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SIMILARITY-BASED RETRIEVAL WITH STRUCTURE-SENSITIVE SPARSE BINARY DISTRIBUTED REPRESENTATIONS

机译:基于结构相似性的稀疏二进制分布表示的基于相似度的检索

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We present an approach to similarity-based retrieval from knowledge bases that takes into account both the structure and semantics of knowledge base fragments. Those fragments, or analogues, are represented as sparse binary vectors that allow a computationally efficient estimation of structural and semantic similarity by the vector dot product. We present the representation scheme and experimental results for the knowledge base that was previously used for testing of leading analogical retrieval models MAC/FAC and ARCS. The experiments show that the proposed single-stage approach provides results compatible with or better than the results of two-stage models MAC/FAC and ARCS in terms of recall and precision. We argue that the proposed representation scheme is useful for large-scale knowledge bases and free-structured database applications.
机译:我们提出了一种从知识库中基于相似度的检索方法,该方法考虑了知识库片段的结构和语义。这些片段或类似物表示为稀疏的二进制向量,该向量允许通过向量点积对结构和语义相似度进行计算上有效的估计。我们介绍了知识库的表示方案和实验结果,该知识库以前用于测试领先的类似检索模型MAC / FAC和ARCS。实验表明,所提出的单阶段方法在查全率和精确度方面提供了与两阶段模型MAC / FAC和ARCS兼容或更好的结果。我们认为所提出的表示方案对于大规模知识库和自由结构化数据库应用程序很有用。

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