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Evaluating Interactive Visualization of Multidimensional Data Projection with Feature Transformation

机译:通过特征转换评估多维数据投影的交互式可视化

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There has been extensive research on dimensionality reduction techniques. While these make it possible to present visually the high-dimensional data in 2D or 3D, it remains a challenge for users to make sense of such projected data. Recently, interactive techniques, such as Feature Transformation, have been introduced to address this. This paper describes a user study that was designed to understand how the feature transformation techniques affect user’s understanding of multi-dimensional data visualisation. It was compared with the traditional dimension reduction techniques, both unsupervised (PCA) and supervised (MCML). Thirty-one participants were recruited to detect visual clusters and outliers using visualisations produced by these techniques. Six different datasets with a range of dimensionality and data size were used in the experiment. Five of these are benchmark datasets, which makes it possible to compare with other studies using the same datasets. Both task accuracy and completion time were recorded for comparison. The results show that there is a strong case for the feature transformation technique. Participants performed best with the visualisations produced with high-level feature transformation, in terms of both accuracy and completion time. The improvements over other techniques are substantial, particularly in the case of the accuracy of the clustering task. However, visualising data with very high dimensionality (i.e., greater than 100 dimensions) remains a challenge.
机译:关于降维技术已经进行了广泛的研究。尽管这些使得可以可视化地以2D或3D形式显示高维数据,但是对于用户来说,如何理解此类投影数据仍然是一个挑战。近来,诸如特征变换的交互式技术已经被引入以解决这个问题。本文介绍了一项用户研究,旨在了解功能转换技术如何影响用户对多维数据可视化的理解。将其与传统的降维技术(无监督(PCA)和有监督(MCML))进行了比较。招募了31名参与者,以使用由这些技术产生的可视化效果来检测视觉聚类和离群值。实验中使用了六个不同的数据集,这些数据集具有一定范围的维度和数据大小。其中有五个是基准数据集,因此可以与使用相同数据集的其他研究进行比较。记录任务准确性和完成时间以进行比较。结果表明,特征转换技术有很强的理由。在准确性和完成时间方面,参与者在通过高级特征转换产生的可视化效果方面表现最佳。对其他技术的改进是相当大的,尤其是在聚类任务的准确性方面。然而,以非常高的维度(即,大于100个维度)可视化数据仍然是挑战。

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