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Combining WordNet and ConceptNet for Automatic Query Expansion: A Learning Approach

机译:结合WordNet和ConceptNet进行自动查询扩展:一种学习方法

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We present a novel approach that transforms the weighting task to a typical coarse-grained classification problem, aiming to assign appropriate weights for candidate expansion terms, which are selected from WordNet and ConceptNet by performing spreading activation. This transformation benefits us to automatically combine various features. The experimental results show that our approach successfully combines WordNet and ConceptNet and improves retrieval performance. We also investigated the relationship between query difficulty and effectiveness of our approach. The results show that query expansion utilizing the two resources obtains the largest improving effect upon queries of "medium" difficulty.
机译:我们提出了一种将加权任务转换为典型的粗粒度分类问题的新颖方法,旨在为候选扩展项分配适当的权重,这些扩展项是通过执行扩展激活从WordNet和ConceptNet中选择的。这种转换使我们受益于自动组合各种功能。实验结果表明,我们的方法成功地将WordNet和ConceptNet结合在一起,并提高了检索性能。我们还研究了查询难度与方法有效性之间的关系。结果表明,利用这两种资源进行的查询扩展对“中”难度查询的改进效果最大。

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