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Ranking-based classification of heterogeneous information networks

Published: 21 August 2011 Publication History

Abstract

It has been recently recognized that heterogeneous information networks composed of multiple types of nodes and links are prevalent in the real world. Both classification and ranking of the nodes (or data objects) in such networks are essential for network analysis. However, so far these approaches have generally been performed separately. In this paper, we combine ranking and classification in order to perform more accurate analysis of a heterogeneous information network. Our intuition is that highly ranked objects within a class should play more important roles in classification. On the other hand, class membership information is important for determining a quality ranking over a dataset. We believe it is therefore beneficial to integrate classification and ranking in a simultaneous, mutually enhancing process, and to this end, propose a novel ranking-based iterative classification framework, called RankClass. Specifically, we build a graph-based ranking model to iteratively compute the ranking distribution of the objects within each class. At each iteration, according to the current ranking results, the graph structure used in the ranking algorithm is adjusted so that the sub-network corresponding to the specific class is emphasized, while the rest of the network is weakened. As our experiments show, integrating ranking with classification not only generates more accurate classes than the state-of-art classification methods on networked data, but also provides meaningful ranking of objects within each class, serving as a more informative view of the data than traditional classification.

References

[1]
W. Bian and D. Tao. Manifold regularization for sir with rate root-n convergence. In NIPS 22, pages 117--125. 2009.
[2]
S. Brin and L. Page. The anatomy of a large-scale hypertextual web search engine. Computer Networks, 30(1--7):107--117, 1998.
[3]
B. Cao, N. N. Liu, and Q. Yang. Transfer learning for collective link prediction in multiple heterogeneous domains. In ICML, pages 159--166, 2010.
[4]
D. R. Cutting, J. O. Pedersen, D. R. Karger, and J. W. Tukey. Scatter/gather: A cluster-based approach to browsing large document collections. In SIGIR, pages 318--329, 1992.
[5]
Y. Freund and R. E. Schapire. A decision-theoretic generalization of on-line learning and an application to boosting. J. Computer and System Sciences, 55:119--139, 1997.
[6]
B. Gao, T.-Y. Liu, Z. Ma, T. Wang, and H. Li. A general markov framework for page importance computation. In CIKM, pages 1835--1838, 2009.
[7]
J. Gao, F. Liang, W. Fan, Y. Sun, and J. Han. Graph-based consensus maximization among multiple supervised and unsupervised models. In NIPS 22, pages 585--593, 2009.
[8]
A. Guillory and J. Bilmes. Label selection on graphs. In NIPS 22, 2009.
[9]
S. Hanneke and E. P. Xing. Network completion and survey sampling. In AISTAT, 2009.
[10]
T. Hastie, R. Tibshirani, and J. Friedman. The Elements of Statistical Learning: Data Mining, Inference, and Prediction (2nd ed.). Springer-Verlag, 2009.
[11]
M. Ji, Y. Sun, M. Danilevsky, J. Han, and J. Gao. Graph regularized transductive classification on heterogeneous information networks. In ECML/PKDD (1), pages 570--586, 2010.
[12]
J. M. Kleinberg. Authoritative sources in a hyperlinked environment. J. ACM, 46(5):604--632, 1999.
[13]
B. Long, Z. M. Zhang, X. Wu, and P. S. Yu. Spectral clustering for multi-type relational data. In ICML, pages 585--592, 2006.
[14]
Q. Lu and L. Getoor. Link-based classification. In ICML, 2003.
[15]
S. A. Macskassy and F. Provost. A simple relational classifier. In MRDM at KDD, pages 64--76, 2003.
[16]
S. A. Macskassy and F. Provost. Classification in networked data: A toolkit and a univariate case study. J. Mach. Learn. Res., 8:935--983, 2007.
[17]
J. Neville and D. Jensen. Relational dependency networks. J. Mach. Learn. Res., 8:653--692, 2007.
[18]
Z. Nie, Y. Zhang, J.-R. Wen, and W.-Y. Ma. Object-level ranking: bringing order to web objects. In WWW, pages 567--574, 2005.
[19]
P. Sen and L. Getoor. Link-based classification. Technical Report CS-TR-4858, University of Maryland, February 2007.
[20]
L. Sun, S. Ji, and J. Ye. Hypergraph spectral learning for multi-label classification. In KDD, pages 668--676, 2008.
[21]
Y. Sun, Y. Yu, and J. Han. Ranking-based clustering of heterogeneous information networks with star network schema. In KDD, pages 797--806, 2009.
[22]
T. Yang, R. Jin, Y. Chi, and S. Zhu. Combining link and content for community detection: a discriminative approach. In KDD, pages 927--936, 2009.
[23]
O. Zamir and O. Etzioni. Grouper: A dynamic clustering interface to web search results. Computer Networks, 31(11--16):1361--1374, 1999.
[24]
B. Zhang, H. Li, Y. Liu, L. Ji, W. Xi, W. Fan, Z. Chen, and W.-Y. Ma. Improving web search results using affinity graph. In SIGIR, pages 504--511, 2005.
[25]
Y. Zhang and Z.-H. Zhou. Non-metric label propagation. In IJCAI, pages 1357--1362, 2009.
[26]
D. Zhou, O. Bousquet, T. N. Lal, J. Weston, and B. Schölkopf. Learning with local and global consistency. In NIPS 16, 2003.
[27]
D. Zhou, J. Weston, A. Gretton, O. Bousquet, and B. Schölkopf. Ranking on data manifolds. In NIPS 16, 2003.

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    cover image ACM Conferences
    KDD '11: Proceedings of the 17th ACM SIGKDD international conference on Knowledge discovery and data mining
    August 2011
    1446 pages
    ISBN:9781450308137
    DOI:10.1145/2020408
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    Published: 21 August 2011

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    1. classification
    2. heterogeneous information network
    3. ranking

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