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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Local discriminative distance metrics ensemble learning
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Local discriminative distance metrics ensemble learning

机译:局部判别距离度量集成学习

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摘要

The ultimate goal of distance metric learning is to incorporate abundant discriminative information to keep all data samples in the same class close and those from different classes separated. Local distance metric methods can preserve discriminative information by considering the neighborhood influence. In this paper, we propose a new local discriminative distance metrics (LDDM) algorithm to learn multiple distance metrics from each training sample (a focal sample) and in the vicinity of that focal sample (focal vicinity), to optimize local compactness and local separability. Those locally learned distance metrics are used to build local classifiers which are aligned in a probabilistic framework via ensemble learning. Theoretical analysis proves the convergence rate bound, the generalization bound of the local distance metrics and the final ensemble classifier. We extensively evaluate LDDM using synthetic datasets and large benchmark UCI datasets.
机译:距离度量学习的最终目标是合并大量的判别信息,以使同一类别中的所有数据样本保持接近,而不同类别中的所有数据样本则保持分离。局部距离度量方法可以通过考虑邻域影响来保留判别信息。在本文中,我们提出了一种新的局部判别距离度量(LDDM)算法,以从每个训练样本(一个焦点样本)以及该焦点样本的附近(焦点附近)学习多个距离度量,以优化局部紧凑性和局部可分离性。这些本地学习的距离度量用于构建整体分类器,这些局部分类器通过集成学习在概率框架中对齐。理论分析证明了收敛速度的界线,局部距离度量的广义界线和最终的集成分类器。我们使用合成数据集和大型基准UCI数据集广泛评估LDDM。

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