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TIME SERIES ANALYSIS & FORECASTING (STAT-616)
Holts corrected trend exponential smoothing, Holt’s winter exponential smoothing, Zaitun Software
Holts corrected trend exponential smoothing, Holt’s winter exponential smoothing, Zaitun Software
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holts-trend-corrected-exponential-smoothing.pptx (0.26 MB )
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Course Material
Introduction to Time Series, time series data and it's different types
Components of time series data, Trend, Secular trend and there difference, Seasonal Variation Cyclical Fluctuation, Irregular Variations
Decomposition of time Series Data Recomposition of time Series Data
Exponential smoothing technique, simple exponential smoothing,
Holts corrected trend exponential smoothing, Holt’s winter exponential smoothing, Zaitun Software
Transformation of Data and its type, Box-Cox transformation Stationary Process, Strict stationary, Weak stationary, Trend stationary, Difference stationary.
How to Handle real life Data, Missing values, trend analysis, seasonal analysis, Outliers, its detection, techniques and Stochastic Process.
Autocovariance function, Autocorrelation function, Partial Autocorrelation function, Acf, PACF, Correlogram. Properties of Autocorrelation function
Periodogram, spectral density functions, comparison with ACF, Linear stationary models.
Random Process, mean , variance, autocovariance, autocorrelation function. Random Walk model its mean, variance, autocovariance, autocorrelation function.
Autoregressive models its mean, variance, autocovariance, autocorrelation function.
Moving Average models its mean, variance, autocovariance, autocorrelation function.
Mixed models, Autoregressive Moving Average models (ARMA models) its mean, variance, autocovariance, autocorrelation function.
Non-stationary models, General ARIMA notation and models its mean, variance, autocovariance, autocorrelation function.
Model Selection, Box and Jenkins Methodology, Forecasting.
Practical work of Linear trend,AR, MA, ARIMA, SARIMA, ANN model on differnt Software
Chapters
16
Department
Statistics
Teacher
Muhammad Wasim Amir