Visual exploration of local interest points in sets of time series

Visual analysis of time series data is an important, yet challenging task with many application examples in fields such as financial or news stream data analysis. Many visual time series analysis approaches consider a global perspective on the time series. Fewer approaches consider visual analysis of local patterns in time series, and often rely on interactive specification of the local area of interest. We present initial results of an approach that is based on automatic detection of local interest points. We follow an overview-first approach to find useful parameters for the interest point detection, and details-on-demand to relate the found patterns. We present initial results and detail possible extensions of the approach.

[1]  Michael R. Berthold,et al.  Unifying Change -- Towards a Framework for Detecting the Unexpected , 2011, 2011 IEEE 11th International Conference on Data Mining Workshops.

[2]  Fabian Mörchen,et al.  Efficient mining of understandable patterns from multivariate interval time series , 2007, Data Mining and Knowledge Discovery.

[3]  Ryan Hafen,et al.  A Visual Analytics Approach to Understanding Spatiotemporal Hotspots , 2010, IEEE Transactions on Visualization and Computer Graphics.

[4]  Robert Kincaid,et al.  SignalLens: Focus+Context Applied to Electronic Time Series , 2010, IEEE Transactions on Visualization and Computer Graphics.

[5]  Thomas Seidl,et al.  Signature quadratic form distances for content-based similarity , 2009, ACM Multimedia.

[6]  Irina Sens,et al.  A Visual Digital Library Approach for Time-Oriented Scientific Primary Data , 2010, ECDL.

[7]  Ben Shneiderman,et al.  Dynamic Query Tools for Time Series Data Sets: Timebox Widgets for Interactive Exploration , 2004, Inf. Vis..

[8]  Heidrun Schumann,et al.  Visualization of Time-Oriented Data , 2011, Human-Computer Interaction Series.