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Ontology alignment using artificial neural network for large-scale ontologies

机译:使用人工神经网络进行大规模本体的本体对齐

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摘要

Achieving high match accuracy for a large variety of ontologies, considering a single matcher is often not sufficient for high match quality. Therefore, combining the corresponding weights for different semantic aspects, reflecting their different importance (or contributions) becomes unavoidable for ontology matching. Combining multiple measures into a single similarity metric has been traditionally solved using weights determined manually by an expert, or calculated through general methods (e.g. average or sigmoid function), however this does not provide a flexible and self-configuring matching tool. In this paper, an intelligent combination using Artificial Neural Network (ANN) as a machine learning-based method to ascertain how to combine multiple similarity measures into a single aggregated metric with the final aim of improving the ontology alignment quality is proposed. XMap++ is applied to benchmark and anatomy tests at OAEI campaign 2012. Results show that neural network boosts the performance in most cases, and that the proposed novel approach is competitive with top-ranked system.
机译:对于各种各样的本体,要实现高匹配精度,考虑单个匹配器通常不足以实现高匹配质量。因此,将不同语义方面的相应权重组合起来,反映它们的不同重要性(或贡献)对于本体匹配是不可避免的。传统上,使用专家手动确定的权重或通过通用方法(例如,平均值或S型函数)计算的权重来解决将多个度量组合到单个相似性度量中的问题,但是,这并未提供灵活且自配置的匹配工具。本文提出了一种基于人工神经网络(ANN)的基于机器学习的智能组合方法,以确定如何将多个相似性度量组合为一个聚合度量,最终目的是提高本体的对齐质量。 XMap ++在OAEI活动2012中被用于基准测试和解剖学测试。结果表明,神经网络在大多数情况下都可以提高性能,并且所提出的新颖方法与顶级系统具有竞争力。

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