Literature DB >> 20498509

Forecasting Hotspots-A Predictive Analytics Approach.

R Maciejewski, R Hafen, S Rudolph, S G Larew, M A Mitchell, W S Cleveland, D S Ebert.   

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.

Entities:  

Year:  2010        PMID: 20498509     DOI: 10.1109/TVCG.2010.82

Source DB:  PubMed          Journal:  IEEE Trans Vis Comput Graph        ISSN: 1077-2626            Impact factor:   4.579


  4 in total

1.  Predictive Analytics to Support Real-Time Management in Pathology Facilities.

Authors:  Lysanne Lessard; Wojtek Michalowski; Wei Chen Li; Daniel Amyot; Fawaz Halwani; Diponkar Banerjee
Journal:  AMIA Annu Symp Proc       Date:  2017-02-10

2.  Predictive Big Data Analytics: A Study of Parkinson's Disease Using Large, Complex, Heterogeneous, Incongruent, Multi-Source and Incomplete Observations.

Authors:  Ivo D Dinov; Ben Heavner; Ming Tang; Gustavo Glusman; Kyle Chard; Mike Darcy; Ravi Madduri; Judy Pa; Cathie Spino; Carl Kesselman; Ian Foster; Eric W Deutsch; Nathan D Price; John D Van Horn; Joseph Ames; Kristi Clark; Leroy Hood; Benjamin M Hampstead; William Dauer; Arthur W Toga
Journal:  PLoS One       Date:  2016-08-05       Impact factor: 3.240

3.  Cluster Detection Mechanisms for Syndromic Surveillance Systems: Systematic Review and Framework Development.

Authors:  Prosper Kandabongee Yeng; Ashenafi Zebene Woldaregay; Terje Solvoll; Gunnar Hartvigsen
Journal:  JMIR Public Health Surveill       Date:  2020-05-26

4.  Tele-entomology and tele-parasitology: A citizen science-based approach for surveillance and control of Chagas disease in Venezuela.

Authors:  Lourdes A Delgado-Noguera; Carlos E Hernández-Pereira; Juan David Ramírez; Carolina Hernández; Natalia Velasquez-Ortíz; José Clavijo; Jose Manuel Ayala; David Forero-Peña; Marilianna Marquez; Maria J Suarez; Luis Traviezo-Valles; Maria Alejandra Escalona; Luis Perez-Garcia; Isis Mejias Carpio; Emilia M Sordillo; Maria E Grillet; Martin S Llewellyn; Juan C Gabaldón; Alberto E Paniz Mondolfi
Journal:  Parasite Epidemiol Control       Date:  2022-09-08
  4 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.