Time Series Forecasting in R: A Down-to-Earth Approach

High-performance forecasting tools made easy to understand and apply
4.67 (32 reviews)
Udemy
platform
English
language
Data & Analytics
category
Time Series Forecasting in R: A Down-to-Earth Approach
319
students
8 hours
content
Oct 2022
last update
$69.99
regular price

What you will learn

Know the time series forecasting steps

Know the essential time series components

Know the most important forecasting accuracy metrics

Use the moving averages and the simple exponential smoothing techniques

Use the advanced exponential smoothing techniques: Holt and Holt-Winters

Use extended exponential smoothing models: TBATS and STLM

Build regression models with trend only

Build regression models with trend and seasonality

Understand important concepts like autocorrelation, stationarity and integration

Use the augmented Dickey-Fuller test for stationarity

Build autoregressive integrated moving average models (ARIMA)

Build neural networks for time series forecasting

Course Gallery

Time Series Forecasting in R: A Down-to-Earth Approach – Screenshot 1
Screenshot 1Time Series Forecasting in R: A Down-to-Earth Approach
Time Series Forecasting in R: A Down-to-Earth Approach – Screenshot 2
Screenshot 2Time Series Forecasting in R: A Down-to-Earth Approach
Time Series Forecasting in R: A Down-to-Earth Approach – Screenshot 3
Screenshot 3Time Series Forecasting in R: A Down-to-Earth Approach
Time Series Forecasting in R: A Down-to-Earth Approach – Screenshot 4
Screenshot 4Time Series Forecasting in R: A Down-to-Earth Approach

Charts

Students
Price
Rating & Reviews
Coupons Issued
Enrollment Distribution
Related Topics
4904116
udemy ID
28/09/2022
course created date
27/10/2022
course indexed date
Bot
course submited by