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In bot we trust: A new methodology of chatbot performance measures
Affiliation:1. Kozminski University, Jagiellonska 57/59, Warsaw, Poland;2. University of Social Sciences & Humanities, Chodakowska 19/31, Warsaw, Poland;3. University of Warsaw, Krakowskie Przedmieście 26/28, Warsaw, Poland;4. MIT Center for Collective Intelligence, 245 First Street, E94-1509 Cambridge, MA, U.S.A.;1. Hong Kong University, Faculty of Education, CETL, Hong Kong;2. Seinan Gakuin University, Japan;3. Kyushu Sangyo University, LERC, Japan;1. Department of Management & Marketing, The Hong Kong Polytechnic University, Kowloon, Hong Kong, China;2. Lingnan University, Office of Faculty of Business, Tuen Mun, Hong Kong, China;1. Department of Communication Sciences, University of Antwerp, Antwerp, Belgium;2. Wunderman Thompson, Antwerp, Belgium;3. Amsterdam School of Communication Research (ASCoR), University of Amsterdam, Netherlands
Abstract:Chatbots are used frequently in business to facilitate various processes, particularly those related to customer service and personalization. In this article, we propose novel methods of tracking human-chatbot interactions and measuring chatbot performance that take into consideration ethical concerns, particularly trust. Our proposed methodology links neuroscientific methods, text mining, and machine learning. We argue that trust is the focal point of successful human-chatbot interaction and assess how trust as a relevant category is being redefined with the advent of deep learning supported chatbots. We propose a novel method of analyzing the content of messages produced in human-chatbot interactions, using the Condor Tribefinder system we developed for text mining that is based on a machine learning classification engine. Our results will help build better social bots for interaction in business or commercial environments.
Keywords:Artificial intelligence  Chatbots  Chatbot performance  Human-computer interaction  Performance goals  Customer trust  Customer experience
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