Please use this identifier to cite or link to this item: http://hdl.handle.net/11718/24486
Title: Finding improvement areas in human-chatbot conversation experience by isolating limitations to learning and context: a quantitative and qualitative study
Authors: Singh, Tanmay
Keywords: Chatbot;Virtual assistant;Deployment;Entities;Intents;Slots;Turing test;Discourse;User-preferences
Issue Date: 2020
Publisher: Indian Institute of Management Ahmedabad
Abstract: Chatbots are becoming increasingly common recently, and everyone is in a hurry to get their own. Organizations use them to alleviate workload and improve services. At the same time, individuals and content creators who are making a living out of the Web 2.0 and social media phenomena can utilize them for audience engagement and click-through rates. Tech-giants such as Facebook, Google, Microsoft, IBM all have their version of AI-based virtual assistants and chatbot frameworks. With the current popularity and vast scope, chatbots deserve an in-depth study of their application, implementation, and interactions to clear a path for their normalization, so they do not end up like Sony’s Betamax, the apparent superior technology that lost to the VHS videotape format, i.e., the rule-based chatbots winning over superior AI technology. In the following study, we try to sum up the different factors in building, selecting, and training a chatbot, and how users perceive them.
URI: http://hdl.handle.net/11718/24486
Appears in Collections:Student Projects

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