Task-Guided and Path-Augmented Heterogeneous Network Embedding for Author Identification
Ting Chen, Yizhou Sun

TL;DR
This paper introduces a task-guided, path-augmented heterogeneous network embedding method for author identification, improving accuracy by incorporating task-specific guidance and meta paths in network embedding.
Contribution
It proposes a novel embedding model that integrates task guidance and meta path selection for heterogeneous networks, enhancing author identification performance.
Findings
Significantly improved author identification accuracy.
Effective incorporation of meta paths in heterogeneous network embedding.
Outperforms existing methods in experiments.
Abstract
In this paper, we study the problem of author identification under double-blind review setting, which is to identify potential authors given information of an anonymized paper. Different from existing approaches that rely heavily on feature engineering, we propose to use network embedding approach to address the problem, which can automatically represent nodes into lower dimensional feature vectors. However, there are two major limitations in recent studies on network embedding: (1) they are usually general-purpose embedding methods, which are independent of the specific tasks; and (2) most of these approaches can only deal with homogeneous networks, where the heterogeneity of the network is ignored. Hence, challenges faced here are two folds: (1) how to embed the network under the guidance of the author identification task, and (2) how to select the best type of information due to the…
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Taxonomy
TopicsTopic Modeling · Authorship Attribution and Profiling · Text and Document Classification Technologies
