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Precision‐Based Weighted Blending Distributed Ensemble Model for Emotion Classification

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Autor
Soman G., Vivek M.V., Judy M.V., Papageorgiou E., Gerogiannis V.C.
Fecha
2022
Language
en
DOI
10.3390/a15020055
Materia
Biomedical signal processing
Blending
Electrocardiography
Electrophysiology
Machine learning
Physiological models
Speech recognition
Statistical tests
Blending ensemble model
Distributed machine learning
Emotion classification
Emotion recognition
Emotional state
Ensemble models
Input features
Performance
Resilient distributed dataset
Spark’s resilient distributed dataset
Classification (of information)
MDPI
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Resumen
Focusing on emotion recognition, this paper addresses the task of emotion classification and its performance with respect to accuracy, by investigating the capabilities of a distributed ensemble model using precision‐based weighted blending. Research on emotion recognition and classification refers to the detection of an individual’s emotional state by considering various types of data as input features, such as textual data, facial expressions, vocal, gesture and physiological signal recognition, electrocardiogram (ECG) and electrodermography (EDG)/galvanic skin response (GSR). The extraction of effective emotional features from different types of input data, as well as the analysis of large volume of real‐time data, have become increasingly important tasks in order to perform accurate classification. Taking into consideration the volume and variety of the examined problem, a machine learning model that works in a distributed manner is essential. In this direction, we propose a precision‐based weighted blending distributed ensemble model for emotion classification. The suggested ensemble model can work well in a distributed manner using the concepts of Spark’s resilient distributed datasets, which provide quick in‐memory processing capabilities and also perform iterative computations effectively. Regarding model validation set, weights are as-signed to different classifiers in the ensemble model, based on their precision value. Each weight determines the importance of the respective classifier in terms of its performing prediction, while a new model is built upon the derived weights. The produced model performs the task of final prediction on the test dataset. The results disclose that the proposed ensemble model is sufficiently accurate in differentiating between primary emotions (such as sadness, fear, and anger) and sec-ondary emotions. The suggested ensemble model achieved accuracy of 76.2%, 99.4%, and 99.6% on the FER‐2013, CK+, and FERG‐DB datasets, respectively. © 2022 by the authors. Licensee MDPI, Basel, Switzerland.
URI
http://hdl.handle.net/11615/79191
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