Subgroup discovery is a Knowledge Discovery task that aims at finding subgroups of a population with high generality and distributional unusualness. While several subgroup discovery algorithms have been presented in the past, they focus on databases with nominal attributes or make use of discretization to get rid of the numerical attributes. In this paper, we illustrate why the replacement of numerical attributes by nominal attributes can result in suboptimal results. Thereafter, we present a new subgroup discovery algorithm that prunes large parts of the search space by exploiting bounds between related numerical subgroup descriptions. The same algorithm can also be applied to ordinal attributes. In an experimental section, we show that th...
Subgroup discovery is the task of discovering patterns that accurately discriminate a class label fr...
Deriving insights from high-dimensional data is one of the core problems in data mining. The difficu...
Subgroup discovery is a data mining technique which extracts interesting rules with respect to a ta...
International audienceSubgroup discovery in labeled data is the task of discovering patterns in the ...
Subgroup discovery systems are concerned with finding interesting patterns in labeled data. How thes...
Large volumes of data are collected today in many domains. Often, there is so much data available, t...
The task of subgroup discovery (SD) is to find interpretable descriptions of subsets of a dataset th...
Large volumes of data are collected today in many domains. Often, there is so much data available, t...
Abstract. We propose an approach to subgroup discovery using distri-bution rules (a kind of associat...
Current subgroup discovery methods struggle to produce good results for large real-life datasets wit...
Subgroup discovery is a local pattern mining technique to find interpretable descriptions of sub-pop...
Abstract. In this paper we present the novel SD-Map algorithm for exhaustive but efficient subgroup ...
Large data is challenging for most existing discovery algorithms, for several reasons. First of all,...
This dissertation investigates how to adapt standard classification rule learning approaches to su...
local exceptionality detection, interestingness measures, algorithms, exploratory data mining Subgro...
Subgroup discovery is the task of discovering patterns that accurately discriminate a class label fr...
Deriving insights from high-dimensional data is one of the core problems in data mining. The difficu...
Subgroup discovery is a data mining technique which extracts interesting rules with respect to a ta...
International audienceSubgroup discovery in labeled data is the task of discovering patterns in the ...
Subgroup discovery systems are concerned with finding interesting patterns in labeled data. How thes...
Large volumes of data are collected today in many domains. Often, there is so much data available, t...
The task of subgroup discovery (SD) is to find interpretable descriptions of subsets of a dataset th...
Large volumes of data are collected today in many domains. Often, there is so much data available, t...
Abstract. We propose an approach to subgroup discovery using distri-bution rules (a kind of associat...
Current subgroup discovery methods struggle to produce good results for large real-life datasets wit...
Subgroup discovery is a local pattern mining technique to find interpretable descriptions of sub-pop...
Abstract. In this paper we present the novel SD-Map algorithm for exhaustive but efficient subgroup ...
Large data is challenging for most existing discovery algorithms, for several reasons. First of all,...
This dissertation investigates how to adapt standard classification rule learning approaches to su...
local exceptionality detection, interestingness measures, algorithms, exploratory data mining Subgro...
Subgroup discovery is the task of discovering patterns that accurately discriminate a class label fr...
Deriving insights from high-dimensional data is one of the core problems in data mining. The difficu...
Subgroup discovery is a data mining technique which extracts interesting rules with respect to a ta...