Specific to data mining or data analysis in general, noise raises the difficulty for many conventional models to deliver a trustworthy result. Several studies have devoted to adjust existing methods to exhibit a noise tolerance characteristic, while some others rely pretty much on the process of data cleansing prior the analysis process. One way or another, the impact of noise is minimized, thus keeping up the goodness of discovered knowledge. In contrary of these, a few researches have recently reported a benefit of injecting small amount of noise into the data under examination. Given such an insight, the paper introduces an initial and unique study of employing noise in the process of cluster ensemble generation. This noise-induced strat...
Consensus clustering has been one of the major fields in data science, with increasing numbers of th...
Traditional clustering algorithms have different criteria and biases, and there is no single algorit...
Diversity plays an important role in successful ensemble classification. One way to diversify the ba...
Specific to data mining or data analysis in general, noise raises the difficulty for many convention...
Data analysis plays a prominent role in interpreting various phenomena. Data mining is the process t...
Data analysis plays a prominent role in interpreting various phenomena. Data mining is the process t...
Clustering is used in identifying groups of samples with similar properties, and it is one of the mo...
Clustering based ensemble classifiers have seen a lot of focus recently because of their ability to ...
International audienceEnsemble Learning methods combine multiple algorithms performing the same task...
a b s t r a c t The advantage of ensemble methods over single methods is their ability to correct th...
Diversity plays an important role in successful ensemble classification. One way to diversify the ba...
Data mining is the procedure of determining interesting patterns from the huge amount of data. With ...
In this paper, we propose a method to generate an optimized ensemble classifier. In the proposed met...
Abstract. Consensus clustering methodologies combine a set of parti-tions on the clustering ensemble...
Consensus clustering has been one of the major fields in data science, with increasing numbers of th...
Consensus clustering has been one of the major fields in data science, with increasing numbers of th...
Traditional clustering algorithms have different criteria and biases, and there is no single algorit...
Diversity plays an important role in successful ensemble classification. One way to diversify the ba...
Specific to data mining or data analysis in general, noise raises the difficulty for many convention...
Data analysis plays a prominent role in interpreting various phenomena. Data mining is the process t...
Data analysis plays a prominent role in interpreting various phenomena. Data mining is the process t...
Clustering is used in identifying groups of samples with similar properties, and it is one of the mo...
Clustering based ensemble classifiers have seen a lot of focus recently because of their ability to ...
International audienceEnsemble Learning methods combine multiple algorithms performing the same task...
a b s t r a c t The advantage of ensemble methods over single methods is their ability to correct th...
Diversity plays an important role in successful ensemble classification. One way to diversify the ba...
Data mining is the procedure of determining interesting patterns from the huge amount of data. With ...
In this paper, we propose a method to generate an optimized ensemble classifier. In the proposed met...
Abstract. Consensus clustering methodologies combine a set of parti-tions on the clustering ensemble...
Consensus clustering has been one of the major fields in data science, with increasing numbers of th...
Consensus clustering has been one of the major fields in data science, with increasing numbers of th...
Traditional clustering algorithms have different criteria and biases, and there is no single algorit...
Diversity plays an important role in successful ensemble classification. One way to diversify the ba...