Introduction to Time Series Analysis
This lecture covers the following topics:
- What is a Time Series
- Autoregressive Models
- Stationary Process
- Assumptions
- Visual Tests
- AR(p) Model
- Backward Shift Operator
- AR(p) Parameter Estimation
- Assumptions and Tests for AR(p)
- Autocorrelation
- White Noise
- Moving Average (MA) Models
- Determining MA Parameters
- Autocorrelations for MA(1)
- Determining the Order MA(q)
- Determining the Order AR(p)
- Non-Stationarity: Integrated Models
- ARMA and ARIMA Models
- Non-Stationarity due to Seasonality
- Seasonal ARIMA (SARIMA) Models
- Case Study: Mobile Video
- Traffic Modeling – All Frames
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