Evaluating Interactive Visualization of Multidimensional Data Projection with Feature Transformation

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, h...

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Main Authors: Kai Xu, Leishi Zhang, Daniel Pérez, Phong H. Nguyen, Adam Ogilvie-Smith
Format: Article
Language:English
Published: MDPI AG 2017-07-01
Series:Multimodal Technologies and Interaction
Subjects:
Online Access:https://www.mdpi.com/2414-4088/1/3/13
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spelling doaj-221d9e51f2d7454dbcdd0f3f0c4c71e02020-11-25T00:09:35ZengMDPI AGMultimodal Technologies and Interaction2414-40882017-07-01131310.3390/mti1030013mti1030013Evaluating Interactive Visualization of Multidimensional Data Projection with Feature TransformationKai Xu0Leishi Zhang1Daniel Pérez2Phong H. Nguyen3Adam Ogilvie-Smith4Department of Computer Science, Middlesex University, London NW4 4BT, UKDepartment of Computer Science, Middlesex University, London NW4 4BT, UKDepartment of Electrical, Electronic, Computers and Systems Engineering, University of Oviedo, Oviedo 33002, SpainDepartment of Computer Science, University of London, London EC1V 0HB, UKCGI Defence Innovation, Science & Technology, CGI IT UK Limited, London N1 9AG, UKThere 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.https://www.mdpi.com/2414-4088/1/3/13human-centered computingempirical studiesvisual analyticsdimensionality reduction
collection DOAJ
language English
format Article
sources DOAJ
author Kai Xu
Leishi Zhang
Daniel Pérez
Phong H. Nguyen
Adam Ogilvie-Smith
spellingShingle Kai Xu
Leishi Zhang
Daniel Pérez
Phong H. Nguyen
Adam Ogilvie-Smith
Evaluating Interactive Visualization of Multidimensional Data Projection with Feature Transformation
Multimodal Technologies and Interaction
human-centered computing
empirical studies
visual analytics
dimensionality reduction
author_facet Kai Xu
Leishi Zhang
Daniel Pérez
Phong H. Nguyen
Adam Ogilvie-Smith
author_sort Kai Xu
title Evaluating Interactive Visualization of Multidimensional Data Projection with Feature Transformation
title_short Evaluating Interactive Visualization of Multidimensional Data Projection with Feature Transformation
title_full Evaluating Interactive Visualization of Multidimensional Data Projection with Feature Transformation
title_fullStr Evaluating Interactive Visualization of Multidimensional Data Projection with Feature Transformation
title_full_unstemmed Evaluating Interactive Visualization of Multidimensional Data Projection with Feature Transformation
title_sort evaluating interactive visualization of multidimensional data projection with feature transformation
publisher MDPI AG
series Multimodal Technologies and Interaction
issn 2414-4088
publishDate 2017-07-01
description 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.
topic human-centered computing
empirical studies
visual analytics
dimensionality reduction
url https://www.mdpi.com/2414-4088/1/3/13
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