International audienceIn our data driven world, categorization is of major importance to help end-users and decision makers understanding information structures. Supervised learning techniques rely on annotated samples that are often difficult to obtain and training often overfits. On the other hand, unsupervised clustering techniques study the structure of the data without disposing of any training data. Given the difficulty of the task, supervised learning often outperforms unsupervised learning. A compromise is to use a partial knowledge, selected in a smart way, in order to boost performance while minimizing learning costs, what is called semi-supervised learning. In such use case, Spectral Clustering proved to be an efficient method. A...
textClustering is one of the most common data mining tasks, used frequently for data categorization...
Semi-supervised clustering methods incorporate a limited amount of supervision into the clustering p...
Due to strong demand for the ability to enforce top-down struc-ture on clustering results, semi-supe...
International audienceIn our data driven world, clustering is of major importance to help end-users ...
National audienceIn our data driven world, clustering is of major importance to help end-users and d...
In many machine learning domains (e.g. text processing, bioinformatics), there is a large supply of ...
One of the key tools to gain knowledge from data is clustering: identifying groups of instances that...
International audienceIn this article, we propose a semi-supervised version of spectral clustering, ...
Finally, we study how to construct an appropriate graph for spectral clustering. Given a local simil...
In many machine learning domains, there is a large supply of unlabeled data but limited labeled data...
Abstract. The exploration of domain knowledge to improve the mining process begins to give its first...
Abstract—In many real-world applications we can model the data as a graph with each node being an in...
Abstract—Semi-supervised clustering seeks to augment traditional clustering methods by incorporating...
Clustering images has been an interesting problem for computer vision and machine learning researche...
International audienceIn most real world clustering scenarios, experts generally dispose of limited ...
textClustering is one of the most common data mining tasks, used frequently for data categorization...
Semi-supervised clustering methods incorporate a limited amount of supervision into the clustering p...
Due to strong demand for the ability to enforce top-down struc-ture on clustering results, semi-supe...
International audienceIn our data driven world, clustering is of major importance to help end-users ...
National audienceIn our data driven world, clustering is of major importance to help end-users and d...
In many machine learning domains (e.g. text processing, bioinformatics), there is a large supply of ...
One of the key tools to gain knowledge from data is clustering: identifying groups of instances that...
International audienceIn this article, we propose a semi-supervised version of spectral clustering, ...
Finally, we study how to construct an appropriate graph for spectral clustering. Given a local simil...
In many machine learning domains, there is a large supply of unlabeled data but limited labeled data...
Abstract. The exploration of domain knowledge to improve the mining process begins to give its first...
Abstract—In many real-world applications we can model the data as a graph with each node being an in...
Abstract—Semi-supervised clustering seeks to augment traditional clustering methods by incorporating...
Clustering images has been an interesting problem for computer vision and machine learning researche...
International audienceIn most real world clustering scenarios, experts generally dispose of limited ...
textClustering is one of the most common data mining tasks, used frequently for data categorization...
Semi-supervised clustering methods incorporate a limited amount of supervision into the clustering p...
Due to strong demand for the ability to enforce top-down struc-ture on clustering results, semi-supe...