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Benchmarking neural embeddings for link prediction in knowledge graphs under semantic and structural changes

机译:基于语义与结构变化下知识图中的链路预测基准测试神经嵌入

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摘要

Recently, link prediction algorithms based on neural embeddings have gained tremendous popularity in the Semantic Web community, and are extensively used for knowledge graph completion. While algorithmic advances have strongly focused on efficient ways of learning embeddings, fewer attention has been drawn to the different ways their performance and robustness can be evaluated. In this work we propose an open-source evaluation pipeline, which benchmarks the accuracy of neural embeddings in situations where knowledge graphs may experience semantic and structural changes. We define relation-centric connectivity measures that allow us to connect the link prediction capacity to the structure of the knowledge graph. Such an evaluation pipeline is especially important to simulate the accuracy of embeddings for knowledge graphs that are expected to be frequently updated. (C) 2020 Elsevier B.V. All rights reserved.
机译:最近,基于神经嵌入的链路预测算法在语义网络社区中获得了巨大的普及,并且广泛用于知识图形完成。虽然算法的进步强烈地关注有效的学习嵌入方式,但较少的注意力已经绘制了他们的性能和稳健性的不同方式。在这项工作中,我们提出了一个开源评估管道,该管道基准在知识图可能经历语义和结构变化的情况下,基准标记神经嵌入的准确性。我们定义了以相关的关系连接措施,使我们能够将链路预测容量连接到知识图的结构。这种评估管道尤为重要,可以模拟嵌入式的嵌入式的准确性,了解预期经常更新的知识图表。 (c)2020 Elsevier B.v.保留所有权利。

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