The volume of data generated and collected using modern technologies grows exponentially. This vast amount of data often follows a complex structure, significantly affecting the performance of various machine learning tasks. Despite the effort made, the problem of efficiently mining and analyzing such data is still persisting. Here, a novel data mining framework for unsupervised learning tasks is proposed based on decision tree learning and ensembles of trees. The proposed approach introduces an informative feature representation and is able to handle data diversity (e.g., numerical, canonical, etc.) and complexity (e.g., graphs, networks, data containing missing values etc.). Learning is performed in an unsupervised manner, following also ...
peer reviewedIn this paper, we consider supervised learning under the assumption that the available ...
During the recent years, a great advance in both biomedical data acquisition technologies and featur...
Abstract The growing success of Machine Learning (ML) is making significant improvements to predicti...
The volume of data generated and collected using modern technologies grows exponentially. This vast ...
The volume of data generated and collected using modern technologies grows exponentially. This vast ...
The volume of data generated and collected using modern technologies grows exponentially. This vast ...
peer reviewedIn this paper we present a new tree-based ensemble method called “Extra-Trees”. This al...
Abstract—We propose a simple yet effective strategy to induce a task dependent feature representatio...
peer reviewedFeature generation is the problem of automatically constructing good features for a giv...
International audienceThis paper proposes a new tree-based ensemble method for supervised classifica...
The volume of biomedical data available to the machine learning community grows very rapidly. A rati...
Decision trees are widely used predictive models in machine learning. Recently, K-tree is proposed, ...
Decision trees are widely used predictive models in machine learning. Recently, K-tree is proposed, ...
Tree-based ensemble methods, such as random forests and extremely randomized trees, are methods of c...
peer reviewedIn this paper, we consider supervised learning under the assumption that the available ...
peer reviewedIn this paper, we consider supervised learning under the assumption that the available ...
During the recent years, a great advance in both biomedical data acquisition technologies and featur...
Abstract The growing success of Machine Learning (ML) is making significant improvements to predicti...
The volume of data generated and collected using modern technologies grows exponentially. This vast ...
The volume of data generated and collected using modern technologies grows exponentially. This vast ...
The volume of data generated and collected using modern technologies grows exponentially. This vast ...
peer reviewedIn this paper we present a new tree-based ensemble method called “Extra-Trees”. This al...
Abstract—We propose a simple yet effective strategy to induce a task dependent feature representatio...
peer reviewedFeature generation is the problem of automatically constructing good features for a giv...
International audienceThis paper proposes a new tree-based ensemble method for supervised classifica...
The volume of biomedical data available to the machine learning community grows very rapidly. A rati...
Decision trees are widely used predictive models in machine learning. Recently, K-tree is proposed, ...
Decision trees are widely used predictive models in machine learning. Recently, K-tree is proposed, ...
Tree-based ensemble methods, such as random forests and extremely randomized trees, are methods of c...
peer reviewedIn this paper, we consider supervised learning under the assumption that the available ...
peer reviewedIn this paper, we consider supervised learning under the assumption that the available ...
During the recent years, a great advance in both biomedical data acquisition technologies and featur...
Abstract The growing success of Machine Learning (ML) is making significant improvements to predicti...