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A Probabilistic Algorithm to Predict Missing Facts from Knowledge Graphs

机译:一种预测知识图中缺失事实的概率算法

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Knowledge Graph, as the name says, is a way to represent knowledge using a directed graph structure (nodes and edges). However, such graphs are often incomplete or contain a considerable amount of wrong facts. This work presents ProA: a probabilistic algorithm to predict missing facts from Knowledge Graphs based on the probability distribution over paths between entities. Compared to current state-of-the-art approaches, ProA has the following advantages: simplicity as it considers only the topological structure of a knowledge graph, good performance as it does not require any complex calculations, and readiness as it has no other requirement but the graph itself.
机译:知识图形,正如名称所说,是一种使用定向图形结构(节点和边缘)表示知识的方式。然而,这些图通常不完整或包含相当大量的错误事实。这项工作提出了PROA:一种概率算法,用于基于实体之间的路径的概率分布来预测知识图中缺失的事实。与目前的最先进的方法相比,PROA具有以下优点:简单起见,仅考虑知识图表的拓扑结构,良好的性能,因为它不需要任何复杂的计算,并且准备就绪,因为它没有其他要求但图表本身。

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