A hierarchical laplacian TWSVM using similarity clustering for leaf classification

This article introduces a multi-class hierarchical algorithm for semi-supervised classification. The proposed algorithm incorporates the benefits of tree-based classification approaches and vastly available unlabelled data. It also overcomes the deficiency of existing multi-class extension approache...

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Veröffentlicht in:Cluster computing 2022-04, Vol.25 (2), p.1541-1560
Hauptverfasser: Goyal, Neha, Gupta, Kapil
Format: Artikel
Sprache:eng
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Zusammenfassung:This article introduces a multi-class hierarchical algorithm for semi-supervised classification. The proposed algorithm incorporates the benefits of tree-based classification approaches and vastly available unlabelled data. It also overcomes the deficiency of existing multi-class extension approaches viz . Non-linearity, imbalanced class classification and increasing classification cost with increasing the number of classes. The proposed algorithm selects classes from a pool and creates two clusters with a notion of maximum inter-cluster distance and intra-cluster similarity. The efficiency and effectiveness of the proposed algorithm are evaluated using one artificial dataset, three benchmark datasets viz. iris , wine , and seeds . The article presents an application of the algorithm for a real-world and complex plant recognition problem using three leaf image datasets i.e. Flavia , Swedish and self-collected . The experimental results confirm that the hierarchical extension serves several benefits, including efficient classification accuracy, less computational cost, faster classification, and reduced class imbalance. An improvement of 11% classification rate on self-collected leaf images with one-fourth of the computational cost required by tree-based laplacian TWSVM confirms its applicability on plant classification and other domains as well.
ISSN:1386-7857
1573-7543
DOI:10.1007/s10586-022-03534-1