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Most Influential CIKM 2017 Paper · 2026-03 edition

HIN2Vec: Explore Meta-paths In Heterogeneous Information Networks For Representation Learning

Tao-yang Fu; Wang-Chien Lee; Zhen Lei

Venue
ACM Conference on Information and Knowledge Management (CIKM) 2017
Recognition
Most Influential CIKM 2017 Paper (Rank No. 3)
Edition
2026-03
Impact factor
7
Certificate ID
cbafd329b44d1fb4

Abstract

In this paper, we propose a novel representation learning framework, namely <i> HIN2Vec,</i> for heterogeneous information networks (HINs). The core of the proposed framework is a neural network model, also called HIN2Vec, designed to capture the rich semantics embedded in HINs by exploiting different types of relationships among nodes. Given a set of relationships specified in forms of meta-paths in an HIN, HIN2Vec carries out multiple prediction training tasks jointly based on a target set of relationships to learn latent vectors of nodes and meta-paths in the HIN. In addition to model design, several issues unique to HIN2Vec, including regularization of meta-path vectors, node type selection in negative sampling, and cycles in random walks, are examined. To validate our ideas, we learn latent vectors of nodes using four large-scale real HIN datasets, including Blogcatalog, Yelp, DBLP and U.S. Patents, and use them as features for multi-label node classification and link prediction applications on those networks. Empirical results show that HIN2Vec soundly outperforms the state-of-the-art representation learning models for network data, including DeepWalk, LINE, node2vec, PTE, HINE and ESim, by 6.6% to 23.8% of $micro$-$f_1$ in multi-label node classification and 5% to 70.8% of $MAP$ in link prediction.

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