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Smooth Neighborhood Structure Mining on Multiple Affinity Graphs with Applications to Context-Sensitive Similarity

机译:多个亲和图上的平滑邻域结构挖掘及其在上下文敏感相似度中的应用

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Due to the ability of capturing geometry structures of the data manifold, diffusion process has demonstrated impressive performances in retrieval task by spreading the similarities on the affinity graph. In view of robustness to noise edges, diffusion process is usually localized, i.e., only propagating similarities via neighbors. However, selecting neighbors smoothly on graph-based manifolds is more or less ignored by previous works. In this paper, we propose a new algorithm called Smooth Neighborhood (SN) that mines the neighborhood structure to satisfy the manifold assumption. By doing so, nearby points on the underlying manifold are guaranteed to yield similar neighbors as much as possible. Moreover, SN is adjusted to tackle multiple affinity graphs by imposing a weight learning paradigm, and this is the primary difference compared with related works which are only applicable with one affinity graph. Exhausted experimental results and comparisons against other algorithms manifest the effectiveness of the proposed algorithm.
机译:由于捕获数据流形的几何结构的能力,扩散过程通过在亲和图上分布相似性,在检索任务中表现出令人印象深刻的性能。考虑到对噪声边缘的鲁棒性,扩散过程通常是局部的,即仅通过邻居传播相似性。然而,在先前的工作中或多或少地忽略了在基于图的流形上平滑选择邻居。在本文中,我们提出了一种称为平滑邻域(SN)的新算法,该算法挖掘邻域结构来满足流形假设。这样,可以保证基础流形上的邻近点尽可能多地产生相似的邻居。此外,通过施加权重学习范式来调整SN以处理多个亲和图,这是与仅适用于一个亲和图的相关作品相比的主要区别。详尽的实验结果以及与其他算法的比较证明了该算法的有效性。

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