Nowadays, many machine learning procedures are available on the shelve and may be used easily to calibrate predictive models on supervised data. However, when the input data consists of more than one unknown cluster, and when different underlying predictive models exist, fitting a model is a more challenging task. We propose, in this paper, a procedure in three steps to automatically solve this problem. The KFC procedure aggregates different models adaptively on data. The first step of the procedure aims at catching the clustering structure of the input data, which may be characterized by several statistical distributions. It provides several partitions, given the assumptions on the distributions. For each partition, the second step fits a ...
An appropriate distance is an essential ingredient in various real-world learning tasks. Distance me...
[Departement_IRSTEA]Territoires [TR1_IRSTEA]SYNERGIE [Axe_IRSTEA]TETIS-SISO [ADD1_IRSTEA]Dynamiques ...
Distance-based learning methods, like clustering and SVMs, are dependent on good distance metrics. T...
Nowadays, many machine learning procedures are available on the shelve and may be used easily to cal...
Three important projects are studied in this thesis. The first project is "KFC : a clusterwise super...
Trois projets importants sont étudiés dans cette thèse. Le premier projet est "KFC : Une procédure d...
Predictive clustering is a new supervised learning framework derived from traditional clustering. Th...
International audienceInstead of fitting a single and global model (regression, PCA, etc.) to a set ...
Le clustering prédictif est un nouvel aspect d’apprentissage supervisé dérivé du clustering standard...
textClustering is one of the most common data mining tasks, used frequently for data categorization...
International audienceThis paper is about the evaluation of the results of clustering algorithms, an...
Unsupervised clustering can be significantly improved using supervision in the form of pairwise cons...
We develop a Bayesian framework for tackling the supervised clustering problem, the generic problem ...
Supervised clustering is an emerging area of machine learning, where the goal is to find class-unifo...
One of the common problems with clustering is that the generated clusters often do not match user ex...
An appropriate distance is an essential ingredient in various real-world learning tasks. Distance me...
[Departement_IRSTEA]Territoires [TR1_IRSTEA]SYNERGIE [Axe_IRSTEA]TETIS-SISO [ADD1_IRSTEA]Dynamiques ...
Distance-based learning methods, like clustering and SVMs, are dependent on good distance metrics. T...
Nowadays, many machine learning procedures are available on the shelve and may be used easily to cal...
Three important projects are studied in this thesis. The first project is "KFC : a clusterwise super...
Trois projets importants sont étudiés dans cette thèse. Le premier projet est "KFC : Une procédure d...
Predictive clustering is a new supervised learning framework derived from traditional clustering. Th...
International audienceInstead of fitting a single and global model (regression, PCA, etc.) to a set ...
Le clustering prédictif est un nouvel aspect d’apprentissage supervisé dérivé du clustering standard...
textClustering is one of the most common data mining tasks, used frequently for data categorization...
International audienceThis paper is about the evaluation of the results of clustering algorithms, an...
Unsupervised clustering can be significantly improved using supervision in the form of pairwise cons...
We develop a Bayesian framework for tackling the supervised clustering problem, the generic problem ...
Supervised clustering is an emerging area of machine learning, where the goal is to find class-unifo...
One of the common problems with clustering is that the generated clusters often do not match user ex...
An appropriate distance is an essential ingredient in various real-world learning tasks. Distance me...
[Departement_IRSTEA]Territoires [TR1_IRSTEA]SYNERGIE [Axe_IRSTEA]TETIS-SISO [ADD1_IRSTEA]Dynamiques ...
Distance-based learning methods, like clustering and SVMs, are dependent on good distance metrics. T...