Visual Diagnostics for Constrained Optimisation with Application to Guided Tours

R J. Pub Date : 2021-04-08 DOI:10.32614/RJ-2021-105
H.Sherry Zhang, D. Cook, U. Laa, Nicolas Langren'e, Patricia Men'endez
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引用次数: 3

Abstract

A guided tour helps to visualise high-dimensional data by showing low-dimensional projections along a projection pursuit optimisation path. Projection pursuit is a generalisation of principal component analysis, in the sense that different indexes are used to define the interestingness of the projected data. While much work has been done in developing new indexes in the literature, less has been done on understanding the optimisation. Index functions can be noisy, might have multiple local maxima as well as an optimal maximum, and are constrained to generate orthonormal projection frames, which complicates the optimization. In addition, projection pursuit is primarily used for exploratory data analysis, and finding the local maxima is also useful. The guided tour is especially useful for exploration, because it conducts geodesic interpolation connecting steps in the optimisation and shows how the projected data changes as a maxima is approached. This work provides new visual diagnostics for examining a choice of optimisation procedure, based on the provision of a new data object which collects information throughout the optimisation. It has helped to diagnose and fix several problems with projection pursuit guided tour. This work might be useful more broadly for diagnosing optimisers, and comparing their performance. The diagnostics are implemented in the R package, ferrn.
约束优化的可视化诊断与导游应用
导览通过显示沿投影追踪优化路径的低维投影,帮助可视化高维数据。投影寻踪是主成分分析的一种推广,从某种意义上说,不同的指标被用来定义投影数据的兴趣。虽然在文献中开发新索引方面已经做了很多工作,但在理解优化方面做得很少。索引函数可能有噪声,可能有多个局部最大值和最优最大值,并且约束生成标准正交投影帧,这会使优化变得复杂。此外,投影寻踪主要用于探索性数据分析,寻找局部最大值也很有用。导览对勘探特别有用,因为它在优化步骤中进行了测地线插值,并显示了预测数据在接近最大值时如何变化。这项工作为检查优化过程的选择提供了新的可视化诊断,基于在整个优化过程中收集信息的新数据对象的提供。它有助于诊断和解决投影寻踪导游的几个问题。这项工作对于诊断优化器和比较它们的性能可能更广泛地有用。诊断是在R包中实现的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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