Parsimonious Random Vector Functional Link Network for Data Streams
Mahardhika Pratama, Plamen P. Angelov, Edwin Lughofer

TL;DR
This paper introduces pRVFLN, a scalable, adaptive neural network model for data streams that automatically adjusts its structure, reduces complexity, and employs online active learning for real-time applications.
Contribution
It proposes a novel parsimonious RVFLN with automatic structure generation, complexity reduction, and online active learning, suitable for data stream analytics.
Findings
pRVFLN outperforms state-of-the-art algorithms in simulations.
It demonstrates robustness across various data stream scenarios.
The model effectively reduces complexity while maintaining accuracy.
Abstract
The theory of random vector functional link network (RVFLN) has provided a breakthrough in the design of neural networks (NNs) since it conveys solid theoretical justification of randomized learning. Existing works in RVFLN are hardly scalable for data stream analytics because they are inherent to the issue of complexity as a result of the absence of structural learning scenarios. A novel class of RVLFN, namely parsimonious random vector functional link network (pRVFLN), is proposed in this paper. pRVFLN features an open structure paradigm where its network structure can be built from scratch and can be automatically generated in accordance with degree of nonlinearity and time-varying property of system being modelled. pRVFLN is equipped with complexity reduction scenarios where inconsequential hidden nodes can be pruned and input features can be dynamically selected. pRVFLN puts into…
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