10 research outputs found
MPGN – An Approach for Discovering Class Association Rules
his article presents some of the results of the Ph.D. thesis Class Association Rule Mining
Using MultiDimensional Numbered Information Spaces by Iliya Mitov (Institute of Mathematics
and Informatics, BAS), successfully defended at Hasselt University, Faculty of Science on 15
November 2011 in BelgiumThe article briefly presents some results achieved within the PhD project R1876Intelligent Systems’ Memory Structuring Using Multidimensional Numbered Information Spaces, successfully defended at Hasselt University. The main goal of this article is to show the possibilities of using multidimensional numbered information spaces in data mining processes on the example of the implementation of one associative classifier, called MPGN (Multilayer Pyramidal Growing Networks)
Classifier PGN: Classification with High Confidence Rules
ACM Computing Classification System (1998): H.2.8, H.3.3.Associative classifiers use a set of class association rules, generated from a given training set, to classify new instances. Typically, these techniques set a minimal support to make a first selection of appropriate rules and discriminate subsequently between high and low quality rules by means of a quality measure such as confidence. As a result, the final set of class association rules have a support equal or greater than a predefined threshold, but many of them have confidence levels below 100%. PGN is a novel associative classifier which turns the traditional approach around and uses a confidence level of 100% as a first selection criterion, prior to maximizing the support. This article introduces PGN and evaluates the strength and limitations of PGN empirically. The results are promising and show that PGN is competitive with other well-known classifiers
Query Enrichment for Image Collections by Reuse of Classification Rules
User queries over image collections, based on semantic similarity,
can be processed in several ways. In this paper, we propose to reuse the rules
produced by rule-based classifiers in their recognition models as query pattern
definitions for searching image collections
Applying Associative Classifier PGN for Digitised Cultural Heritage Resource Discovery
Resource discovery is one of the key services in digitised cultural
heritage collections. It requires intelligent mining in heterogeneous digital
content as well as capabilities in large scale performance; this explains the
recent advances in classification methods. Associative classifiers are convenient
data mining tools used in the field of cultural heritage, by applying their
possibilities to taking into account the specific combinations of the attribute
values. Usually, the associative classifiers prioritize the support over the
confidence. The proposed classifier PGN questions this common approach and
focuses on confidence first by retaining only 100% confidence rules. The
classification tasks in the field of cultural heritage usually deal with data sets
with many class labels. This variety is caused by the richness of accumulated
culture during the centuries. Comparisons of classifier PGN with other
classifiers, such as OneR, JRip and J48, show the competitiveness of PGN in
recognizing multi-class datasets on collections of masterpieces from different
West and East European Fine Art authors and movements
Establishing Correspondences between Attribute Spaces and Complex Concept Spaces Using Meta-PGN Classifier
Abstract. In this paper, we present one approach for extending the learning set of a classification algorithm with additional metadata. It is used as a base for giving appropriate names to found regularities. The analysis of correspondence between connections established in the attribute space and existing links between concepts can be used as a test for creation of an adequate model of the observed world. Meta-PGN classifier is suggested as a possible tool for establishing these connections. Applying this approach in the field of content-based image retrieval of art paintings provides a tool for extracting specific feature combinations, which represent different sides of artists ' styles, periods and movements