Classification is a major constituent of the data mining tool kit. Well-known methods for classification are either built on the principle of logic or on statistical reasoning. For imbalanced and noisy cases, classification may however fail to deliver on basic data mining goals, i.e., identifying statistical dependencies in data. In this article, we propose a novel strategy for data mining based on partitioning of the feature space through Voronoi tessellation and Genetic Algorithm, where the latter is applied to solve a combinatorial optimization problem. We apply the suggested methodology to a range of classification problems of varying imbalance and noise and compare the performance of the suggested method with well-known classification ...
Abstract: Prediction of rarely occurring patterns is challenging but crucial for several real-world...
In Machine Learning classification, searching for informative interactions in large high-dimensional...
The demand for new techniques brought by data mining has been skyrocketting in recent years due to t...
Classification of imbalanced datasets is a critical problem in numerous contexts. In these applicati...
In difficult classification problems of the z-dimensional points into two groups giving 0-1 response...
International audienceThis paper presents the Voronoi diagram-based evolutionary algorithm (VorEAl)....
This paper describes Timeweaver, a genetic-based machine learning system that predicts events by ide...
A genetic algorithm system is developed and applied to classification and feature extraction of high...
Abstract: An The purpose of the paper ―Identifying genetic mutation rare genetic disorder by analyzi...
The paper deals with the problem of the detection of rare patterns in unbalanced datasets coming fro...
One of the major challenges in automatic classification is to deal with highly dimensional data. Sev...
Sample stratification is a technique for making each class in a sample have equal influence on decis...
International audienceWhile significant work in data mining has been dedicated to the detection of s...
In this paper we summarize our research on classification and feature extraction for high-dimensiona...
Abstract: Prediction of rarely occurring patterns is challenging but crucial for several real-world...
In Machine Learning classification, searching for informative interactions in large high-dimensional...
The demand for new techniques brought by data mining has been skyrocketting in recent years due to t...
Classification of imbalanced datasets is a critical problem in numerous contexts. In these applicati...
In difficult classification problems of the z-dimensional points into two groups giving 0-1 response...
International audienceThis paper presents the Voronoi diagram-based evolutionary algorithm (VorEAl)....
This paper describes Timeweaver, a genetic-based machine learning system that predicts events by ide...
A genetic algorithm system is developed and applied to classification and feature extraction of high...
Abstract: An The purpose of the paper ―Identifying genetic mutation rare genetic disorder by analyzi...
The paper deals with the problem of the detection of rare patterns in unbalanced datasets coming fro...
One of the major challenges in automatic classification is to deal with highly dimensional data. Sev...
Sample stratification is a technique for making each class in a sample have equal influence on decis...
International audienceWhile significant work in data mining has been dedicated to the detection of s...
In this paper we summarize our research on classification and feature extraction for high-dimensiona...
Abstract: Prediction of rarely occurring patterns is challenging but crucial for several real-world...
In Machine Learning classification, searching for informative interactions in large high-dimensional...
The demand for new techniques brought by data mining has been skyrocketting in recent years due to t...