This paper poses the problem of tree-clustering as that of fitting a mixture of tree unions to a set of sample trees. The tree-unions are structures from which the individual data samples belonging to a cluster can be obtained by edit operations. The distribution of observed tree nodes in each cluster sample is assumed to be governed by a Bernoulli distribution. The clustering method is designed to operate when the correspondences between nodes are unknown and must be inferred as part of the learning process. We adopt a minimum description length approach to the problem of fitting the mixture model to data. We make maximum-likelihood estimates of the Bernoulli parameters. The tree-unions and the mixing proportions are sought so as to mi...
In this dissertation, we propose several methodology in clustering and mixture modeling when the use...
In this paper, we present a novel clustering scheme based on binary embeddings, which provides compa...
We address the problem of communicating do-main knowledge from a user to the designer of a clusterin...
This paper poses the problem of tree-clustering as that of fitting a mixture of tree unions to a set...
Abstract. This paper focuses on how to perform the unsupervised clus-tering of tree structures in an...
Abstract. This paper focuses on how to perform the unsupervised learn-ing of tree structures in an i...
This paper describes work aimed at the unsupervised learning of shape-classes from shock trees. We c...
This paper describes work aimed at the unsupervised learning of shape-classes from shock trees. We c...
Abstract. This paper describes work aimed at the unsupervised learning of shape-classes from shock t...
This paper investigates whether meaningful shape categories can be identified in an unsupervised way...
The paper deals with the problem of unsupervised learning with structured data, proposing a mixture ...
Abstract. The problem of learning metrics between structured data (strings, trees or graphs) has bee...
In this thesis we aim to develop a framework for clustering trees and rep- resenting and learning a ...
International audienceGiven repeated observations of several subjects over time, i.e. a longitudinal...
Tree edit distance is one of the most frequently used dis-tance measures for comparing trees. When u...
In this dissertation, we propose several methodology in clustering and mixture modeling when the use...
In this paper, we present a novel clustering scheme based on binary embeddings, which provides compa...
We address the problem of communicating do-main knowledge from a user to the designer of a clusterin...
This paper poses the problem of tree-clustering as that of fitting a mixture of tree unions to a set...
Abstract. This paper focuses on how to perform the unsupervised clus-tering of tree structures in an...
Abstract. This paper focuses on how to perform the unsupervised learn-ing of tree structures in an i...
This paper describes work aimed at the unsupervised learning of shape-classes from shock trees. We c...
This paper describes work aimed at the unsupervised learning of shape-classes from shock trees. We c...
Abstract. This paper describes work aimed at the unsupervised learning of shape-classes from shock t...
This paper investigates whether meaningful shape categories can be identified in an unsupervised way...
The paper deals with the problem of unsupervised learning with structured data, proposing a mixture ...
Abstract. The problem of learning metrics between structured data (strings, trees or graphs) has bee...
In this thesis we aim to develop a framework for clustering trees and rep- resenting and learning a ...
International audienceGiven repeated observations of several subjects over time, i.e. a longitudinal...
Tree edit distance is one of the most frequently used dis-tance measures for comparing trees. When u...
In this dissertation, we propose several methodology in clustering and mixture modeling when the use...
In this paper, we present a novel clustering scheme based on binary embeddings, which provides compa...
We address the problem of communicating do-main knowledge from a user to the designer of a clusterin...