Withdraw
Loading…
Graph-based Classification on Heterogeneous Information Networks
Ji, Ming; Sun, Yizhou; Danilevsky, Marina; Han, Jiawei
Loading…
Permalink
https://hdl.handle.net/2142/15444
Description
- Title
- Graph-based Classification on Heterogeneous Information Networks
- Author(s)
- Ji, Ming
- Sun, Yizhou
- Danilevsky, Marina
- Han, Jiawei
- Contributor(s)
- Gao, Jing
- Issue Date
- 2010-04-30
- Keyword(s)
- Heterogeneous Information Networks
- Classification
- Semi-supervised learning
- Abstract
- A heterogeneous information network is a network composed of multiple types of objects and links. Recently, it has been recognized that strongly-typed heterogeneous information networks are prevalent in the real world. Sometimes, label information is available for part of the objects. Learning from such labeled and unlabeled data via classification can lead to good knowledge extraction of the hidden network structure. However, although classification on homogeneous networks has been studied over decades, classification on heterogeneous networks has not been explored until recently. In this paper, we consider the transductive classification problem on heterogeneous networked data which share a common topic. Only part of the objects in the given network are labeled, and we aim to predict labels for all types of the remaining objects. A novel graph-based regularization framework, GNetClass, is proposed to model the link structure in information networks with arbitrary network schema and number of object/link types. Specifically, we explicitly respect the type differences by preserving consistency over each relation graph corresponding to each type of links separately. Efficient computational schemes are then introduced to solve the corresponding optimization problem. Experiments on the DBLP data set show that our algorithm significantly improves the classification accuracy over existing state-of-the-art methods.
- Type of Resource
- text
- Language
- en
- Permalink
- http://hdl.handle.net/2142/15444
Owning Collections
Manage Files
Loading…
Edit Collection Membership
Loading…
Edit Metadata
Loading…
Edit Properties
Loading…
Embargoes
Loading…