提高移情的准确性:纠正情感感知错位的惩罚性功能对齐法

Linh H Nghiem, Jing Cao, Chul Moon
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引用次数: 0

摘要

移情准确度(EA)是指一个人准确理解另一个人的想法和感受的能力,这对于社会和心理互动至关重要。传统上,共情准确度是通过比较感知者对情绪状态的实时评价和目标对象的自我评价来衡量的。然而,这些分析通常会忽略或简化评分之间的配准(例如假设一个固定的延迟),从而导致EA测量的偏差。我们引入了一种新的对齐方法,它能适应多种错位模式,使用平方根速度表示法将评分分解为振幅和相位成分。此外,我们还加入了一个正则化项,通过将时间偏移限制在合理的人类感知范围内来防止过度对齐。整体配准方法通过受限动态编程算法有效实现。我们通过对视频和音乐数据集的模拟和实际应用,证明了我们的方法性能优越。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Empathic Accuracy: Penalized Functional Alignment Method to Correct Misalignment in Emotional Perception
Empathic accuracy (EA) is the ability of one person to accurately understand thoughts and feelings of another person, which is crucial for social and psychological interactions. Traditionally, EA is measured by comparing perceivers` real-time ratings of emotional states with the target`s self--evaluation. However, these analyses often ignore or simplify misalignments between ratings (such as assuming a fixed delay), leading to biased EA measures. We introduce a novel alignment method that accommodates diverse misalignment patterns, using the square--oot velocity representation to decompose ratings into amplitude and phase components. Additionally, we incorporate a regularization term to prevent excessive alignment by constraining temporal shifts within plausible human perception bounds. The overall alignment method is implemented effectively through a constrained dynamic programming algorithm. We demonstrate the superior performance of our method through simulations and real-world applications to video and music datasets.
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