2014
DOI: 10.1186/1678-4804-20-14
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Network-based data classification: combining K-associated optimal graphs and high-level prediction

Abstract: Background: Traditional data classification techniques usually divide the data space into sub-spaces, each representing a class. Such a division is carried out considering only physical attributes of the training data (e.g., distance, similarity, or distribution). This approach is called low-level classification. On the other hand, network or graph-based approach is able to capture spacial, functional, and topological relations among data, providing a so-called high-level classification. Usually, network-based… Show more

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Cited by 13 publications
(3 citation statements)
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“…• A simplified framework for highlevel classification: in the thesis, the highlevel classification is simplified in a proposed hybrid technique where physical and complexnetwork based associations are produced from the same network, reducing considerably the number of parameters [Carneiro et al 2014b, Carneiro and. Experimental results show that a larger portion of the highlevel association is required to get correct classification when there is a complex-formed and well-defined pattern in the data set.…”
Section: Thesis Contributionsmentioning
confidence: 99%
“…• A simplified framework for highlevel classification: in the thesis, the highlevel classification is simplified in a proposed hybrid technique where physical and complexnetwork based associations are produced from the same network, reducing considerably the number of parameters [Carneiro et al 2014b, Carneiro and. Experimental results show that a larger portion of the highlevel association is required to get correct classification when there is a complex-formed and well-defined pattern in the data set.…”
Section: Thesis Contributionsmentioning
confidence: 99%
“…On the other hand, in the supervised learning setting, there is only one or a very small number of unlabeled instance, thus leaving no space for label propagation. Consequently, the literature contains few investigations about network-based data classification [18,13,28,29,30,31,32]. In summary, the list of main contributions presented in this article includes:…”
Section: Introductionmentioning
confidence: 99%
“…A ideia original de construir uma técnica híbrida de classificação de baixo e alto níveis foi proposta em (SILVA; ZHAO, 2012; SILVA; ZHAO, 2015) e estendida em (CAR-NEIRO; ZHAO, 2018;COLLIRI et al, 2018;CARNEIRO et al, 2014;CARNEIRO et al, 2016;COVOES;LIANG, 2017;CUPERTINO et al, 2017;CARNEIRO et al, 2019). No esquema original, a classificação de baixo nível pode ser implementada por qualquer técnica de classificação tradicional, enquanto que a técnica de alto nível explora as propriedades topológicas complexas da rede construída a partir dos dados de entrada.…”
Section: Classificação De Dados De Alto Nívelunclassified