Challenges and opportunities in using interpretable AI to develop relationship interventions

IF 1.7 3区 社会学 Q2 FAMILY STUDIES
Daniel J. Puhlman, Chaofan Chen
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引用次数: 0

Abstract

Objective

Although still in its infancy, research shows promise that artificial intelligence (AI) models can be integrated into relationship interventions, and the potential benefits are substantial. This article articulates the challenges and opportunities for developing relationship interventions that integrate AI.

Background

After defining AI and differentiating machine learning from deep learning, we review the key concepts and strategies related to AI, specifically natural language processing, interpretability, and human-in-the-loop strategies, as key approaches needed to develop AI models that can be integrated into interventions.

Method

We explore how AI is currently integrated into family life and explore the literature that has served as the foundation for further integrating AI into interventions. The use of AI in therapy contexts is examined, and we identify key ethical challenges that need to be addressed as this technology develops.

Results

We examine the key challenges and opportunities for using AI, specifically focusing on four key areas: diagnosis of relationship problems, providing autonomous treatment, predicting successful treatment outcomes (prognosis), and using biomarkers to monitor client reactions. Opportunities explored include the development of data-efficient AI training methods, creating interpretable AI models focused on relationships, the integration of clinical expertise during model development, and combining biomarker data with other modalities.

Conclusion

Despite the obstacles, integrating AI into interventions has the potential to provide families with personalized support to strengthen bonds and overcome relational challenges.

Implications

This emerging intersection of AI and family science can pioneer innovative solutions for diverse relationship needs.

利用可解释人工智能发展关系干预的挑战和机遇
尽管仍处于起步阶段,但研究表明,人工智能(AI)模型可以整合到关系干预中,潜在的好处是巨大的。本文阐述了发展整合人工智能的关系干预的挑战和机遇。在定义了人工智能并将机器学习与深度学习区分开来之后,我们回顾了与人工智能相关的关键概念和策略,特别是自然语言处理、可解释性和人在环策略,作为开发可集成到干预措施中的人工智能模型所需的关键方法。方法探讨人工智能目前如何融入家庭生活,并探索作为进一步将人工智能融入干预措施基础的文献。研究了人工智能在治疗背景下的使用,并确定了随着这项技术的发展需要解决的关键伦理挑战。我们研究了使用人工智能的主要挑战和机遇,特别关注四个关键领域:关系问题的诊断,提供自主治疗,预测成功的治疗结果(预后),以及使用生物标志物监测客户反应。探索的机会包括开发数据高效的人工智能训练方法,创建专注于关系的可解释人工智能模型,在模型开发过程中整合临床专业知识,以及将生物标志物数据与其他模式相结合。尽管存在障碍,但将人工智能纳入干预措施有可能为家庭提供个性化支持,以加强联系并克服关系挑战。人工智能和家庭科学的新兴交叉点可以为不同的关系需求提供创新的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Family Relations
Family Relations Multiple-
CiteScore
3.40
自引率
13.60%
发文量
164
期刊介绍: A premier, applied journal of family studies, Family Relations is mandatory reading for family scholars and all professionals who work with families, including: family practitioners, educators, marriage and family therapists, researchers, and social policy specialists. The journal"s content emphasizes family research with implications for intervention, education, and public policy, always publishing original, innovative and interdisciplinary works with specific recommendations for practice.
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