Forecasting
An autoregressive model is a statistical representation that uses the dependency between an observation and a number of lagged observations (previous time periods) to predict future values. This approach emphasizes how past values influence current data points, making it essential for analyzing time series data. It is a foundational concept in time series analysis and plays a crucial role in autoregressive moving average models, where both autoregressive and moving average components are combined for more accurate forecasting.
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