Column Networks for Collective Classification
Pham, Trang (Deakin University) | Tran, Truyen (Deakin University) | Phung, Dinh (Deakin University) | Venkatesh, Svetha (Deakin University)
Relational learning deals with data that are characterized by relational structures. An important task is collective classification, which is to jointly classify networked objects. While it holds a great promise to produce a better accuracy than non-collective classifiers, collective classification is computationally challenging and has not leveraged on the recent breakthroughs of deep learning. We present Column Network (CLN), a novel deep learning model for collective classification in multi-relational domains. CLN has many desirable theoretical properties: (i) it encodes multi-relations between any two instances; (ii) it is deep and compact, allowing complex functions to be approximated at the network level with a small set of free parameters; (iii) local and relational features are learned simultaneously; (iv) long-range, higher-order dependencies between instances are supported naturally; and (v) crucially, learning and inference are efficient with linear complexity in the size of the network and the number of relations. We evaluate CLN on multiple real-world applications: (a) delay prediction in software projects, (b) PubMed Diabetes publication classification and (c) film genre classification. In all of these applications, CLN demonstrates a higher accuracy than state-of-the-art rivals.
Feb-14-2017
- Country:
- North America > United States > California > San Francisco County > San Francisco (0.14)
- Industry:
- Health & Medicine > Therapeutic Area > Endocrinology > Diabetes (0.35)
- Technology: