We would like to announce the following online stats course: Course: Time series analysis using regression techniques Format: Online course with on-demand video and live Zoom sessions When: Live summary sessions using Zoom will run in October 2022. Price: 500 GBP (50% reduction for developing countries). Included: A 1-hour face-to-face video chat with one or both instructors. Flyer: http://highstat.com/Courses/Flyers/2022/Flyer2022_10_TimeSeries_Online.pdf Website: http://highstat.com/index.php/courses-upcoming A detailed outline of the course is provided below. All exercises contain a video discussing the R solution code. Revision material on data exploration and multiple linear regression is provided. All theory material is also presented in videos. Module 1 Revision exercise on multiple linear regression. Short theory presentation on matrix notation. Theory presentation 'Introduction to GAM'. Three exercises to get familiar with GAM Module 2 Theory presentation: How to include auto-regressive correlation in a regression model. Exercise showing how to fit a GLM with AR1 correlation in glmmTMB. Exercise on GAM with auto-regressive correlation applied to a regular spaced time-series data set. Exercise on GAM with auto-regressive correlation applied to an irregular spaced time-series data set. Exercise on detecting important changes in trends. Module 3 Theory presentation on linear mixed-effects models. Exercise on linear mixed-effects models. Three exercises on the application of GAMM on time-series data sets. Module 4 Theory presentation on distributions. Theory presentation: Revision of Poisson and negative binomial GLM. Revision exercise on Poisson and negative binomial GLM. Exercise on Poisson and negative binomial GLMM with auto-regressive correlation applied to a time-series data set. Exercise on Poisson and negative binomial GAM applied to a time-series data set. Module 5 Exercise on Bernoulli GAMM applied to time-series data set. Exercise on beta GAMM applied to a time-series data set. Exercise on binomial GAM(M) applied to a time-series data set. Exercise on gamma GAM(M) applied to a time-series data set. Exercise on Tweedie GAM(M) applied to a time-series data set. Kind regards, Alain Zuur
Course: Time series analysis using regression techniques
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