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Memory-Efficient A*-Search using Sparse Embeddings

机译:使用稀疏嵌入式的记忆高效A * -Search

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摘要

When searching for optimal paths in a network, algorithms like A*-search need an approximation of the minimal costs between the current node and a target node. A reference node embedding is a universal method for making such an approximation working for any type of positive edge weights. A drawback of the approach is that the memory consumption of the embedding is linearly increasing with the number of attributes and landmarks. In this paper, we propose methods for significantly decreasing the memory consumption of embedded graphs and examine the impact of the landmark selection.
机译:当在网络中搜索最佳路径时,像* -Search等算法需要近似当前节点和目标节点之间的最小成本。参考节点嵌入是用于为任何类型的正边缘权重工作的这种近似的通用方法。方法的缺点是嵌入的存储器消耗与属性和地标的数量线性增加。在本文中,我们提出了用于显着降低嵌入图的内存消耗的方法,并检查地标选择的影响。

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