aisel.aisnet.org/wi2024/71

Preview meta tags from the aisel.aisnet.org website.

Linked Hostnames

7

Search Engine Appearance

Google

https://aisel.aisnet.org/wi2024/71

“Was this answer helpful?” – A Taxonomy for Feedback Mechanisms in Customer Service Chatbots

Chatbot technology has rapidly spread, especially in digital customer service. However, the automation potential of chatbots can only be realized if customers are satisfied with their service. Collecting explicit feedback is a promising technique for assessing customer satisfaction and identifying issues with the chatbot. It enables chatbot managers and developers to enhance performance and design of operational chatbots on an informed basis. The evident significance of explicit customer feedback comes with a multitude of design options available. However, there is a lack of research on chatbot feedback mechanisms and practical as well as theoretical clarity. In this paper, we adress this gap by introducing a chatbot feedback taxonomy derived from existing research and a sample of N = 72 real world customer service chatbots. Furthermore, based on a cluster analysis, we identify four archetypes of feedback mechanisms and provide strategic guidelines for the informed use of each of those feedback design variants.



Bing

“Was this answer helpful?” – A Taxonomy for Feedback Mechanisms in Customer Service Chatbots

https://aisel.aisnet.org/wi2024/71

Chatbot technology has rapidly spread, especially in digital customer service. However, the automation potential of chatbots can only be realized if customers are satisfied with their service. Collecting explicit feedback is a promising technique for assessing customer satisfaction and identifying issues with the chatbot. It enables chatbot managers and developers to enhance performance and design of operational chatbots on an informed basis. The evident significance of explicit customer feedback comes with a multitude of design options available. However, there is a lack of research on chatbot feedback mechanisms and practical as well as theoretical clarity. In this paper, we adress this gap by introducing a chatbot feedback taxonomy derived from existing research and a sample of N = 72 real world customer service chatbots. Furthermore, based on a cluster analysis, we identify four archetypes of feedback mechanisms and provide strategic guidelines for the informed use of each of those feedback design variants.



DuckDuckGo

https://aisel.aisnet.org/wi2024/71

“Was this answer helpful?” – A Taxonomy for Feedback Mechanisms in Customer Service Chatbots

Chatbot technology has rapidly spread, especially in digital customer service. However, the automation potential of chatbots can only be realized if customers are satisfied with their service. Collecting explicit feedback is a promising technique for assessing customer satisfaction and identifying issues with the chatbot. It enables chatbot managers and developers to enhance performance and design of operational chatbots on an informed basis. The evident significance of explicit customer feedback comes with a multitude of design options available. However, there is a lack of research on chatbot feedback mechanisms and practical as well as theoretical clarity. In this paper, we adress this gap by introducing a chatbot feedback taxonomy derived from existing research and a sample of N = 72 real world customer service chatbots. Furthermore, based on a cluster analysis, we identify four archetypes of feedback mechanisms and provide strategic guidelines for the informed use of each of those feedback design variants.

  • General Meta Tags

    26
    • title
      "“Was this answer helpful?” – A Taxonomy for Feedback Mechanisms in Cus" by Daniel Schloß, Saskia Haug et al.
    • charset
      utf-8
    • viewport
      width=device-width
    • article:author
      Daniel Schloß
    • author
      Daniel Schloß
  • Open Graph Meta Tags

    5
    • og:title
      “Was this answer helpful?” – A Taxonomy for Feedback Mechanisms in Customer Service Chatbots
    • og:description
      Chatbot technology has rapidly spread, especially in digital customer service. However, the automation potential of chatbots can only be realized if customers are satisfied with their service. Collecting explicit feedback is a promising technique for assessing customer satisfaction and identifying issues with the chatbot. It enables chatbot managers and developers to enhance performance and design of operational chatbots on an informed basis. The evident significance of explicit customer feedback comes with a multitude of design options available. However, there is a lack of research on chatbot feedback mechanisms and practical as well as theoretical clarity. In this paper, we adress this gap by introducing a chatbot feedback taxonomy derived from existing research and a sample of N = 72 real world customer service chatbots. Furthermore, based on a cluster analysis, we identify four archetypes of feedback mechanisms and provide strategic guidelines for the informed use of each of those feedback design variants.
    • og:type
      article
    • og:url
      https://aisel.aisnet.org/wi2024/71
    • og:site_name
      AIS Electronic Library (AISeL)
  • Twitter Meta Tags

    3
    • twitter:title
      “Was this answer helpful?” – A Taxonomy for Feedback Mechanisms in Customer Service Chatbots
    • twitter:description
      Chatbot technology has rapidly spread, especially in digital customer service. However, the automation potential of chatbots can only be realized if customers are satisfied with their service. Collecting explicit feedback is a promising technique for assessing customer satisfaction and identifying issues with the chatbot. It enables chatbot managers and developers to enhance performance and design of operational chatbots on an informed basis. The evident significance of explicit customer feedback comes with a multitude of design options available. However, there is a lack of research on chatbot feedback mechanisms and practical as well as theoretical clarity. In this paper, we adress this gap by introducing a chatbot feedback taxonomy derived from existing research and a sample of N = 72 real world customer service chatbots. Furthermore, based on a cluster analysis, we identify four archetypes of feedback mechanisms and provide strategic guidelines for the informed use of each of those feedback design variants.
    • twitter:card
      summary
  • Item Prop Meta Tags

    2
    • name
      “Was this answer helpful?” – A Taxonomy for Feedback Mechanisms in Customer Service Chatbots
    • description
      Chatbot technology has rapidly spread, especially in digital customer service. However, the automation potential of chatbots can only be realized if customers are satisfied with their service. Collecting explicit feedback is a promising technique for assessing customer satisfaction and identifying issues with the chatbot. It enables chatbot managers and developers to enhance performance and design of operational chatbots on an informed basis. The evident significance of explicit customer feedback comes with a multitude of design options available. However, there is a lack of research on chatbot feedback mechanisms and practical as well as theoretical clarity. In this paper, we adress this gap by introducing a chatbot feedback taxonomy derived from existing research and a sample of N = 72 real world customer service chatbots. Furthermore, based on a cluster analysis, we identify four archetypes of feedback mechanisms and provide strategic guidelines for the informed use of each of those feedback design variants.
  • Link Tags

    9
    • alternate
      /recent.rss
    • shortcut icon
      /favicon.ico
    • stylesheet
      /ir-style.css
    • stylesheet
      /ir-custom.css
    • stylesheet
      ../ir-custom.css

Links

37