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Journal ArticleDOI

PathSim: meta path-based top-K similarity search in heterogeneous information networks

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TLDR
Under the meta path framework, a novel similarity measure called PathSim is defined that is able to find peer objects in the network (e.g., find authors in the similar field and with similar reputation), which turns out to be more meaningful in many scenarios compared with random-walk based similarity measures.
Abstract
Similarity search is a primitive operation in database and Web search engines. With the advent of large-scale heterogeneous information networks that consist of multi-typed, interconnected objects, such as the bibliographic networks and social media networks, it is important to study similarity search in such networks. Intuitively, two objects are similar if they are linked by many paths in the network. However, most existing similarity measures are defined for homogeneous networks. Different semantic meanings behind paths are not taken into consideration. Thus they cannot be directly applied to heterogeneous networks.In this paper, we study similarity search that is defined among the same type of objects in heterogeneous networks. Moreover, by considering different linkage paths in a network, one could derive various similarity semantics. Therefore, we introduce the concept of meta path-based similarity, where a meta path is a path consisting of a sequence of relations defined between different object types (i.e., structural paths at the meta level). No matter whether a user would like to explicitly specify a path combination given sufficient domain knowledge, or choose the best path by experimental trials, or simply provide training examples to learn it, meta path forms a common base for a network-based similarity search engine. In particular, under the meta path framework we define a novel similarity measure called PathSim that is able to find peer objects in the network (e.g., find authors in the similar field and with similar reputation), which turns out to be more meaningful in many scenarios compared with random-walk based similarity measures. In order to support fast online query processing for PathSim queries, we develop an efficient solution that partially materializes short meta paths and then concatenates them online to compute top-k results. Experiments on real data sets demonstrate the effectiveness and efficiency of our proposed paradigm.

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Citations
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Proceedings ArticleDOI

HeteSpaceyWalk: A Heterogeneous Spacey Random Walk for Heterogeneous Information Network Embedding

TL;DR: This paper systematically formalizes the meta-path guided random walk as a higher-order Markov chain process, and presents a heterogeneous personalized spacey random walk to efficiently and effectively attain the expected stationary distribution among nodes.
Proceedings ArticleDOI

DisenHAN: Disentangled Heterogeneous Graph Attention Network for Recommendation

TL;DR: This paper uses meta relations to decompose high-order connectivity between node pairs and proposes a disentangled embedding propagation layer which can iteratively identify the major aspect of meta relations in a heterogeneous information network.
Posted Content

Querying Knowledge Graphs by Example Entity Tuples

TL;DR: The system, Graph Query By Example (GQBE), automatically discovers a weighted hidden maximum query graph based on input query tuples, to capture a user's query intent, and efficiently finds and ranks the top approximate matching answer graphs and answer tuples.
Book ChapterDOI

Influence Maximization Across Partially Aligned Heterogenous Social Networks

TL;DR: This work aims at finding a subset of seed users who can maximize the spread of influence in online social networks (OSNs) via which users can influence each others in multiple channels.
Book ChapterDOI

MetaGraph2Vec: Complex semantic path augmented heterogeneous network embedding

TL;DR: A new embedding learning algorithm is proposed, namely MetaGraph2Vec, which uses metagraph to guide the generation of random walks and to learn latent embeddings of multi-typed HIN nodes, able to outperform the state-of-the-art baselines in various heterogeneous network mining tasks such as node classification, node clustering, and similarity search.
References
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Proceedings ArticleDOI

Normalized cuts and image segmentation

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Proceedings ArticleDOI

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