Abstract:
Widespread interest in discovering features and trends in time- series has generated a need for tools that support interactive exploration.This paper introduces timeboxes: a powerful graphical, directmanipulation metaphor for the specification of queries over time-series datasets. Our TimeFinder implementation of timeboxes supports interactive formulation and modification of queries, thus speeding the process of exploring time-series data sets and guiding data mining. TimeFinder includes windows for timebox queries, individual time-series, and details-on-demand. Other features include drag-and-drop support for query-by-example and graphical envelopes for displaying the extent of the entire data set and result set from a given query. Extensions involving increased expressive power and general temporal data sets are discussed.
Citations
|
1730
|
Maintaining Knowledge about Temporal Intervals
– Allen
- 1983
|
|
707
|
Mining sequential patterns
– Agrawal, Srikant
|
|
407
|
Visual Information Seeking: Tight Coupling of Dynamic Query Filters with Starfield Displays
– Ahlberg, Shneiderman
- 1994
|
|
407
|
Readings in Information Visualization: Using Vision to Think
– Card, Mackinlay, et al.
- 1999
|
|
322
|
Fast subsequence matching in time-series databases
– Faloutsos, Ranganathan, et al.
|
|
270
|
Designing the User Interface
– Shneiderman
- 1997
|
|
172
|
Fast similarity search in the presence of noise, scaling, and translation in time-series databases
– Agrawal, Lin, et al.
|
|
127
|
Jazz: An Extensible Zoomable User Interface Graphics Toolkit in Java
– Bederson, Meyer
- 2000
|
|
122
|
Efficient retrieval of similar time sequences under time warping
– Yi, Jagadish
- 1998
|
|
91
|
Querying shapes of histories
– Agrawal, Psaila, et al.
- 1995
|
|
36
|
Interactive visualization of serial periodic data
– Carlis, Konston
- 1998
|
|
25
|
Mining deviants in time series databases
– Jagdish, Koudas, et al.
- 1999
|
|
16
|
Relevance feedback retrieval of time series data
– Keogh, Pazzani
- 1999
|
|
14
|
Graphical summary of patient status
– Powsner, Tufte
|
|
14
|
Querying Time Series Data Based on Similarity
– Rafiei, Mendelzon
- 2000
|
|
12
|
Visualization of linear time-oriented data: a survey
– Silva, Catarci
- 2000
|
|
9
|
Genomic analysis of gene expression in c. elegans
– Hill, Hunter, et al.
- 2000
|
|
9
|
Sketching a graph to query a time-series database
– WATTENBERG
|
|
8
|
Comparing MMVIS to a Timeline for Temporal Trend Analysis of Video Data
– Hibino, Rundensteiner
- 1998
|
|
7
|
Browsing Large Online Data with Query Previews
– Tanin, Plaisant, et al.
- 2000
|
|
5
|
The End of Zero-Hit Queries
– Greene, Tanin, et al.
- 1999
|
|
5
|
Understanding Wall
– Little, Rhodes
- 1978
|
|
1
|
Finding patterns in time series:A dynamic programming approach
– Berndt, Clifford
- 1996
|
|
1
|
Generalized FisheyeViews
– Furnas
- 1986
|
|
1
|
MIMSY: A System for Analyzing Time Series Data
– Gibson
- 1993
|
|
1
|
Life Lines:Visualizing Personal Histories
– Plaisant, Milash, et al.
- 1996
|