通过PARAMAP和Isomap的混合实现大数据可视化

Ulas Akkucuk
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引用次数: 1

摘要

降维力求用低维结构表示高维数据。Carroll提出了一种著名的方法,称为参数映射或PARAMAP (Shepard & Carroll, 1966),通过对损失函数的迭代最小化来测量从低维表示到原始数据的映射的平滑性或连续性。该算法经过必要的修改重新焕发了活力(Akkucuk & Carroll, 2006)。尽管对算法进行了修改,但仍然需要进行大量随机生成的启动。在本文中,我们讨论了使用Isomap方法的一种变体(Tenenbaum et al., 2000)来获得一个启动框架来取代随机启动。通过一种类似于k-means算法的种子选择的特殊程序来选择核心的地标点集。这些核心地标点集用于创建一个合理的开始,仅运行一次PARAMAP算法,但有效地达到全局最小值。由于Isomap比PARAMAP更快,更不倾向于局部最优问题,并且在配置中添加新点的迭代过程将消耗更少的时间(因为只使用一个起始配置),我们认为最终方法应该更适合处理大型数据集,并且更容易在现实时间内获得可接受的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visualizing big data via a mixture of PARAMAP and Isomap
Dimension reduction strives to represent higher dimensional data by a lower-dimensional structure. A famous approach by Carroll called Parametric Mapping or PARAMAP (Shepard & Carroll, 1966) works by iterative minimization of a loss function measuring the smoothness or continuity of the mapping from the lower dimensional representation to the original data. The algorithm was revitalized with essential modifications (Akkucuk & Carroll, 2006). Even though the algorithm was modified, it still needed to make a large number of randomly generated starts. In this paper we discuss the use of a variant of the Isomap method (Tenenbaum et al., 2000) to obtain a starting framework to replace the random starts. The core set of landmark points are selected by a special procedure akin to selection of seeds for the k-means algorithm. These core set of landmark points are used to create a rational start for running the PARAMAP algorithm only once but effectively reach a global minimum. Since Isomap is faster and less inclined to local optimum problems than PARAMAP, and the iterative process involved in adding new points to the configuration will be less time consuming (since only one starting configuration is used), we believe the resulting method should be better suited to deal with large data sets, and more prone to obtain an acceptable solution in realistic time.
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