PALM: An Incremental Construction of Hyperplanes for Data Stream Regression
Md Meftahul Ferdaus, Mahardhika Pratama, Sreenatha G. Anavatti,, Matthew A. Garratt

TL;DR
This paper introduces PALM, a novel neurofuzzy system for data stream regression that reduces parameters and improves efficiency by using hyperplane-based fuzzy rules, capable of real-time adaptation in dynamic environments.
Contribution
The paper proposes PALM, a new self-adaptive neurofuzzy system with hyperplane clustering that minimizes parameters and supports single-pass learning for data streams.
Findings
PALM outperforms existing SANFSs in computational efficiency.
PALM achieves comparable or better predictive accuracy.
The recurrent extension rPALM enhances deep learning capabilities.
Abstract
Data stream has been the underlying challenge in the age of big data because it calls for real-time data processing with the absence of a retraining process and/or an iterative learning approach. In realm of fuzzy system community, data stream is handled by algorithmic development of self-adaptive neurofuzzy systems (SANFS) characterized by the single-pass learning mode and the open structure property which enables effective handling of fast and rapidly changing natures of data streams. The underlying bottleneck of SANFSs lies in its design principle which involves a high number of free parameters (rule premise and rule consequent) to be adapted in the training process. This figure can even double in the case of type-2 fuzzy system. In this work, a novel SANFS, namely parsimonious learning machine (PALM), is proposed. PALM features utilization of a new type of fuzzy rule based on the…
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