DocumentCode
116554
Title
Multi-label collective classification in multi-attribute multi-relational network data
Author
Vijayan, Priyesh ; Subramanian, Sivaraman ; Ravindran, Binoy
Author_Institution
Ericsson Res., Chennai, India
fYear
2014
fDate
17-20 Aug. 2014
Firstpage
509
Lastpage
514
Abstract
Classical machine learning techniques assume the data to be i.i.d., but the real world data is inherently relational and can generally be represented using graphs or some variants of a graph representation. The importance of modeling relational data is evident from its increasing presence in many domains: Telecom networks, WWW, social networks, organizational networks, images, protein sequences, etc. This field has recently been receiving a lot of attention in various communities under different themes depending on the problem addressed and the nature of solution proposed. Collective classification is one such popular approach which involves the use of a local classifier that embeds the node´s own attributes and neighbors´ information in a feature vector, and classifies the nodes in an iterative procedure. Despite the increasing popularity, there is not much attention paid towards datasets with multiple attributes and multi-relational (MAMR) networks under multi-label scenarios. In MAMR data, nodes can be represented using multiple types of attributes (attribute views) and there are multiple link types between the nodes. For example, in Twitter, users can be represented using their tweets, urls shared, hashtags and list memberships. And different Twitter users can be connected using follower, followed by and re-tweet links. Secondly, in many networks, nodes are associated with more than one label. For instance, Twitter users can be tagged with one or more labels from a set L, where L contains various movie genres that a user might like. Motivated by this, we propose a learning technique for multi-label collective classification using multiple attribute views on multi-relational network data which captures complex label correlations within and across attribute/relationship types. We empirically evaluate our proposed approach on Twitter and MovieLens datasets, and we show that it performs better than the state-of-art approaches.
Keywords
learning (artificial intelligence); pattern classification; social networking (online); MAMR data; MovieLens datasets; Twitter users; classical machine learning techniques; complex label correlations; multiattribute multirelational network data; multilabel collective classification; relational data; Correlation; Data mining; Data models; Motion pictures; Twitter; Vectors;
fLanguage
English
Publisher
ieee
Conference_Titel
Advances in Social Networks Analysis and Mining (ASONAM), 2014 IEEE/ACM International Conference on
Conference_Location
Beijing
Type
conf
DOI
10.1109/ASONAM.2014.6921634
Filename
6921634
Link To Document