none2Methods for comparing and combining classification trees based on proximity measures have been proposed in the last few years. These methods could be used to analyse a set of trees obtained from independent samples or from resampling methods like bootstrap or cross validation applied to the training sample. In this paper we propose, as an alternative to the pruning techniques, a consensus algorithm that combines trees obtained by bootstrap samples. The consensus algorithm we consider is based on a dissimilarity measure recently proposed. Experimental results are provided to illustrate, in two real data sets, the performances of the proposed consensus method.Titolo della collana: Studies in classification, data analysis, and knowledge ...
Abstract. We are given a set T = {T1, T2,..., Tk} of rooted binary trees, each Ti leaf-labeled by a ...
Each gene has its own evolutionary history which can substantially differ from the evolutionary hist...
Disease subtyping, which helps to develop personalized treatments, remains a challenge in data analy...
none2Several proximity measures have been proposed to compare classifications derived from different...
Several proximity measures have been proposed to compare classifications derived from different clus...
A method that allows estimating consensus trees without exhaustive searches is described. The method...
Abstract. This paper presents two new deterministic algorithms for constructing consensus trees. Giv...
A consensus tree is a single phylogenetic tree that summarizes the branching structure in a given se...
Preference data represent a particular type of ranking data where a group of people gives their pref...
Classifying samples into categories is a common problem in analytical chemistry and other fields. Cl...
International audienceBackgroundIt is generally admitted that the species tree cannot be inferred fr...
Abstract.—Collections of phylogenetic trees are usually summarized using consensus methods. These me...
Plethora of ensemble techniques have been implemented and studied in order to achieve better classif...
International audiencePhylogenetic inference often leads to solutions made up of multiple trees on a...
International audienceIt has been recognized that Classification trees (CART) are unstable; a small ...
Abstract. We are given a set T = {T1, T2,..., Tk} of rooted binary trees, each Ti leaf-labeled by a ...
Each gene has its own evolutionary history which can substantially differ from the evolutionary hist...
Disease subtyping, which helps to develop personalized treatments, remains a challenge in data analy...
none2Several proximity measures have been proposed to compare classifications derived from different...
Several proximity measures have been proposed to compare classifications derived from different clus...
A method that allows estimating consensus trees without exhaustive searches is described. The method...
Abstract. This paper presents two new deterministic algorithms for constructing consensus trees. Giv...
A consensus tree is a single phylogenetic tree that summarizes the branching structure in a given se...
Preference data represent a particular type of ranking data where a group of people gives their pref...
Classifying samples into categories is a common problem in analytical chemistry and other fields. Cl...
International audienceBackgroundIt is generally admitted that the species tree cannot be inferred fr...
Abstract.—Collections of phylogenetic trees are usually summarized using consensus methods. These me...
Plethora of ensemble techniques have been implemented and studied in order to achieve better classif...
International audiencePhylogenetic inference often leads to solutions made up of multiple trees on a...
International audienceIt has been recognized that Classification trees (CART) are unstable; a small ...
Abstract. We are given a set T = {T1, T2,..., Tk} of rooted binary trees, each Ti leaf-labeled by a ...
Each gene has its own evolutionary history which can substantially differ from the evolutionary hist...
Disease subtyping, which helps to develop personalized treatments, remains a challenge in data analy...