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Word Sense Disambiguation Based on Constrained Random Walks in Linked Semantic Networks

机译:链接语义网络中基于约束随机游走的词义消歧

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Word Sense Disambiguation remains a challenging NLP task. Due to the lack of annotated training data, especially for rare senses, the supervised approaches are usually designed for specific subdomains limited to a narrow subset of identified senses. Recent advances in this area have shown that knowledge-based approaches are more scalable and obtain more promising results in all-words WSD scenarios. In this work we present a faster WSD algorithm based on the Monte Carlo approximation of sense probabilities given a context using constrained random walks over linked semantic networks. We show that the local semantic relatedness is mostly sufficient to successfully identify correct senses when an extensive knowledge base and a proper weighting scheme are used. The proposed methods are evaluated on English (SenseEval, SemEval) and Polish (Skladnica. KPWr) datasets.
机译:词义消歧仍然是一项具有挑战性的NLP任务。由于缺少带注释的训练数据,特别是对于稀有感官,因此通常将受监管的方法设计为仅限于已识别感官的狭窄子集的特定子域。该领域的最新进展表明,基于知识的方法在全字词WSD方案中具有更大的可扩展性并获得更可观的结果。在这项工作中,我们提出了一种基于感知概率的蒙特卡洛近似的更快的WSD算法,该算法在给定上下文的情况下使用链接语义网络上的受限随机游走。我们表明,当使用广泛的知识库和适当的加权方案时,本地语义相关性足以足以成功识别正确的感觉。在英语(SenseEval,SemEval)和波兰语(Skladnica。KPWr)数据集上评估了提出的方法。

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