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青少年对心理健康聊天机器人所设计问题的情绪反应及回应可能性:实验研究

Emotional Reactions and Likelihood of Response to Questions Designed for a Mental Health Chatbot Among Adolescents: Experimental Study.

作者信息

Mariamo Audrey, Temcheff Caroline Elizabeth, Léger Pierre-Majorique, Senecal Sylvain, Lau Marianne Alexandra

机构信息

Department of Educational and Counselling Psychology, McGill University, Montreal, QC, Canada.

Department of Information Technologies, HEC Montreal, Montreal, QC, Canada.

出版信息

JMIR Hum Factors. 2021 Mar 18;8(1):e24343. doi: 10.2196/24343.

Abstract

BACKGROUND

Psychological distress increases across adolescence and has been associated with several important health outcomes with consequences that can extend into adulthood. One type of technological innovation that may serve as a unique intervention for youth experiencing psychological distress is the conversational agent, otherwise known as a chatbot. Further research is needed on the factors that may make mental health chatbots destined for adolescents more appealing and increase the likelihood that adolescents will use them.

OBJECTIVE

The aim of this study was to assess adolescents' emotional reactions and likelihood of responding to questions that could be posed by a mental health chatbot. Understanding adolescent preferences and factors that could increase adolescents' likelihood of responding to chatbot questions could assist in future mental health chatbot design destined for youth.

METHODS

We recruited 19 adolescents aged 14 to 17 years to participate in a study with a 2×2×3 within-subjects factorial design. Each participant was sequentially presented with 96 chatbot questions for a duration of 8 seconds per question. Following each presentation, participants were asked to indicate how likely they were to respond to the question, as well as their perceived affective reaction to the question. Demographic data were collected, and an informal debriefing was conducted with each participant.

RESULTS

Participants were an average of 15.3 years old (SD 1.00) and mostly female (11/19, 58%). Logistic regressions showed that the presence of GIFs predicted perceived emotional valence (β=-.40, P<.001), such that questions without GIFs were associated with a negative perceived emotional valence. Question type predicted emotional valence, such that yes/no questions (β=-.23, P=.03) and open-ended questions (β=-.26, P=.01) were associated with a negative perceived emotional valence compared to multiple response choice questions. Question type also predicted the likelihood of response, such that yes/no questions were associated with a lower likelihood of response compared to multiple response choice questions (β=-.24, P=.03) and a higher likelihood of response compared to open-ended questions (β=.54, P<.001).

CONCLUSIONS

The findings of this study add to the rapidly growing field of teen-computer interaction and contribute to our understanding of adolescent user experience in their interactions with a mental health chatbot. The insights gained from this study may be of assistance to developers and designers of mental health chatbots.

摘要

背景

心理困扰在整个青春期都会增加,并且与一些重要的健康结果相关,其影响可能会延续到成年期。一种可能作为经历心理困扰的青少年独特干预措施的技术创新是对话代理,也就是聊天机器人。对于可能使面向青少年的心理健康聊天机器人更具吸引力并增加青少年使用它们可能性的因素,还需要进一步研究。

目的

本研究的目的是评估青少年对心理健康聊天机器人可能提出的问题的情绪反应和回答可能性。了解青少年的偏好以及可能增加青少年回答聊天机器人问题可能性的因素,有助于未来面向青少年的心理健康聊天机器人设计。

方法

我们招募了19名年龄在14至17岁之间的青少年参与一项采用2×2×3被试内因子设计的研究。每个参与者依次被呈现96个聊天机器人问题,每个问题持续8秒。每次呈现后,要求参与者指出他们回答该问题的可能性,以及他们对该问题的感知情感反应。收集了人口统计学数据,并与每位参与者进行了非正式的汇报。

结果

参与者的平均年龄为15.3岁(标准差1.00),大多数为女性(11/19,58%)。逻辑回归显示,动图的存在预测了感知到的情感效价(β = -0.40,P <.001),即没有动图的问题与负面的感知情感效价相关。问题类型预测了情感效价,与多项选择问题相比,是/否问题(β = -0.23,P =.03)和开放式问题(β = -0.26,P =.01)与负面的感知情感效价相关。问题类型还预测了回答的可能性,与多项选择问题相比,是/否问题回答的可能性较低(β = -0.24,P =.03),与开放式问题相比回答的可能性较高(β = 0.54,P <.001)。

结论

本研究的结果为快速发展的青少年与计算机交互领域增添了内容,并有助于我们理解青少年在与心理健康聊天机器人交互中的用户体验。本研究获得的见解可能对心理健康聊天机器人的开发者和设计者有所帮助。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4eb5/8080266/fc1844da4474/humanfactors_v8i1e24343_fig1.jpg

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