Ensemble Deep Random Vector Functional Link Neural Network Based on Fuzzy Inference System
M. Sajid, M. Tanveer, P. N. Suganthan

TL;DR
This paper introduces a novel ensemble deep neural network combining fuzzy inference systems with random vector functional links to improve feature learning and model performance.
Contribution
It proposes a new edRVFL-FIS model that integrates fuzzy layers and diverse clustering methods, enhancing feature representation and predictive accuracy.
Findings
Superior performance over baseline models on UCI and NDC datasets
Effective integration of fuzzy inference with deep ensemble learning
Demonstrated robustness across multiple fuzzy clustering variations
Abstract
The ensemble deep random vector functional link (edRVFL) neural network has demonstrated the ability to address the limitations of conventional artificial neural networks. However, since edRVFL generates features for its hidden layers through random projection, it can potentially lose intricate features or fail to capture certain non-linear features in its base models (hidden layers). To enhance the feature learning capabilities of edRVFL, we propose a novel edRVFL based on fuzzy inference system (edRVFL-FIS). The proposed edRVFL-FIS leverages the capabilities of two emerging domains, namely deep learning and ensemble approaches, with the intrinsic IF-THEN properties of fuzzy inference system (FIS) and produces rich feature representation to train the ensemble model. Each base model of the proposed edRVFL-FIS encompasses two key feature augmentation components: a) unsupervised fuzzy…
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Taxonomy
TopicsAdvanced Sensor and Control Systems · Advanced Algorithms and Applications
MethodsBalanced Selection
