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Recovering Individual Emotional States from Sparse Ratings Using Collaborative Filtering

机译:使用协作过滤从稀疏评级中恢复个人情绪状态

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摘要

A fundamental challenge in emotion research is measuring feeling states with high granularity and temporal precision without disrupting the emotion generation process. Here we introduce and validate a new approach in which responses are sparsely sampled and the missing data are recovered using a computational technique known as collaborative filtering (CF). This approach leverages structured covariation across individual experiences and is available in Neighbors, an open-source Python toolbox. We validate our approach across three different experimental contexts by recovering dense individual ratings using only a small subset of the original data. In dataset 1, participants (n=316) separately rated 112 emotional images on 6 different discrete emotions. In dataset 2, participants (n=203) watched 8 short emotionally engaging autobiographical stories while simultaneously providing moment-by-moment ratings of the intensity of their affective experience. In dataset 3, participants (n=60) with distinct social preferences made 76 decisions about how much money to return in a hidden multiplier trust game. Across all experimental contexts, CF was able to accurately recover missing data and importantly outperformed mean and multivariate imputation, particularly in contexts with greater individual variability. This approach will enable new avenues for affective science research by allowing researchers to acquire high dimensional ratings from emotional experiences with minimal disruption to the emotion-generation process.
机译:情感研究的根本性挑战与高粒度测量的感觉状态和时间精度不中断情感生成过程。验证响应的一种新方法稀疏采样和丢失的数据恢复使用计算技术协同过滤(CF)。利用结构化的共变宽个人经历和可用邻居,一个开源Python工具箱。在三个不同的验证我们的方法实验环境恢复密集个人评级仅使用一个小的子集原始数据。(n = 316)分别评为112年感情的图像6种不同离散的情绪。参与者(n = 203)观看8短的情感迷人的自传故事而同时提供每时每刻都记着的评级强烈的情感体验。在数据集3中,不同的参与者(n = 60)社会偏好决策如何赚了76多钱返回隐藏在一个乘数的信任游戏。能够准确地恢复丢失的数据重要的是优于均值和多元归责,特别是与更大的上下文中个体差异性。情感的科学研究的新途径让研究人员获得高尺寸评级与最小的情感体验情感产生中断的过程。

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