Financial Mathematics
ARMA models, or AutoRegressive Moving Average models, are statistical tools used for analyzing and forecasting time series data. They combine two components: autoregression, which predicts future values based on past values, and moving averages, which account for the relationship between an observation and a residual error from a moving average model. ARMA models are particularly useful in capturing the underlying patterns and trends in time series data, making them a fundamental aspect of time series analysis.
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