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Neighbourhood-preserving dimension reduction via localised multidimensional scaling

机译:通过局部多维缩放的邻域保持尺寸减少

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摘要

When high-dimensional data has an intrinsic lower-dimensional manifold structure, one can incorporate such structure knowledge into dimension reduction and design algorithms for special purposes, e.g., preserving the local neighbourhood or uncovering the global structure of data. Based on such assumption, we propose a neighbourhood-preserving dimension reduction algorithm, Localised Multidimensional Scaling with BFS (LMB), for generating low dimensional representation of data that has a latent manifold structure. LMB applies the Multidimensional Scaling (MDS) on the local neighbourhood of data and stitches the reduced neighbourhoods together to form a global reduction. By analysing the local structure of data, LMB can automatically find a well-fit space for reduction. We thoroughly compare the performance of LMB with other state-of-the-art linear or nonlinear algorithms on both synthetic data and real data. Numerical experiments show that LMB efficiently preserves the neighbourhood while uncovering the embedded structure of data. LMB also has a low complexity of O(n(2)) for a n-item data set. (C) 2017 Elsevier B.V. All rights reserved.
机译:当高维数据具有固有的低维歧管结构时,可以将这种结构知识包含成用于特殊目的的维度减少和设计算法,例如,例如,保留本地邻域或揭示全局数据结构。基于此类假设,我们提出了一种邻域保存的尺寸减少算法,具有BFS(LMB)的局部多维缩放,用于产生具有潜在歧管结构的数据的低尺寸表示。 LMB在数据附近应用多维缩放(MDS),并将降低的街区缝合在一起以形成全局减少。通过分析数据的局部结构,LMB可以自动找到一个适合的变化空间。我们将LMB与合成数据和实际数据的其他最先进的线性或非线性算法彻底比较了LMB的性能。数值实验表明,LMB有效地保留了邻域,同时揭示了嵌入的数据结构。 LMB对N项数据集的O(n(2))也具有低复杂性。 (c)2017年Elsevier B.V.保留所有权利。

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