Manifold Correlation Graph for Semi-Supervised Learning

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Data

2018-01-01

Autores

Valem, Lucas Pascotti [UNESP]
Pedronette, Daniel C. G. [UNESP]
Breve, Fabricio [UNESP]
Guilherme, Ivan Rizzo [UNESP]
IEEE

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Ieee

Resumo

Due to the growing availability of unlabeled data and the difficulties in obtaining labeled data, the use of semi-supervised learning approaches becomes even more promising. The capacity of taking into account the dataset structure is of crucial relevance for effectively considering the unlabeled data. In this paper, a novel classifier is proposed through a manifold learning approach. The graph is constructed based on a new hybrid similarity measure which encodes both supervised and unsupervised information. Next, strongly connected components are computed and used to analyze the dataset manifold. The classification is performed through a voting scheme based on primary (labeled) and secondary (unlabeled) voters. An experimental evaluation is conducted, considering various datasets, diverse situations of training/test dataset sizes and comparison with baselines. The proposed method achieved positive results in most of situations.

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2018 International Joint Conference On Neural Networks (ijcnn). New York: Ieee, 7 p., 2018.