Modeling Time Series and Sequential Data
This course is part of Analyzing Time Series and Sequential Data Specialization
Instructors: Chip Wells +2 more
Skills you'll gain
There are 8 modules in this course
The course concludes by considering how forecasting precision can be improved by combining the strengths of the different approaches. The final lesson includes demonstrations on creating combined (or ensemble) and hybrid model forecasts. This course is appropriate for analysts interested in augmenting their machine learning skills with analysis tools that are appropriate for assaying, modifying, modeling, forecasting, and managing data that consist of variables that are collected over time. This course uses a variety of different software tools. Familiarity with Base SAS, SAS/ETS, SAS/STAT, and SAS Visual Forecasting, as well as open-source tools for sequential data handling and modeling, is helpful but not required. The lessons on Bayesian analysis and machine learning models assume some prior knowledge of these topics. One way that students can acquire this background is by completing these SAS Education courses: Bayesian Analyses Using SAS and Machine Learning Using SAS Viya.
Course Overview
Introduction to Time Series
ARIMAX Models
Bayesian Time Series Analysis
Machine Learning Approaches to Time Series Modeling
Hybrid Modeling Approaches and External Forecasts
Course Review
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