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- Title
Investigation of Relationships between Discrete and Dimensional Emotion Models in Affective Picture Databases Using Unsupervised Machine Learning.
- Authors
Horvat, Marko; Jović, Alan; Burnik, Kristijan
- Abstract
Featured Application: We have shown that affective ratings in picture stimuli are correlated: (1) there is a statistically significant correlation between specific pairs of discrete and dimensional emotions in picture stimuli, and (2) robust transformation of picture ratings from the discrete emotion space to well-defined clusters in the dimensional space is possible for some discrete-dimensional emotion pairs. These findings can be used to improve the retrieval of stimuli from affective repositories. Based on these results, an efficient system for recommending affective multimedia can be developed. Digital documents created to evoke emotional responses are intentionally stored in special affective multimedia databases, along with metadata describing their semantics and emotional content. These databases are routinely used in multidisciplinary research on emotion, attention, and related phenomena. Affective dimensions and emotion norms are the most common emotion data models in the field of affective computing, but they are considered separable and not interchangeable. The goal of this study was to determine whether it is possible to statistically infer values of emotionally annotated pictures using the discrete emotion model when the values of the dimensional model are available and vice versa. A positive answer would greatly facilitate stimuli retrieval from affective multimedia databases and the integration of heterogeneous and differently structured affective data sources. In the experiment, we built a statistical model to describe dependencies between discrete and dimensional ratings using the affective picture databases NAPS and NAPS BE with standardized annotations for 1356 and 510 pictures, respectively. Our results show the following: (1) there is a statistically significant correlation between certain pairs of discrete and dimensional emotions in picture stimuli, and (2) robust transformation of picture ratings from the discrete emotion space to well-defined clusters in the dimensional space is possible for some discrete-dimensional emotion pairs. Based on our findings, we conclude that a feasible recommender system for affective dataset retrieval can be developed. The software tool developed for the experiment and the results are freely available for scientific and non-commercial purposes.
- Subjects
AFFECTIVE computing; AFFECT (Psychology); EMOTIONS; MACHINE learning; ELECTRONIC records; RECOMMENDER systems
- Publication
Applied Sciences (2076-3417), 2022, Vol 12, Issue 15, p7864
- ISSN
2076-3417
- Publication type
Article
- DOI
10.3390/app12157864