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首页> 外文期刊>Computer Graphics Forum: Journal of the European Association for Computer Graphics >Semi-Supervised Dimensionality Reduction based on Partial Least Squares for Visual Analysis of High Dimensional Data
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Semi-Supervised Dimensionality Reduction based on Partial Least Squares for Visual Analysis of High Dimensional Data

机译:基于偏最小二乘的半监督降维,用于高维数据的可视化分析

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摘要

Dimensionality reduction is employed for visual data analysis as a way to obtaining reduced spaces for high dimensional data or to mapping data directly into 2D or 3D spaces. Although techniques have evolved to improve data segregation on reduced or visual spaces, they have limited capabilities for adjusting the results according to user's knowledge. In this paper, we propose a novel approach to handling both dimensionality reduction and visualization of high dimensional data, taking into account user's input. It employs Partial Least Squares (PLS), a statistical tool to perform retrieval of latent spaces focusing on the discriminability of the data. The method employs a training set for building a highly precise model that can then be applied to a much larger data set very effectively. The reduced data set can be exhibited using various existing visualization techniques. The training data is important to code user's knowledge into the loop. However, this work also devises a strategy for calculating PLS reduced spaces when no training data is available. The approach produces increasingly precise visual mappings as the user feeds back his or her knowledge and is capable of working with small and unbalanced training sets.
机译:降维用于可视化数据分析,作为一种获得高维数据缩减空间或将数据直接映射到2D或3D空间的方法。尽管已经发展了一些技术来改进缩小空间或视觉空间上的数据隔离,但它们根据用户的知识调整结果的能力有限。在本文中,我们提出一种新颖的方法来处理降维和高维数据可视化,同时考虑到用户的输入。它使用偏最小二乘(PLS),这是一种统计工具,可以着重于数据的可辨别性来执行潜在空间的检索。该方法采用训练集来构建高度精确的模型,然后可以非常有效地将其应用于更大的数据集。可以使用各种现有的可视化技术来展示简化的数据集。训练数据对于将用户的知识编码到循环中非常重要。但是,这项工作还设计了一种在没有训练数据可用时计算PLS缩减空间的策略。当用户反馈他或她的知识并能够处理小型且不平衡的训练集时,该方法将产生越来越精确的视觉映射。

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