4.7 Article

Item Concept Network: Towards Concept-Based Item Representation Learning

期刊

出版社

IEEE COMPUTER SOC
DOI: 10.1109/TKDE.2020.2995859

关键词

Correlation; Task analysis; Motion pictures; Computational modeling; Data models; Context modeling; Man-machine systems; Information networks; distributed representations; concept learning; network embedding; concept retrieval

资金

  1. Ministry of Science and Technology of Taiwan [MOST 1063114-E-002-007, 106-2221-E-004-009-MY2, 106-2221E-001-003]

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This paper investigates item concept modeling and proposes a framework called ICN, which leverages the inferential property of concepts to address the issue of conceptual correlation sparsity. The framework consists of two stages: ICN construction and embedding learning, and it outperforms traditional methods in item classification and retrieval tasks.
Item concept modeling is commonly achieved by leveraging textual information. However, many existing models do not leverage the inferential property of concepts to capture word meanings, which therefore ignores the relatedness between correlated concepts, a phenomenon which we term conceptual correlation sparsity. In this paper, we distinguish between word modeling and concept modeling and propose an item concept modeling framework centering around the item concept network (ICN). ICN models and further enriches item concepts by leveraging the inferential property of concepts and thus addresses the correlation sparsity issue. Specifically, there are two stages in the proposed framework: ICN construction and embedding learning. In the first stage, we propose a generalized network construction method to build ICN, a structured network which infers expanded concepts for items via matrix operations. The second stage leverages neighborhood proximity to learn item and concept embeddings. With the proposed ICN, the resulting embedding facilitates both homogeneous and heterogeneous tasks, such as item-to-item and concept-to-item retrieval, and delivers related results which are more diverse than traditional keyword-matching-based approaches. As our experiments on two real-world datasets show, the framework encodes useful conceptual information and thus outperforms traditional methods in various item classification and retrieval tasks.

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