Abstract
In this chapter we describe publicly available datasets with personality and affective parameters relevant to the research questions covered by this book. We briefly describe the available data, acquisition procedure, and other relevant details of these datasets. There are three datasets acquired through the users’ natural interaction with different services: LDOS CoMoDa, LJ2M and myPersonality. Two datasets were acquired in controlled, laboratory settings: LDOS PerAff-1 and DEAP. Finally, we also mention four stimuli datasets from the Media Core project: ANET, IADS, ANEW, IAPS, as well as the 1000 songs dataset. We summarise this information for a quick reference to researchers interested in using these datasets or preparing the acquisition procedure of their own.
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Odić, A., Košir, A., Tkalčič, M. (2016). Affective and Personality Corpora. In: Tkalčič, M., De Carolis, B., de Gemmis, M., Odić, A., Košir, A. (eds) Emotions and Personality in Personalized Services. Human–Computer Interaction Series. Springer, Cham. https://doi.org/10.1007/978-3-319-31413-6_9
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