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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Compositional Generative Mapping for Tree-Structured Data—Part II: Topographic Projection Model
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Compositional Generative Mapping for Tree-Structured Data—Part II: Topographic Projection Model

机译:树状结构数据的合成生成映射-第二部分:地形投影模型

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摘要

We introduce GTM-SD (Generative Topographic Mapping for Structured Data), which is the first compositional generative model for topographic mapping of tree-structured data. GTM-SD exploits a scalable bottom-up hidden-tree Markov model that was introduced in Part I of this paper to achieve a recursive topographic mapping of hierarchical information. The proposed model allows efficient exploitation of contextual information from shared substructures by a recursive upward propagation on the tree structure which distributes substructure information across the topographic map. Compared to its noncompositional generative counterpart, GTM-SD is shown to allow the topographic mapping of the full sample tree, which includes a projection onto the lattice of all the distinct subtrees rooted in each of its nodes. Experimental results show that the continuous projection space generated by the smooth topographic mapping of GTM-SD yields a finer grained discrimination of the sample structures with respect to the state-of-the-art recursive neural network approach.
机译:我们介绍了GTM-SD(结构化数据的生成式地形图),它是树状结构数据的第一个成分生成模型。 GTM-SD利用了可扩展的自底向上的隐式树马尔可夫模型,该模型在本文的第一部分中引入,以实现递归的层次结构信息地形图。所提出的模型通过在树形结构上进行递归向上传播,从而可以有效利用共享子结构中的上下文信息,从而在地形图上分布子结构信息。与非合成的生成树相比,GTM-SD可以对完整的样本树进行地形图绘制,其中包括根植于其每个节点的所有不同子树的网格投影。实验结果表明,相对于最新的递归神经网络方法,由GTM-SD的平滑地形图生成的连续投影空间对样本结构产生了更好的粒度区分。

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