DocumentCode :
1504628
Title :
Forecasting Hotspots—A Predictive Analytics Approach
Author :
Maciejewski, Ross ; Hafen, Ryan ; Rudolph, Stephen ; Larew, Stephen G. ; Mitchell, Michael A. ; Cleveland, William S. ; Ebert, David S.
Author_Institution :
Purdue Univ., West Lafayette, IN, USA
Volume :
17
Issue :
4
fYear :
2011
fDate :
4/1/2011 12:00:00 AM
Firstpage :
440
Lastpage :
453
Abstract :
Current visual analytics systems provide users with the means to explore trends in their data. Linked views and interactive displays provide insight into correlations among people, events, and places in space and time. Analysts search for events of interest through statistical tools linked to visual displays, drill down into the data, and form hypotheses based upon the available information. However, current systems stop short of predicting events. In spatiotemporal data, analysts are searching for regions of space and time with unusually high incidences of events (hotspots). In the cases where hotspots are found, analysts would like to predict how these regions may grow in order to plan resource allocation and preventative measures. Furthermore, analysts would also like to predict where future hotspots may occur. To facilitate such forecasting, we have created a predictive visual analytics toolkit that provides analysts with linked spatiotemporal and statistical analytic views. Our system models spatiotemporal events through the combination of kernel density estimation for event distribution and seasonal trend decomposition by loess smoothing for temporal predictions. We provide analysts with estimates of error in our modeling, along with spatial and temporal alerts to indicate the occurrence of statistically significant hotspots. Spatial data are distributed based on a modeling of previous event locations, thereby maintaining a temporal coherence with past events. Such tools allow analysts to perform real-time hypothesis testing, plan intervention strategies, and allocate resources to correspond to perceived threats.
Keywords :
data analysis; data visualisation; statistical distributions; event distribution; hotspots forecasting; hypothesis testing; intervention strategy; kernel density estimation; predictive analytics approach; resource allocation; seasonal trend decomposition; spatiotemporal analytic view; statistical analytic view; visual analytics; Coherence; Data analysis; Kernel; Performance analysis; Performance evaluation; Predictive models; Resource management; Smoothing methods; Spatiotemporal phenomena; Visual analytics; Predictive analytics; syndromic surveillance.; visual analytics;
fLanguage :
English
Journal_Title :
Visualization and Computer Graphics, IEEE Transactions on
Publisher :
ieee
ISSN :
1077-2626
Type :
jour
DOI :
10.1109/TVCG.2010.82
Filename :
5473230
Link To Document :
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