An Incremental Construction of Deep Neuro Fuzzy System for Continual Learning of Non-stationary Data Streams
Mahardhika Pratama, Witold Pedrycz, Geoffrey I. Webb

TL;DR
This paper introduces DEVFNN, a deep fuzzy neural network that automatically adapts its structure for continual learning from non-stationary data streams, improving accuracy and managing complexity.
Contribution
It proposes a novel self-organizing deep FNN with automatic rule extraction, drift detection, feature selection, and layer merging for effective continual learning.
Findings
DEVFNN outperforms four popular continual learning algorithms in accuracy.
The drift detection method effectively controls network depth.
Hidden layer merging simplifies the network with minimal performance loss.
Abstract
Existing FNNs are mostly developed under a shallow network configuration having lower generalization power than those of deep structures. This paper proposes a novel self-organizing deep FNN, namely DEVFNN. Fuzzy rules can be automatically extracted from data streams or removed if they play limited role during their lifespan. The structure of the network can be deepened on demand by stacking additional layers using a drift detection method which not only detects the covariate drift, variations of input space, but also accurately identifies the real drift, dynamic changes of both feature space and target space. DEVFNN is developed under the stacked generalization principle via the feature augmentation concept where a recently developed algorithm, namely gClass, drives the hidden layer. It is equipped by an automatic feature selection method which controls activation and deactivation of…
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