International audienceThe goal of clustering is to group similar objects into meaningful partitions. This process is well understood when an explicit similarity measure between the objects is given. However, far less is known when this information is not readily available and, instead, one only observes ordinal comparisons such as "object i is more similar to j than to k." In this paper, we tackle this problem using a two-step procedure: we estimate a pairwise similarity matrix from the comparisons before using a clustering method based on semi-definite programming (SDP). We theoretically show that our approach can exactly recover a planted clustering using a near-optimal number of passive comparisons. We empirically validate our theoretica...
25 pages, 5 figures, 7 tablesComparison-based learning addresses the problem of learning when, inste...
International audienceWe propose a meta-heuristic algorithm for clustering objects that are describe...
In this paper we present Similarity Neural Networks (SNNs), a neural network model able to learn a s...
International audienceThe goal of clustering is to group similar objects into meaningful partitions....
Many semi-supervised clustering algorithm-s have been proposed to improve the clus-tering accuracy b...
We study the problem of clustering a set of data points based on their similarity matrix, each entry...
Pairwise clustering methods partition the data space into clusters by the pairwise similarity betwee...
One of the key tools to gain knowledge from data is clustering: identifying groups of instances that...
Clustering is an unsupervised learning technique which aims at grouping a set of objects into cluste...
We present an iterative flat hard clustering algorithm designed to operate on arbitrary similarity m...
Hierarchical clustering based on pairwise similarities is a common tool used in a broad range of sci...
AbstractThe Correlation Clustering problem has been introduced recently [N. Bansal, A. Blum, S. Chaw...
Several clustering methods (e.g., Normalized Cut and Ratio Cut) divide the Min Cut cost function by ...
ia that provide significant distinctions between clustering methods and can help selecting appropria...
Many similarity-based clustering methods work in two separate steps including similarity matrix comp...
25 pages, 5 figures, 7 tablesComparison-based learning addresses the problem of learning when, inste...
International audienceWe propose a meta-heuristic algorithm for clustering objects that are describe...
In this paper we present Similarity Neural Networks (SNNs), a neural network model able to learn a s...
International audienceThe goal of clustering is to group similar objects into meaningful partitions....
Many semi-supervised clustering algorithm-s have been proposed to improve the clus-tering accuracy b...
We study the problem of clustering a set of data points based on their similarity matrix, each entry...
Pairwise clustering methods partition the data space into clusters by the pairwise similarity betwee...
One of the key tools to gain knowledge from data is clustering: identifying groups of instances that...
Clustering is an unsupervised learning technique which aims at grouping a set of objects into cluste...
We present an iterative flat hard clustering algorithm designed to operate on arbitrary similarity m...
Hierarchical clustering based on pairwise similarities is a common tool used in a broad range of sci...
AbstractThe Correlation Clustering problem has been introduced recently [N. Bansal, A. Blum, S. Chaw...
Several clustering methods (e.g., Normalized Cut and Ratio Cut) divide the Min Cut cost function by ...
ia that provide significant distinctions between clustering methods and can help selecting appropria...
Many similarity-based clustering methods work in two separate steps including similarity matrix comp...
25 pages, 5 figures, 7 tablesComparison-based learning addresses the problem of learning when, inste...
International audienceWe propose a meta-heuristic algorithm for clustering objects that are describe...
In this paper we present Similarity Neural Networks (SNNs), a neural network model able to learn a s...