Multimodality and Skewness in Emotion Time Series

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Abstract

The ability to measure emotional states in daily life using mobile devices has led to a surge of exciting new research on the temporal evolution of emotions. However, much of the potential of these data still remains untapped. In this paper, we reanalyze emotion measurements from seven openly available experience sampling methodology studies with a total of 835 individuals to systematically investigate the modality (unimodal, bimodal, and more than two modes) and skewness of within-person emotion measurements.We show that both multimodality and skewness are highly prevalent. In addition, we quantify the heterogeneity across items, individuals, and measurement designs. Our analysis reveals that multimodality is more likely in studies using an analog slider scale than in studies using a Likert scale; negatively valenced items are consistently more skewed than positive valenced items; and longer time series show a higher degree of modality in positive and a higher skew in negative items.We end by discussing the implications of our results for theorizing, measurement, and time series modeling.

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Haslbeck, J., Ryan, O., & Dablander, F. (2023). Multimodality and Skewness in Emotion Time Series. Emotion, 23(8), 2117–2141. https://doi.org/10.1037/emo0001218

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