Conference Paper/Proceeding/Abstract 1111 views 386 downloads
Towards Visual Exploration of Large Temporal Datasets
In 2018 International Symposium on Big Data Visual Analytics (BDVA) 2018
Swansea University Authors: Mark Jones , Xianghua Xie
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DOI (Published version): 10.1109/BDVA.2018.8534025
Abstract
We address the problem of visualizing and interacting with large multi-dimensional time-series data. We propose a visual analytics system and approach which aims to visualize, analyze, present and enable exploration of large temporal datasets. Our approach consists of three main stages which are pre...
Published in: | In 2018 International Symposium on Big Data Visual Analytics (BDVA) 2018 |
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ISSN: | 2516-2314 |
Published: |
Konstanz, Germany
2018
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URI: | https://cronfa.swan.ac.uk/Record/cronfa43563 |
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2018-12-16T14:58:26.5698811 v2 43563 2018-08-24 Towards Visual Exploration of Large Temporal Datasets 2e1030b6e14fc9debd5d5ae7cc335562 0000-0001-8991-1190 Mark Jones Mark Jones true false b334d40963c7a2f435f06d2c26c74e11 0000-0002-2701-8660 Xianghua Xie Xianghua Xie true false 2018-08-24 MACS We address the problem of visualizing and interacting with large multi-dimensional time-series data. We propose a visual analytics system and approach which aims to visualize, analyze, present and enable exploration of large temporal datasets. Our approach consists of three main stages which are preprocessing, dimensionality reduction, and visual exploration. It assists with finding the interesting features in the data which are often obscured in the line chart because of the visual compression that is required to render the large dataset to screen. Our approach helps to obtain an overview of the entire dataset and track changes over time. It enables the user to detect clusters and outliers and observe the transitions between data. The juxtaposed views are used to visualize and interact both with raw time series data and projected data. Different time series datasets are deployed on our system, and we demonstrate the utility and evaluate the results using a case study with two different datasets which show the effectiveness of our system. Conference Paper/Proceeding/Abstract In 2018 International Symposium on Big Data Visual Analytics (BDVA) 2018 Konstanz, Germany 2516-2314 17 10 2018 2018-10-17 10.1109/BDVA.2018.8534025 COLLEGE NANME Mathematics and Computer Science School COLLEGE CODE MACS Swansea University 2018-12-16T14:58:26.5698811 2018-08-24T14:28:44.2662536 Faculty of Science and Engineering School of Mathematics and Computer Science - Computer Science Mohammed Ali 1 Mark Jones 0000-0001-8991-1190 2 Xianghua Xie 0000-0002-2701-8660 3 Mark Williams 4 0043563-04092018130958.pdf 2018_TemporalVE.pdf 2018-09-04T13:09:58.6500000 Output 3593637 application/pdf Accepted Manuscript true 2018-11-15T00:00:00.0000000 true eng |
title |
Towards Visual Exploration of Large Temporal Datasets |
spellingShingle |
Towards Visual Exploration of Large Temporal Datasets Mark Jones Xianghua Xie |
title_short |
Towards Visual Exploration of Large Temporal Datasets |
title_full |
Towards Visual Exploration of Large Temporal Datasets |
title_fullStr |
Towards Visual Exploration of Large Temporal Datasets |
title_full_unstemmed |
Towards Visual Exploration of Large Temporal Datasets |
title_sort |
Towards Visual Exploration of Large Temporal Datasets |
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2e1030b6e14fc9debd5d5ae7cc335562 b334d40963c7a2f435f06d2c26c74e11 |
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2e1030b6e14fc9debd5d5ae7cc335562_***_Mark Jones b334d40963c7a2f435f06d2c26c74e11_***_Xianghua Xie |
author |
Mark Jones Xianghua Xie |
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Mohammed Ali Mark Jones Xianghua Xie Mark Williams |
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Conference Paper/Proceeding/Abstract |
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In 2018 International Symposium on Big Data Visual Analytics (BDVA) 2018 |
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10.1109/BDVA.2018.8534025 |
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description |
We address the problem of visualizing and interacting with large multi-dimensional time-series data. We propose a visual analytics system and approach which aims to visualize, analyze, present and enable exploration of large temporal datasets. Our approach consists of three main stages which are preprocessing, dimensionality reduction, and visual exploration. It assists with finding the interesting features in the data which are often obscured in the line chart because of the visual compression that is required to render the large dataset to screen. Our approach helps to obtain an overview of the entire dataset and track changes over time. It enables the user to detect clusters and outliers and observe the transitions between data. The juxtaposed views are used to visualize and interact both with raw time series data and projected data. Different time series datasets are deployed on our system, and we demonstrate the utility and evaluate the results using a case study with two different datasets which show the effectiveness of our system. |
published_date |
2018-10-17T19:33:22Z |
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1822341205004910592 |
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11.048475 |