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Assessing the Robustness of Cluster Solutions in Emotionally-Annotated Pictures Using Monte- Carlo Simulation Stabilized K-Means Algorithm (CROSBI ID 294308)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Horvat, Marko ; Jović, Alan ; Burnik, Kristijan Assessing the Robustness of Cluster Solutions in Emotionally-Annotated Pictures Using Monte- Carlo Simulation Stabilized K-Means Algorithm // Machine learning and knowledge extraction, 3 (2021), 2; 435-452. doi: 10.3390/make3020022

Podaci o odgovornosti

Horvat, Marko ; Jović, Alan ; Burnik, Kristijan

engleski

Assessing the Robustness of Cluster Solutions in Emotionally-Annotated Pictures Using Monte- Carlo Simulation Stabilized K-Means Algorithm

Clustering is a very popular machine-learning technique that is often used in data exploration of continuous variables. In general, there are two problems commonly encountered in clustering: (1) the selection of the optimal number of clusters, and (2) the undecidability of the affiliation of border data points to neighboring clusters. We address both problems and describe how to solve them in application to affective multimedia databases. In the experiment, we used the unsupervised learning algorithm k-means and the Nencki Affective Picture System (NAPS) dataset, which contains 1356 semantically and emotionally annotated pictures. The optimal number of centroids was estimated, using the empirical elbow and silhouette rules, and validated using the Monte-Carlo simulation approach. Clustering with k = 1–50 centroids is reported, along with dominant picture keywords and descriptive statistical parameters. Affective multimedia databases, such as the NAPS, have been specifically designed for emotion and attention experiments. By estimating the optimal cluster solutions, it was possible to gain deeper insight into affective features of visual stimuli. Finally, a custom software application was developed for study in the Python programming language. The tool uses the scikit- learn library for the implementation of machine-learning algorithms, data exploration and visualization. The tool is freely available for scientific and non-commercial purposes.

multimedia ; clustering ; k-means ; Monte-Carlo simulation ; cluster distribution ; emotion ; affective computing

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Podaci o izdanju

3 (2)

2021.

435-452

objavljeno

2504-4990

10.3390/make3020022

Povezanost rada

Računarstvo

Poveznice