API Face Value

Austin Wyman, Zhiyong Zhang
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Abstract

Emotion recognition application programming interface (API) is a recent advancement in computing technology that synthesizes computer vision, machine-learning algorithms, deep-learning neural networks, and other information to detect and label human emotions. The strongest iterations of this technology are produced by technology giants with large, cloud infrastructure (i.e., Google, and Microsoft), bolstering high true positive rates. We review the current status of applications of emotion recognition API in psychological research and find that, despite evidence of spatial, age, and race bias effects, API is improving the accessibility of clinical and educational research. Specifically, emotion detection software can assist individuals with emotion-related deficits (e.g., Autism Spectrum Disorder, Attention Deficit-Hyperactivity Disorder, Alexithymia). API has been incorporated in various computer-assisted interventions for Autism, where it has been used to diagnose, train, and monitor emotional responses to one's environment. We identify AP's potential to enhance interventions in other emotional dysfunction populations and to address various professional needs. Future work should aim to address the bias limitations of API software and expand its utility in subfields of clinical, educational, neurocognitive, and industrial-organizational psychology.
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API面值
情绪识别应用编程接口(API)是计算技术的最新进展,它综合了计算机视觉、机器学习算法、深度学习神经网络和其他信息来检测和标记人类情绪。这项技术的最强迭代是由拥有大型云基础设施的科技巨头(即谷歌和微软)生产的,从而提高了高真阳性率。我们回顾了情感识别API在心理学研究中的应用现状,发现尽管有证据表明存在空间、年龄和种族偏见效应,但API正在提高临床和教育研究的可及性。具体而言,情绪检测软件可以帮助患有情绪相关缺陷的个体(例如,自闭症谱系障碍、注意力缺陷多动障碍、述情障碍)。API已被纳入自闭症的各种计算机辅助干预措施中,用于诊断、训练和监测对环境的情绪反应。我们确定AP在加强对其他情绪功能障碍人群的干预和满足各种专业需求方面的潜力。未来的工作应旨在解决API软件的偏见限制,并扩大其在临床、教育、神经认知和工业组织心理学子领域的实用性。
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