DocumentCode :
116360
Title :
A new space for comparing graphs
Author :
Shrivastava, Ashish ; Ping Li
Author_Institution :
Dept. of Comput. Sci., Comput. & Inf. Sci., Cornell Univ., Ithaca, NY, USA
fYear :
2014
fDate :
17-20 Aug. 2014
Firstpage :
62
Lastpage :
71
Abstract :
Finding a new mathematical representation for graphs, which allows direct comparison between different graph structures, is an open-ended research direction. Having such a representation is the first prerequisite for a variety of machine learning algorithms like classification, clustering, etc., over graph datasets. In this paper, we propose a symmetric positive semidefinite matrix with the (i, j)-th entry equal to the covariance between normalized vectors Aie and Aje (e being vector of all ones) as a representation for a graph with adjacency matrix A. We show that the proposed matrix representation encodes the spectrum of the underlying adjacency matrix and it also contains information about the counts of small sub-structures present in the graph such as triangles and small paths. In addition, we show that this matrix is a “graph invariant”. All these properties make the proposed matrix a suitable object for representing graphs. The representation, being a covariance matrix in a fixed dimensional metric space, gives a mathematical embedding for graphs. This naturally leads to a measure of similarity on graph objects. We define similarity between two given graphs as a Bhattacharya similarity measure between their corresponding covariance matrix representations. As shown in our experimental study on the task of social network classification, such a similarity measure outperforms other widely used state-of-the-art methodologies. Our proposed method is also computationally efficient. The computation of both the matrix representation and the similarity value can be performed in operations linear in the number of edges. This makes our method scalable in practice. We believe our theoretical and empirical results provide evidence for studying truncated power iterations, of the adjacency matrix, to characterize social networks.
Keywords :
covariance matrices; graph theory; learning (artificial intelligence); pattern classification; social networking (online); Bhattacharya similarity; adjacency matrix; covariance matrix representation; dimensional metric space; graph invariant; graph objects; graph structures; machine learning algorithms; mathematical embedding; mathematical representation; social network classification; symmetric positive semidefinite matrix; Computer aided engineering;
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.2014.6921561
Filename :
6921561
Link To Document :
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