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A shallow neural model for relation prediction

机译:关于关系预测的浅神经模型

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Knowledge graph completion refers to predicting missing triples. Most approaches achieve this goal by predicting entities, given an entity and a relation. We predict missing triples via the relation prediction. To this end, we frame the relation prediction problem as a multi-label classification problem and propose a shallow neural model (SHALLOM) that accurately infers missing relations from entities. Shallom is analogous to C-BOW as both approaches predict a central token (p) given surrounding tokens ((s, o)). Our experiments indicate that Shallom outperforms state-of-the-art approaches on the FB15K-237 and WN18RR with margins of up to 3% and 8% (absolute), respectively, while requiring a maximum training time of 8 minutes on these datasets. We ensure the reproducibility of our results by providing an open-source implementation including training and evaluation scripts at https://github.com/dice-group/Shallom.
机译:知识图表完成是指预测缺失的三元。大多数方法通过预测实体和关系来实现这一目标。我们通过关系预测预测丢失的三倍。为此,我们将关系预测问题框架作为多标签分类问题框架,并提出了一种准确的神经模型(ScermOrom),即精确地infers从实体中缺失关系。只要两种方法都预测到围绕令牌的中心令牌(P)((s,o)),粗粗粗粗粗。我们的实验表明,在FB15K-237和Wn18RR上的突出性差异,分别具有高达3%和8%(绝对)的边缘,同时需要在这些数据集中的最大训练时间为8分钟。我们通过提供开源实现,在HTTPS://github.com/dice-group/shallom提供培训和评估脚本,确保我们的结果的再现性。

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