot design and its application for rich information elicitation.

Funder

NSF

Center for Data Science UMass Amherst

Collaborative Research Seed Grants UMass Amherst

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications,Human-Computer Interaction,Social Sciences (miscellaneous)

Reference129 articles.

1. 2005--2018. Amazon Mechanical Turk. Retrieved Oct 1, 2021 from https://www.mturk.com/worker/help 2005--2018. Amazon Mechanical Turk. Retrieved Oct 1, 2021 from https://www.mturk.com/worker/help

2. 2022. Centers for Disease Control and Prevention. Retrieved Dec 1, 2021 from https://www.cdc.gov/ 2022. Centers for Disease Control and Prevention. Retrieved Dec 1, 2021 from https://www.cdc.gov/

3. 2022. Cloud Firestore - Firebase. Retrieved Sep 1, 2021 from https://firebase.google.com/products/firestore 2022. Cloud Firestore - Firebase. Retrieved Sep 1, 2021 from https://firebase.google.com/products/firestore

4. 2022. Codebrewer. Retrieved Dec 1 2021 from https://colorbrewer2.org 2022. Codebrewer. Retrieved Dec 1 2021 from https://colorbrewer2.org

5. 2022. Dialogflow. Retrieved Dec 1 2021 from https://cloud.google.com/dialogflow 2022. Dialogflow. Retrieved Dec 1 2021 from https://cloud.google.com/dialogflow

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