大规模知识库中隐式关系查找的矩阵方法

Yan Wang, Yi Zeng, N. Zhong, Zhisheng Huang
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引用次数: 0

摘要

知识库(KB)中实体之间的关系并不总是显式表示的。此外,实体可以隐式地存在于显式实体中。这些现象在大规模的KBs中非常普遍。在知识库中发现隐式关系可以使原始知识库更有意义,并增强其在实际应用程序中的潜力。在本文中,我们关注的是在大规模KBs中寻找隐式关系网络的问题。由于网络可以在数学上表示为矩阵,因此隐式关系查找的推理过程可以转换为矩阵计算。考虑到矩阵计算代替基于逻辑和基于图的推理有许多优点(例如存储和处理关系的可扩展性),通过实现KBs的数学性质,我们使用矩阵变换和计算来研究隐式关系查找问题。我们给出了几个使用大规模KBs的说明性实际示例来验证该框架。此外,我们还研究了矩阵存储的可扩展性的潜在问题,以及计算成本和时间。在此基础上,考虑到可扩展性问题,我们开发了MIRF和MIRF- l算法,如果具体情况下的规则能够清晰地表达,则可以有效地处理这类问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Matrix Approach to Implicit Relationship Finding in Large-Scale Knowledge Bases
Relationships between entities in a Knowledge Base (KB) are not always explicitly expressed. In addition, entities may implicitly exist within explicit ones. These phenomena are very common when it comes to large-scale KBs. Finding implicit relationships in a KB can make the original KB more meaningful and enhance its potential in real world applications. In this paper, we focus on the problem of finding implicit-relationship networks in large-scale KBs. Since a network can be mathematically expressed as a matrix, the process of reasoning for implicit relationship finding can be transformed to matrix computation. Considering that there are many advantages for matrix computation instead of logic based and graph based reasoning (such as scalability for storing and processing relationships), by realizing the mathematical nature of KBs, we use matrix transformation and computation to investigate the problem of implicit relationship finding. We give several illustrative real world examples using large-scale KBs to validate this framework. In addition, we also investigate the potential problems of scalability on matrix storage, as well as the cost for computation and time. Based on the proposed approach and the consideration on the scalability issue, we develop the MIRF and MIRF-L algorithms which can efficiently process this kind of problem if the rules in concrete cases can be clearly expressed.
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