Enhanced Feature Based Granular Ball Twin Support Vector Machine
A. Quadir, M. Sajid, M. Tanveer, P. N. Suganthan

TL;DR
This paper introduces EF-GBTSVM, a robust and scalable classification model that combines granular balls, feature mapping, and twin SVMs to improve generalization and noise resistance on large datasets.
Contribution
The paper proposes a novel EF-GBTSVM model that integrates granular ball representations, random feature mapping, and twin SVMs for enhanced classification performance.
Findings
Outperforms baseline models in generalization and robustness
Effective on large datasets with noise and outliers
Demonstrates scalability and improved accuracy
Abstract
In this paper, we propose enhanced feature based granular ball twin support vector machine (EF-GBTSVM). EF-GBTSVM employs the coarse granularity of granular balls (GBs) as input rather than individual data samples. The GBs are mapped to the feature space of the hidden layer using random projection followed by the utilization of a non-linear activation function. The concatenation of original and hidden features derived from the centers of GBs gives rise to an enhanced feature space, commonly referred to as the random vector functional link (RVFL) space. This space encapsulates nuanced feature information to GBs. Further, we employ twin support vector machine (TSVM) in the RVFL space for classification. TSVM generates the two non-parallel hyperplanes in the enhanced feature space, which improves the generalization performance of the proposed EF-GBTSVM model. Moreover, the coarser…
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Taxonomy
TopicsAdvanced Algorithms and Applications
