Cargando…
The Effects of Health Care Chatbot Personas With Different Social Roles on the Client-Chatbot Bond and Usage Intentions: Development of a Design Codebook and Web-Based Study
BACKGROUND: The working alliance refers to an important relationship quality between health professionals and clients that robustly links to treatment success. Recent research shows that clients can develop an affective bond with chatbots. However, few research studies have investigated whether this...
Autores principales: | , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
JMIR Publications
2022
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9096656/ https://www.ncbi.nlm.nih.gov/pubmed/35475761 http://dx.doi.org/10.2196/32630 |
_version_ | 1784706026796220416 |
---|---|
author | Nißen, Marcia Rüegger, Dominik Stieger, Mirjam Flückiger, Christoph Allemand, Mathias v Wangenheim, Florian Kowatsch, Tobias |
author_facet | Nißen, Marcia Rüegger, Dominik Stieger, Mirjam Flückiger, Christoph Allemand, Mathias v Wangenheim, Florian Kowatsch, Tobias |
author_sort | Nißen, Marcia |
collection | PubMed |
description | BACKGROUND: The working alliance refers to an important relationship quality between health professionals and clients that robustly links to treatment success. Recent research shows that clients can develop an affective bond with chatbots. However, few research studies have investigated whether this perceived relationship is affected by the social roles of differing closeness a chatbot can impersonate and by allowing users to choose the social role of a chatbot. OBJECTIVE: This study aimed at understanding how the social role of a chatbot can be expressed using a set of interpersonal closeness cues and examining how these social roles affect clients’ experiences and the development of an affective bond with the chatbot, depending on clients’ characteristics (ie, age and gender) and whether they can freely choose a chatbot’s social role. METHODS: Informed by the social role theory and the social response theory, we developed a design codebook for chatbots with different social roles along an interpersonal closeness continuum. Based on this codebook, we manipulated a fictitious health care chatbot to impersonate one of four distinct social roles common in health care settings—institution, expert, peer, and dialogical self—and examined effects on perceived affective bond and usage intentions in a web-based lab study. The study included a total of 251 participants, whose mean age was 41.15 (SD 13.87) years; 57.0% (143/251) of the participants were female. Participants were either randomly assigned to one of the chatbot conditions (no choice: n=202, 80.5%) or could freely choose to interact with one of these chatbot personas (free choice: n=49, 19.5%). Separate multivariate analyses of variance were performed to analyze differences (1) between the chatbot personas within the no-choice group and (2) between the no-choice and the free-choice groups. RESULTS: While the main effect of the chatbot persona on affective bond and usage intentions was insignificant (P=.87), we found differences based on participants’ demographic profiles: main effects for gender (P=.04, η(p)(2)=0.115) and age (P<.001, η(p)(2)=0.192) and a significant interaction effect of persona and age (P=.01, η(p)(2)=0.102). Participants younger than 40 years reported higher scores for affective bond and usage intentions for the interpersonally more distant expert and institution chatbots; participants 40 years or older reported higher outcomes for the closer peer and dialogical-self chatbots. The option to freely choose a persona significantly benefited perceptions of the peer chatbot further (eg, free-choice group affective bond: mean 5.28, SD 0.89; no-choice group affective bond: mean 4.54, SD 1.10; P=.003, η(p)(2)=0.117). CONCLUSIONS: Manipulating a chatbot’s social role is a possible avenue for health care chatbot designers to tailor clients’ chatbot experiences using user-specific demographic factors and to improve clients’ perceptions and behavioral intentions toward the chatbot. Our results also emphasize the benefits of letting clients freely choose between chatbots. |
