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Neural Tensor Network Training Using Meta-Heuristic Algorithms for RDF Knowledge Bases Completion

机译:基于元启发式算法的神经张量网络训练用于RDF知识库的完成

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Neural tensor network (NTN) has been recently introduced to complete Resource Description Framework (RDF) knowledge bases, which has been the state-of-the-art in the field so far. An RDF knowledge base includes some facts from the real world shown as RDF "triples." In the previous methods, an objective function has been used for training this type of network, and the network parameters should have been set in a way to minimize the function. For this purpose, a classic nonlinear optimization method has been used. Since many replications are needed in this method to get the minimum amount of the function, in this paper, we suggest to combine meta-heuristic optimization methods to minimize the replications and increase the speed of training consequently. So, this problem will be improved using some meta-heuristic algorithms in this new approach to specify which algorithm will get the best results on NTN and its results will be compared with the results of the former methods finally.
机译:最近已经引入了神经张量网络(NTN)来完善资源描述框架(RDF)知识库,这是迄今为止该领域的最新技术。 RDF知识库包含来自现实世界的一些事实,显示为RDF“三元组”。在以前的方法中,目标函数已用于训练这种类型的网络,并且网络参数应该以以下方式设置:最小化功能。为此,已使用经典的非线性优化方法。由于此方法需要多次复制才能获得最少的功能,因此在本文中,我们建议结合元启发式优化方法以最大程度地减少复制并提高训练速度。因此,在这种新方法中,将使用一些元启发式算法来解决此问题,以指定哪种算法将在NTN上获得最佳结果,并将其结果与以前的方法的结果进行最终比较。

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