""" Autoregressive Moving Average (ARMA) Model """ import numpy as np import statsmodels.api as sm # Generate some data from an ARMA process from statsmodels.tsa.arima_process import arma_generate_sample np.random.seed(12345) arparams = np.array([.75, -.25]) maparams = np.array([.65, .35]) # The conventions of the arma_generate function require that we specify a # 1 for the zero-lag of the AR and MA parameters and that the AR parameters # be negated. ar = np.r_[1, -arparams] ma = np.r_[1, maparams] nobs = 250 y = arma_generate_sample(ar, ma, nobs) # Now, optionally, we can add some dates information. For this example, # we'll use a pandas time series. import pandas as pd dates = sm.tsa.datetools.dates_from_range('1980m1', length=nobs) y = pd.Series(y, index=dates) arma_mod = sm.tsa.ARMA(y, order=(2, 2)) arma_res = arma_mod.fit(trend='nc', disp=-1)