format | Online Article Text |
id | pubmed-9096656 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2022 |
publisher | JMIR Publications |
record_format | MEDLINE/PubMed |
spelling | pubmed-90966562022-05-13 The Effects of Health Care Chatbot Personas With Different Social Roles on the Client-Chatbot Bond and Usage Intentions: Development of a Design Codebook and Web-Based Study Nißen, Marcia Rüegger, Dominik Stieger, Mirjam Flückiger, Christoph Allemand, Mathias v Wangenheim, Florian Kowatsch, Tobias J Med Internet Res Original Paper BACKGROUND: The working alliance refers to an important relationship quality between health professionals and clients that robustly links to treatment success. Recent research shows that clients can develop an affective bond with chatbots. However, few research studies have investigated whether this perceived relationship is affected by the social roles of differing closeness a chatbot can impersonate and by allowing users to choose the social role of a chatbot. OBJECTIVE: This study aimed at understanding how the social role of a chatbot can be expressed using a set of interpersonal closeness cues and examining how these social roles affect clients’ experiences and the development of an affective bond with the chatbot, depending on clients’ characteristics (ie, age and gender) and whether they can freely choose a chatbot’s social role. METHODS: Informed by the social role theory and the social response theory, we developed a design codebook for chatbots with different social roles along an interpersonal closeness continuum. Based on this codebook, we manipulated a fictitious health care chatbot to impersonate one of four distinct social roles common in health care settings—institution, expert, peer, and dialogical self—and examined effects on perceived affective bond and usage intentions in a web-based lab study. The study included a total of 251 participants, whose mean age was 41.15 (SD 13.87) years; 57.0% (143/251) of the participants were female. Participants were either randomly assigned to one of the chatbot conditions (no choice: n=202, 80.5%) or could freely choose to interact with one of these chatbot personas (free choice: n=49, 19.5%). Separate multivariate analyses of variance were performed to analyze differences (1) between the chatbot personas within the no-choice group and (2) between the no-choice and the free-choice groups. RESULTS: While the main effect of the chatbot persona on affective bond and usage intentions was insignificant (P=.87), we found differences based on participants’ demographic profiles: main effects for gender (P=.04, η(p)(2)=0.115) and age (P<.001, η(p)(2)=0.192) and a significant interaction effect of persona and age (P=.01, η(p)(2)=0.102). Participants younger than 40 years reported higher scores for affective bond and usage intentions for the interpersonally more distant expert and institution chatbots; participants 40 years or older reported higher outcomes for the closer peer and dialogical-self chatbots. The option to freely choose a persona significantly benefited perceptions of the peer chatbot further (eg, free-choice group affective bond: mean 5.28, SD 0.89; no-choice group affective bond: mean 4.54, SD 1.10; P=.003, η(p)(2)=0.117). CONCLUSIONS: Manipulating a chatbot’s social role is a possible avenue for health care chatbot designers to tailor clients’ chatbot experiences using user-specific demographic factors and to improve clients’ perceptions and behavioral intentions toward the chatbot. Our results also emphasize the benefits of letting clients freely choose between chatbots. JMIR Publications 2022-04-27 /pmc/articles/PMC9096656/ /pubmed/35475761 http://dx.doi.org/10.2196/32630 Text en ©Marcia Nißen, Dominik Rüegger, Mirjam Stieger, Christoph Flückiger, Mathias Allemand, Florian v Wangenheim, Tobias Kowatsch. Originally published in the Journal of Medical Internet Research (https://www.jmir.org), 27.04.2022. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in the Journal of Medical Internet Research, is properly cited. The complete bibliographic information, a link to the original publication on https://www.jmir.org/, as well as this copyright and license information must be included. |
