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Lexicalized Dependency Paths Based Supervised Learning for Relation Extraction

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摘要 Log-linear models and more recently neural network models used forsupervised relation extraction requires substantial amounts of training data andtime, limiting the portability to new relations and domains. To this end, we propose a training representation based on the dependency paths between entities in adependency tree which we call lexicalized dependency paths (LDPs). We showthat this representation is fast, efficient and transparent. We further propose representations utilizing entity types and its subtypes to refine our model and alleviatethe data sparsity problem. We apply lexicalized dependency paths to supervisedlearning using the ACE corpus and show that it can achieve similar performancelevel to other state-of-the-art methods and even surpass them on severalcategories.
机构地区 New York University
出处 《Computer Systems Science & Engineering》 SCIE EI 2022年第12期861-870,共10页 计算机系统科学与工程(英文)
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