高维模型特征的可视化

Marie desJardins, P. Rheingans
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引用次数: 7

摘要

使用归纳学习技术为大型高维数据集构建解释模型是发现有用信息的有效方法。然而,这些模型对于用户来说可能很难理解。我们开发了一套可视化方法,使用户能够评估学习模型的质量,比较替代模型,并确定模型可以改进的方法。我们描述了我们探索的可视化技术,包括高维数据空间投影、变量/类相关、实例映射和模型抽样的方法。我们展示了将这些技术应用于从人口普查数据的基准数据集构建的几个模型的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visualization of high-dimensional model characteristics
Using inductive learning techniques to construct explanatory models for large, high-dimensional data sets is a useful way to discover useful information. However, these models can be difficult for users to understand. We have developed a set of visualization methods that enable a user to evaluate the quality of learned models, to compare alternative models, and identify ways in which a model might be improved We describe the visualization techniques we have explored, including methods for high-dimensional data space projection, variable/class correlation, instance mapping, and model sampling We show the results of applying these techniques to several models built from a benchmark data set of census data.
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