International audienceData mining allow users to discover novelty in huge amounts of data. Frequent pattern methods have proved to be efficient, but the extracted patterns are often too numerous and thus difficult to analyze by end users. In this paper, we focus on sequential pattern mining and propose a new visualization system to help end users analyze the extracted knowledge and to highlight novelty according to databases of referenced biological documents. Our system is based on three visualization techniques: clouds, solar systems, and treemaps. We show that these techniques are very helpful for identifying associations and hierarchical relationships between patterns among related documents. Sequential patterns extracted from gene data...
Although the use of microarray technology has seen exponential growth, analysis of microarray data r...
In this paper, we present an automated approach to discover patterns that can distinguish between se...
In this work a comprehensive multi-step machine learning data mining and data visualization framewor...
International audienceData mining allow users to discover novelty in huge amounts of data. Frequent ...
AbstractData mining allow users to discover novelty in huge amounts of data. Frequent pattern method...
International audienceData mining techniques allow users to discover novelty in huge amounts of data...
International audienceDiscovering new information about groups of genes implied in a disease is stil...
International audienceAnalyzing microarrays data is still a great challenge since existing methods p...
Background Mining frequent gene regulation sequential patterns in time course microarray datasets is...
International audienceTechniques for extracting knowledge from huge volumes of biological data, obta...
Analyzing microarrays data is still a great challenge since existing methods produce huge amounts of...
A sequential pattern in data mining is a finite series of elements such as A B C D where A, B, C,...
International audienceOrphanet provides an international web-based knowledge portal for rare disease...
In this tutorial article, the author reviews basics about frequent pattern mining algorithms, includ...
BACKGROUND: The most common method of identifying groups of functionally related genes in microarray...
Although the use of microarray technology has seen exponential growth, analysis of microarray data r...
In this paper, we present an automated approach to discover patterns that can distinguish between se...
In this work a comprehensive multi-step machine learning data mining and data visualization framewor...
International audienceData mining allow users to discover novelty in huge amounts of data. Frequent ...
AbstractData mining allow users to discover novelty in huge amounts of data. Frequent pattern method...
International audienceData mining techniques allow users to discover novelty in huge amounts of data...
International audienceDiscovering new information about groups of genes implied in a disease is stil...
International audienceAnalyzing microarrays data is still a great challenge since existing methods p...
Background Mining frequent gene regulation sequential patterns in time course microarray datasets is...
International audienceTechniques for extracting knowledge from huge volumes of biological data, obta...
Analyzing microarrays data is still a great challenge since existing methods produce huge amounts of...
A sequential pattern in data mining is a finite series of elements such as A B C D where A, B, C,...
International audienceOrphanet provides an international web-based knowledge portal for rare disease...
In this tutorial article, the author reviews basics about frequent pattern mining algorithms, includ...
BACKGROUND: The most common method of identifying groups of functionally related genes in microarray...
Although the use of microarray technology has seen exponential growth, analysis of microarray data r...
In this paper, we present an automated approach to discover patterns that can distinguish between se...
In this work a comprehensive multi-step machine learning data mining and data visualization framewor...