Time Series Forecasting in R: A Down-to-Earth Approach
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- The lowest price of Time Series Forecasting in R: A Down-to-Earth Approach was obtained on May 7, 2026 11:31 am.
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Time Series Forecasting in R: A Down-to-Earth Approach
$69.99 Original price was: $69.99.$13.00Current price is: $13.00.
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Time Series Forecasting in R: A Down-to-Earth Approach
★★★★★
$499.00 in stock
Udemy.com
as of May 7, 2026 11:31 am
High-performance forecasting tools made easy to understand and apply
Created by:
Bogdan Anastasiei
University Teacher and Consultant
University Teacher and Consultant
Rating:4.65 (31reviews)
314students enrolled
What Will I 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
Requirements
- Basic R programming notions
- Basic statistics notions
Target audience
- Students in any field that requires quantitative forecasts
- Data analysts
- Wanna be data analysts
- Doctoral students
- Any person who wants to develop their skills in time series analysis and forecasting
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