spellingShingle | Original Paper Nißen, Marcia Rüegger, Dominik Stieger, Mirjam Flückiger, Christoph Allemand, Mathias v Wangenheim, Florian Kowatsch, Tobias The Effects of Health Care Chatbot Personas With Different Social Roles on the Client-Chatbot Bond and Usage Intentions: Development of a Design Codebook and Web-Based Study |
title | The Effects of Health Care Chatbot Personas With Different Social Roles on the Client-Chatbot Bond and Usage Intentions: Development of a Design Codebook and Web-Based Study |
title_full | The Effects of Health Care Chatbot Personas With Different Social Roles on the Client-Chatbot Bond and Usage Intentions: Development of a Design Codebook and Web-Based Study |
title_fullStr | The Effects of Health Care Chatbot Personas With Different Social Roles on the Client-Chatbot Bond and Usage Intentions: Development of a Design Codebook and Web-Based Study |
title_full_unstemmed | The Effects of Health Care Chatbot Personas With Different Social Roles on the Client-Chatbot Bond and Usage Intentions: Development of a Design Codebook and Web-Based Study |
title_short | The Effects of Health Care Chatbot Personas With Different Social Roles on the Client-Chatbot Bond and Usage Intentions: Development of a Design Codebook and Web-Based Study |
title_sort | effects of health care chatbot personas with different social roles on the client-chatbot bond and usage intentions: development of a design codebook and web-based study |
topic | Original Paper |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9096656/ https://www.ncbi.nlm.nih.gov/pubmed/35475761 http://dx.doi.org/10.2196/32630 |
work_keys_str_mv | AT nißenmarcia theeffectsofhealthcarechatbotpersonaswithdifferentsocialrolesontheclientchatbotbondandusageintentionsdevelopmentofadesigncodebookandwebbasedstudy AT rueggerdominik theeffectsofhealthcarechatbotpersonaswithdifferentsocialrolesontheclientchatbotbondandusageintentionsdevelopmentofadesigncodebookandwebbasedstudy AT stiegermirjam theeffectsofhealthcarechatbotpersonaswithdifferentsocialrolesontheclientchatbotbondandusageintentionsdevelopmentofadesigncodebookandwebbasedstudy AT fluckigerchristoph theeffectsofhealthcarechatbotpersonaswithdifferentsocialrolesontheclientchatbotbondandusageintentionsdevelopmentofadesigncodebookandwebbasedstudy AT allemandmathias theeffectsofhealthcarechatbotpersonaswithdifferentsocialrolesontheclientchatbotbondandusageintentionsdevelopmentofadesigncodebookandwebbasedstudy AT vwangenheimflorian theeffectsofhealthcarechatbotpersonaswithdifferentsocialrolesontheclientchatbotbondandusageintentionsdevelopmentofadesigncodebookandwebbasedstudy AT kowatschtobias theeffectsofhealthcarechatbotpersonaswithdifferentsocialrolesontheclientchatbotbondandusageintentionsdevelopmentofadesigncodebookandwebbasedstudy AT nißenmarcia effectsofhealthcarechatbotpersonaswithdifferentsocialrolesontheclientchatbotbondandusageintentionsdevelopmentofadesigncodebookandwebbasedstudy AT rueggerdominik effectsofhealthcarechatbotpersonaswithdifferentsocialrolesontheclientchatbotbondandusageintentionsdevelopmentofadesigncodebookandwebbasedstudy AT stiegermirjam effectsofhealthcarechatbotpersonaswithdifferentsocialrolesontheclientchatbotbondandusageintentionsdevelopmentofadesigncodebookandwebbasedstudy AT fluckigerchristoph effectsofhealthcarechatbotpersonaswithdifferentsocialrolesontheclientchatbotbondandusageintentionsdevelopmentofadesigncodebookandwebbasedstudy AT allemandmathias effectsofhealthcarechatbotpersonaswithdifferentsocialrolesontheclientchatbotbondandusageintentionsdevelopmentofadesigncodebookandwebbasedstudy AT vwangenheimflorian effectsofhealthcarechatbotpersonaswithdifferentsocialrolesontheclientchatbotbondandusageintentionsdevelopmentofadesigncodebookandwebbasedstudy AT kowatschtobias effectsofhealthcarechatbotpersonaswithdifferentsocialrolesontheclientchatbotbondandusageintentionsdevelopmentofadesigncodebookandwebbasedstudy |