For robust detection performance, traditional control chart monitoring for biosurveillance is based on input data free of trends, day-of-week effects, and other systematic behaviour. Time series forecasting methods may be used to remove this behaviour by subtracting forecasts from observations to form residuals for algorithmic input. We describe three forecast methods and compare their predictive accuracy on each of 16 authentic syndromic data streams. The methods are (1) a non-adaptive regression model using a long historical baseline, (2) an adaptive regression model with a shorter, sliding baseline, and (3) the Holt–Winters method for generalized exponential smoothing. Criteria for comparing the forecasts were the root-mean-square error,...
BackgroundMathematical or statistical tools are capable to provide a valid help to improve surveilla...
Publicado em "AIP Conference Proceedings", Vol. 1648Exponential smoothing methods are the most used...
Time series forecasting is important in several applied domains because it facilitates decision-maki...
For robust detection performance, traditional control chart monitoring for biosurveillance is based ...
While many methods have been proposed for detecting disease outbreaks from pre-diagnostic data, thei...
We compared detection performance of univariate alerting methods on real and simulated events in dif...
BackgroundSurveillance of univariate syndromic data as a means of potential indicator of developing ...
AbstractNational syndromic surveillance systems require optimal anomaly detection methods. For metho...
Dengue viruses, which infect millions of people per year worldwide, cause large epidemics that strai...
Simple forecasting methods, such as exponential smoothing, are very popular in business analytics. T...
Time series forecasting methods play critical role in estimating the spread of an epidemic. The coro...
This paper aims to identify the optimal multivariate time-series forecasting methods for Ecological ...
A lot of research has been done on comparing the forecasting accuracy of different univariate time s...
Accurate prediction of flu activity enables health officials to plan disease prevention and allocate...
BioSense is a US national system that uses data from health information systems for automated diseas...
BackgroundMathematical or statistical tools are capable to provide a valid help to improve surveilla...
Publicado em "AIP Conference Proceedings", Vol. 1648Exponential smoothing methods are the most used...
Time series forecasting is important in several applied domains because it facilitates decision-maki...
For robust detection performance, traditional control chart monitoring for biosurveillance is based ...
While many methods have been proposed for detecting disease outbreaks from pre-diagnostic data, thei...
We compared detection performance of univariate alerting methods on real and simulated events in dif...
BackgroundSurveillance of univariate syndromic data as a means of potential indicator of developing ...
AbstractNational syndromic surveillance systems require optimal anomaly detection methods. For metho...
Dengue viruses, which infect millions of people per year worldwide, cause large epidemics that strai...
Simple forecasting methods, such as exponential smoothing, are very popular in business analytics. T...
Time series forecasting methods play critical role in estimating the spread of an epidemic. The coro...
This paper aims to identify the optimal multivariate time-series forecasting methods for Ecological ...
A lot of research has been done on comparing the forecasting accuracy of different univariate time s...
Accurate prediction of flu activity enables health officials to plan disease prevention and allocate...
BioSense is a US national system that uses data from health information systems for automated diseas...
BackgroundMathematical or statistical tools are capable to provide a valid help to improve surveilla...
Publicado em "AIP Conference Proceedings", Vol. 1648Exponential smoothing methods are the most used...
Time series forecasting is important in several applied domains because it facilitates decision-maki...