In computing, the aim of personalization is to train a model that caters to a specific individual or group of people by optimizing one or more performance metrics and adhering to specific constraints. In this paper, we discuss the need for personalization in affective and personality computing (hereinafter referred to as affective computing). We present a survey of state-of-the-art approaches for personalization in affective computing. Our review spans training techniques and objectives towards the personalization of affective computing models. We group existing approaches into seven categories: (1) Target-specific Models, (2) Group-specific Models, (3) Weighting-based Approaches, (4) Fine-tuning Approaches, (5) Multitask Learning, (6) Generative-based Models, and (7) Feature Augmentation. Additionally, we provide a statistical meta-analysis of the surveyed literature, analyzing the prevalence of different affective computing tasks, interaction modes, interaction contexts, and the level of personalization among the surveyed works. Based on that, we provide a road-map for those who are interested in exploring this direction.
翻译:在计算机领域中,个性化的目的是通过优化一个或多个性能指标并遵守特定的限制来训练适用于特定个体或群体的模型。在本文中,我们讨论了情感和个性计算(下称情感计算)中个性化的需求。我们对个性化情感计算的最新方法进行了调查。我们的调查涵盖了个性化情感计算模型的训练技术和目标。我们将现有的方法分成七类:(1)目标特定模型,(2)群体特定模型,(3)基于加权的方法,(4)微调方法,(5)多任务学习,(6)生成模型和(7)特征增强。此外,我们提供了对调查文献的统计元分析,分析了不同情感计算任务、交互模式、交互背景和调查工作的个性化水平的普遍性。在此基础上,我们为那些希望探究该方向的人提供了一条路线图。