Time Series

Our interest in time series models stems from the need to assess how well empirical financial data fits various models.

Key concepts

  • Strict and Weak Stationarity. A process is strictly stationary if it’s properties are unaffected by a change in the time origin. A process is weak stationary if the first and second moments exist and do not depend on time.
  • Moving Average Processes and Autoregressive Models. Autocorrelation Function (ACF) , Lag Operators, Invertibility.
  • Autoregressive Moving Average Processes (ARMA)
  • Partial Autocorrelations. (PACF). Sample analogs, Significance testing, maximum Likelihood Estimation
  • Forecasting with Time Series Models.