2018
DOI: 10.3390/info9110266
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ImplicPBDD: A New Approach to Extract Proper Implications Set from High-Dimension Formal Contexts Using a Binary Decision Diagram †

Abstract: Formal concept analysis (FCA) is largely applied in different areas. However, in some FCA applications the volume of information that needs to be processed can become unfeasible. Thus, the demand for new approaches and algorithms that enable processing large amounts of information is increasing substantially. This article presents a new algorithm for extracting proper implications from high-dimensional contexts. The proposed algorithm, called ImplicPBDD, was based on the PropIm algorithm, and uses a data struc… Show more

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Cited by 2 publications
(2 citation statements)
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“…The search for algorithms for FCA which can process high‐dimensional contexts has been the main focus of research in last years. For instance, the ImplicPBDD 24 algorithm is a variant of the PropIm algorithm, but it uses a Binary Decision Diagram (BDD) structure. It aims to deal with the high dimensionality, simplifying the data structure of the formal context with a BDD.…”
Section: Related Workmentioning
confidence: 99%
“…The search for algorithms for FCA which can process high‐dimensional contexts has been the main focus of research in last years. For instance, the ImplicPBDD 24 algorithm is a variant of the PropIm algorithm, but it uses a Binary Decision Diagram (BDD) structure. It aims to deal with the high dimensionality, simplifying the data structure of the formal context with a BDD.…”
Section: Related Workmentioning
confidence: 99%
“…A pesquisa de novos algoritmos para aárea de FCA que alcançam um processamento com alta dimensionalidade aindaé o grande foco. No trabalho apresentado por [Santos et al 2018],é desenvolvido um novo algoritmo para contextos de alta dimensionalidade, cujo nomeé descrito por ImplicPBDD (baseado no algoritmo PropIm) que utiliza uma estrutura BDD, sendo esta uma estrutura simplificada de representação do contexto formal para aprimorar a extração de conhecimento. No trabalho apresentado,é criada uma base sintética com variações de dimensão e objetos, obtendo um desempenho de 80% a mais que o seu antecessor, ao avaliar a eficiência do algoritmo.…”
Section: Algoritmo 3: Bc Backunclassified