Skip navigation

Zastosuj identyfikator do podlinkowania lub zacytowania tej pozycji: http://hdl.handle.net/20.500.12128/16855
Tytuł: Exploration of outliers in if-then rule-based knowledge bases
Autor: Nowak-Brzezińska, Agnieszka
Horyń, Czesław
Słowa kluczowe: rule-based knowledge base; outliers detection; cluster validity; data clustering; AHC; LOF; COF; K-MEANS; SMALL CLUSTERS
Data wydania: 2020
Źródło: "Entropy" 2020, iss. 10, art. no. 1096
Abstrakt: The article presents both methods of clustering and outlier detection in complex data, such as rule-based knowledge bases. What distinguishes this work from others is, first, the application of clustering algorithms to rules in domain knowledge bases, and secondly, the use of outlier detection algorithms to detect unusual rules in knowledge bases. The aim of the paper is the analysis of using four algorithms for outlier detection in rule-based knowledge bases: Local Outlier Factor (LOF), Connectivity-based Outlier Factor (COF), K-MEANS, and SMALL CLUSTERS. The subject of outlier mining is very important nowadays. Outliers in rules If-Then mean unusual rules, which are rare in comparing to others and should be explored by the domain expert as soon as possible. In the research, the authors use the outlier detection methods to find a given number of outliers in rules (1% , 5%, 10%), while in small groups, the number of outliers covers no more than 5% of the rule cluster. Subsequently, the authors analyze which of seven various quality indices, which they use for all rules and after removing selected outliers, improve the quality of rule clusters. In the experimental stage, the authors use six different knowledge bases. The best results (the most often the clusters quality was improved) are achieved for two outlier detection algorithms LOF and COF.
URI: http://hdl.handle.net/20.500.12128/16855
DOI: 10.3390/e22101096
ISSN: 1099-4300
Pojawia się w kolekcji:Artykuły (WNŚiT)

Pliki tej pozycji:
Plik Opis RozmiarFormat 
Nowak-Brzezinska_Exploration_of_Outliers_in_If.pdf2,02 MBAdobe PDFPrzejrzyj / Otwórz
Pokaż pełny rekord


Uznanie Autorstwa 3.0 Polska Creative Commons Creative Commons