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Dimensionality reduction techniques for multivariate data classification, interactive visualization, and analysis-systematic feature selection vs. extraction

机译:用于多元数据分类,交互式可视化以及分析系统特征选择与提取的降维技术

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The curse of dimensionality, i.e., the fact that feature spaces of increasing dimensionality with finite sample sizes tend to be empty, has given incentive to a plethora of research activities in various disciplines and diverse application fields, e.g., statistics or neural networks. Three major application fields are multivariate data classification, data analysis and data visualization. In this contribution, methods for dimensionality reduction from three decades of interdisciplinary research are browsed and their applicability in the above application domains is briefly discussed. Complementing techniques for ensuing interactive data visualization, data navigation and visual exploratory data analysis are presented, which exploit the remarkable human perceptive and associative capabilities for interactive visual exploratory data analysis and systematic recognition system design. The main focus of this paper is on the comparison of feature selection and feature extraction techniques and the potential benefit of their combination. Further, the interesting implications of dimensionality reduction for VLSI design and related area and power consumption are pointed out.
机译:维数的诅咒,即维数增加且具有有限样本大小的特征空间趋于空的事实,已经激励了各种学科和不同应用领域(例如统计或神经网络)的大量研究活动。三个主要的应用领域是多元数据分类,数据分析和数据可视化。在此贡献中,浏览了数十年来跨学科研究中的降维方法,并简要讨论了它们在上述应用领域中的适用性。提出了用于确保交互式数据可视化,数据导航和视觉探索性数据分析的补充技术,这些技术利用了非凡的人类感知和关联能力进行交互式视觉探索性数据分析和系统识别系统设计。本文的主要重点是特征选择和特征提取技术的比较及其组合的潜在好处。此外,指出了尺寸减小对于VLSI设计以及相关面积和功耗的有趣含义。

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