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A Pheromone-Like Model for Semantic Context Extraction from Collaborative Networks

机译:一种类似信息素的协作网络语义上下文模型提取

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The extraction of semantic contexts is a relevant issue in information retrieval to provide high quality query results. This paper introduces the semantic context underlying a set of given input concepts as defined by the relevant multiple explanation paths connecting the input concepts in a collaborative network. A pheromone-like model based on this approach is introduced for the detection and the extraction of multiple paths of explanation between seed concepts. The exploration of the online collaborative network of explanation uses a heuristic driven random walk, based on semantic proximity measures. Random walks distribute pheromone on the traversed arcs used to evaluate the relevance of concepts in the multiple explanatory paths to be extracted. Experimental results obtained on accepted datasets and contexts extracted from the Wikipedia collaborative network show that the proposed algorithm can extract contexts with high relevance degree, which outperforms other methods. The approach has a general applicability and can be extended to other explanation-based online collaborative networks.
机译:语义上下文的提取是信息检索中提供高质量查询结果的一个相关问题。本文介绍了一组由协作网络中连接输入概念的相关多个解释路径所定义的一组给定输入概念的语义上下文。引入了一种基于这种方法的信息素样模型,用于检测和提取种子概念之间的多种解释路径。对在线解释协作网络的探索基于语义接近度度量,使用启发式驱动的随机游动。随机游走将信息素分布在用于评估要提取的多个解释路径中概念相关性的遍历弧上。在可接受的数据集和从Wikipedia协作网络中提取的上下文中获得的实验结果表明,该算法可以提取具有较高相关度的上下文,其性能优于其他方法。该方法具有普遍适用性,可以扩展到其他基于解释的在线协作网络。

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