By the end of this course, learners will be able to define the fundamentals of forecasting, classify forecasting methods, apply regression and decomposition techniques, and implement advanced models like ARIMA and SARIMA to accurately predict time-dependent data.
您将学到什么
Define forecasting fundamentals and classify methods for time-dependent data.
Apply regression, decomposition, and exponential smoothing in R.
Implement ARIMA and SARIMA models with ACF/PACF diagnostics for accuracy.
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您将学习的工具
要了解的详细信息

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11 项作业
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已于 Mar 16, 2026审阅
A very well-designed course that combines statistical theory with real-world forecasting applications. The sections on regression models and decomposition techniques are especially insightful.
已于 Mar 20, 2026审阅
An excellent program for anyone interested in business analytics and predictive modeling. The practical demonstrations using R reinforce both conceptual understanding and implementation skills.
已于 Mar 29, 2026审阅
An excellent program for anyone interested in business analytics and predictive modeling. The practical demonstrations using R reinforce both conceptual understanding and implementation skills.









