We present a method based on clustering techniques to detect possible/probable novel concepts or concept drift in a knowledge base expressed in Description Logics. The method exploits an effective and language-independent semi-distance measure defined for the space of individuals, that is based on a finite number of dimensions corresponding to a committee of discriminating features (represented by concept descriptions). A maximally discriminating group of features can be obtained with the randomized optimization methods described in the paper. In the algorithm, the possible clusterings are represented as strings of central elements (medoids, w.r.t. the given metric) of variable length. Hence, the number of clusters is not required as ...
Clustering algorithms partition a collection of objects into a certain number of clusters (groups, s...
One of the main problems being faced at the time of performing data clustering consists in the deter...
The determination of the number of groups in a dataset, theircomposition and the most relevant measu...
A conceptual clustering framework is presented which can be applied to multi-relational knowledge ba...
Given a set of objects characterized by a number of attributes, hidden patterns can be discovered in...
This paper introduces a method of data clustering that is based on linguistically specified rules, s...
This work focusses on the problem of clustering resources contained in knowledge bases represented t...
In this paper we propose a novel evolutive agent-based clustering algorithm where agents act as indi...
Clustering aims at classifying the unlabeled points in a data set into different groups or clusters,...
This paper presents a survey of evolutionary algorithms designed for clustering tasks. It tries to r...
Artificial Intelligence (AI) methods for machine learning can be viewed as forms of exploratory data...
International audienceConceptual clustering combines two long-standing machine learning tasks: the u...
In the cluster analysis most of the existing clustering techniques for clustering, accept the number...
Many research studies on distance metric learning (DML) reiterate that the definition of distance be...
Data clustering consists in finding homogeneous groups in a dataset. The importance attributed to cl...
Clustering algorithms partition a collection of objects into a certain number of clusters (groups, s...
One of the main problems being faced at the time of performing data clustering consists in the deter...
The determination of the number of groups in a dataset, theircomposition and the most relevant measu...
A conceptual clustering framework is presented which can be applied to multi-relational knowledge ba...
Given a set of objects characterized by a number of attributes, hidden patterns can be discovered in...
This paper introduces a method of data clustering that is based on linguistically specified rules, s...
This work focusses on the problem of clustering resources contained in knowledge bases represented t...
In this paper we propose a novel evolutive agent-based clustering algorithm where agents act as indi...
Clustering aims at classifying the unlabeled points in a data set into different groups or clusters,...
This paper presents a survey of evolutionary algorithms designed for clustering tasks. It tries to r...
Artificial Intelligence (AI) methods for machine learning can be viewed as forms of exploratory data...
International audienceConceptual clustering combines two long-standing machine learning tasks: the u...
In the cluster analysis most of the existing clustering techniques for clustering, accept the number...
Many research studies on distance metric learning (DML) reiterate that the definition of distance be...
Data clustering consists in finding homogeneous groups in a dataset. The importance attributed to cl...
Clustering algorithms partition a collection of objects into a certain number of clusters (groups, s...
One of the main problems being faced at the time of performing data clustering consists in the deter...
The determination of the number of groups in a dataset, theircomposition and the most relevant measu...