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Genetic algorithms and particle swarm optimization for exploratory projection pursuit

机译:遗传算法和粒子群算法用于探索性投影追踪

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摘要

Exploratory Projection Pursuit (EPP) methods have been developed thirty years ago in the context of exploratory analysis of large data sets. These methods consist in looking for low-dimensional projections that reveal some interesting structure existing in the data set but not visible in high dimension. Each projection is associated with a real valued index which optima correspond to valuable projections. Several EPP indices have been proposed in the statistics literature but the main problem lies in their optimization. In the present paper, we propose to apply Genetic Algorithms (GA) and recent Particle Swarm Optimization (PSO) algorithm to the optimization of several projection pursuit indices. We explain how the EPP methods can be implemented in order to become an efficient and powerful tool for the statistician. We illustrate our proposal on several simulated and real data sets.
机译:探索性投影追踪(EPP)方法是三十年前在对大型数据集进行探索性分析的背景下开发的。这些方法包括寻找低维投影,这些低维投影揭示了数据集中存在的一些有趣结构,但在高维中却不可见。每个投影都与一个实值索引相关联,该最优值对应于有价值的投影。统计文献中已经提出了几种EPP指标,但主要问题在于它们的优化。在本文中,我们建议将遗传算法(GA)和最新的粒子群优化(PSO)算法应用于多个投影追踪指标的优化。我们解释了如何实施EPP方法,以便成为统计学家的有效工具。我们在几个模拟和真实数据集上说明我们的建议。

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