Tools | Bookmark & Share | Make MrWhy My Homepage
MrWhy.com
Go
MrWhy.com » Videos » Self-taught Clustering
Self-taught Clustering
Self-taught Clustering
Report
Self-taught Clustering
This paper focuses on a new clustering task, called self-taught clustering. Self-taught clustering is an instance of unsupervised transfer learning, which aims at clustering a small collection of target unlabeled data with the help of a large amount of auxiliary unlabeled data. The target and auxiliary data can be different in topic distribution. We show that even when the target data are not sufficient to allow effective learning of a high quality feature representation, it is possible to learn the useful features with the help of the auxiliary data on which the target data can be clustered effectively. We propose a co-clustering based self-taught clustering algorithm to tackle this problem, by clustering the target and auxiliary data simultaneously to allow the feature representation from the auxiliary data to influence the target data through a common set of features. Under the new data representation, clustering on the target data can be improved. Our experiments on image clustering show that our algorithm can greatly outperform several state-of-the-art clustering methods when utilizing irrelevant unlabeled auxiliary data.
Channel: VideoLectures
Category: Educational
Video Length: 0
Date Found: October 13, 2010
Date Produced: August 04, 2008
View Count: 0
 
MrWhy.com Special Offers
1
2
3
4
5
 
About Us: About MrWhy.com | Advertise on MrWhy.com | Contact MrWhy.com | Privacy Policy | MrWhy.com Partners
Answers: Questions and Answers | Browse by Category
Comparison Shopping: Comparison Shopping | Browse by Category | Top Searches
Shop eBay: Shop eBay | Browse by Category
Shop Amazon: Shop Amazon | Browse by Category
Videos: Video Search | Browse by Category
Web Search: Web Search | Browse by Searches
Copyright © 2011 MrWhy.com. All rights reserved.