Sequencing of Categorical Time Series
1 October 2015·,,,·
0 min read
C. Richter
M. Luboschik
M. Röhlig
H. Schumann
Abstract
Exploring and comparing categorical time series and finding temporal patterns are complex tasks in the field of time series data mining. Although different analysis approaches exist, these tasks remain challenging, especially when numerous time series are considered at once. We propose a visual analysis approach that supports exploring such data by ordering time series in meaningful ways. We provide interaction techniques to steer the automated arrangement and to allow users to investigate patterns in detail.
Type
Publication
2015 IEEE Conference on Visual Analytics Science and Technology (VAST)
Algorithm Design and Analysis
Automated Arrangement
Categorical Time Series Sequencing
Clustering Algorithms
Data Analysis
Data Mining
Data Visualisation
H.5.2 [Information Interfaces and Presentation]: User Interfaces-Graphical User Interfaces (GUI)
I.5.3 [Clustering ]: Algorithm-Similarity Measures
Interaction Techniques
Machine Learning Algorithms
Measurement
Sequential Analysis
Temporal Patterns
Time Series
Time Series Analysis
Time Series Data Mining
Time Series Ordering
Visual Analysis Approach
Visualization
Authors
Authors
Authors
Authors