论文标题

情感不变的基础真理

The Invariant Ground Truth of Affect

论文作者

Makantasis, Konstantinos, Pinitas, Kosmas, Liapis, Antonios, Yannakakis, Georgios N.

论文摘要

情感计算旨在揭示影响启发,情感表现和影响注释之间的未知关系。然而,情感的基础真理主要归因于情感标签,这些标签无意间包括情感及其标记的主观性质固有的偏见。对这种限制的响应通常是增加数据集,每个数据点的注释更多。但是,当我们通过第一人称注释对自我报告感兴趣时,这是不可能的。此外,基于通道间协议的异常检测方法仅考虑注释本身,而忽略上下文和相应的影响表现。本文通过将因果理论的各个方面转移到情感计算中来重新塑造人们可以获得可靠的情感基础真理。特别是,我们假设情感的基础真理可以在跨任务和参与者之间保持\ emph {不变的{不变{不变的注释之间的因果关系中找到。为了测试我们的假设,我们采用了因果关系启发的方法来检测情感语料库中的离群值,并建立了在参与者和任务之间具有稳健模型的建筑影响模型。我们在数字游戏领域验证了我们的方法,实验结果表明它可以成功地检测出异常值并提高情感模型的准确性。据我们所知,这项研究提出了将因果关系工具整合到情感计算中的首次尝试,从而为一般影响建模做出了至关重要的决定性步骤。

Affective computing strives to unveil the unknown relationship between affect elicitation, manifestation of affect and affect annotations. The ground truth of affect, however, is predominately attributed to the affect labels which inadvertently include biases inherent to the subjective nature of emotion and its labeling. The response to such limitations is usually augmenting the dataset with more annotations per data point; however, this is not possible when we are interested in self-reports via first-person annotation. Moreover, outlier detection methods based on inter-annotator agreement only consider the annotations themselves and ignore the context and the corresponding affect manifestation. This paper reframes the ways one may obtain a reliable ground truth of affect by transferring aspects of causation theory to affective computing. In particular, we assume that the ground truth of affect can be found in the causal relationships between elicitation, manifestation and annotation that remain \emph{invariant} across tasks and participants. To test our assumption we employ causation inspired methods for detecting outliers in affective corpora and building affect models that are robust across participants and tasks. We validate our methodology within the domain of digital games, with experimental results showing that it can successfully detect outliers and boost the accuracy of affect models. To the best of our knowledge, this study presents the first attempt to integrate causation tools in affective computing, making a crucial and decisive step towards general affect modeling.

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