statsmodels.sandbox.tsa.fftarma.ArmaFft¶
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class
statsmodels.sandbox.tsa.fftarma.ArmaFft(ar, ma, n)[source]¶ fft tools for arma processes
This class contains several methods that are providing the same or similar returns to try out and test different implementations.
Notes
TODO: check whether we do not want to fix maxlags, and create new instance if maxlag changes. usage for different lengths of timeseries ? or fix frequency and length for fft
check default frequencies w, terminology norw n_or_w
some ffts are currently done without padding with zeros
returns for spectral density methods needs checking, is it always the power spectrum hw*hw.conj()
normalization of the power spectrum, spectral density: not checked yet, for example no variance of underlying process is used
Attributes
arrootsRoots of autoregressive lag-polynomial isinvertibleArma process is invertible if MA roots are outside unit circle. isstationaryArma process is stationary if AR roots are outside unit circle. marootsRoots of moving average lag-polynomial Methods
acf([lags])Theoretical autocorrelation function of an ARMA process. acf2spdfreq(acovf[, nfreq, w])not really a method just for comparison, not efficient for large n or long acf acovf([nobs])Theoretical autocovariance function of ARMA process. arma2ar([lags])A finite-lag AR approximation of an ARMA process. arma2ma([lags])A finite-lag approximate MA representation of an ARMA process. fftar([n])Fourier transform of AR polynomial, zero-padded at end to n fftarma([n])Fourier transform of ARMA polynomial, zero-padded at end to n fftma(n)Fourier transform of MA polynomial, zero-padded at end to n filter(x)filter a timeseries with the ARMA filter filter2(x[, pad])filter a time series using fftconvolve3 with ARMA filter from_coeffs([arcoefs, macoefs, nobs])Create ArmaProcess from an ARMA representation. from_estimation(model_results[, nobs])Create an ArmaProcess from the results of an ARMA estimation. generate_sample([nsample, scale, distrvs, …])Simulate data from an ARMA. impulse_response([leads])Compute the impulse response function (MA representation) for ARMA process. invertroots([retnew])Make MA polynomial invertible by inverting roots inside unit circle. invpowerspd(n)autocovariance from spectral density pacf([lags])Theoretical partial autocorrelation function of an ARMA process. pad(maxlag)construct AR and MA polynomials that are zero-padded to a common length padarr(arr, maxlag[, atend])pad 1d array with zeros at end to have length maxlag function that is a method, no self used periodogram([nobs])Periodogram for ARMA process given by lag-polynomials ar and ma. plot4([fig, nobs, nacf, nfreq])Plot results spd(npos)raw spectral density, returns Fourier transform spddirect(n)power spectral density using padding to length n done by fft spdmapoly(w[, twosided])ma only, need division for ar, use LagPolynomial spdpoly(w[, nma])spectral density from MA polynomial representation for ARMA process spdroots(w)spectral density for frequency using polynomial roots spdshift(n)power spectral density using fftshift Methods
acf([lags])Theoretical autocorrelation function of an ARMA process. acf2spdfreq(acovf[, nfreq, w])not really a method just for comparison, not efficient for large n or long acf acovf([nobs])Theoretical autocovariance function of ARMA process. arma2ar([lags])A finite-lag AR approximation of an ARMA process. arma2ma([lags])A finite-lag approximate MA representation of an ARMA process. fftar([n])Fourier transform of AR polynomial, zero-padded at end to n fftarma([n])Fourier transform of ARMA polynomial, zero-padded at end to n fftma(n)Fourier transform of MA polynomial, zero-padded at end to n filter(x)filter a timeseries with the ARMA filter filter2(x[, pad])filter a time series using fftconvolve3 with ARMA filter from_coeffs([arcoefs, macoefs, nobs])Create ArmaProcess from an ARMA representation. from_estimation(model_results[, nobs])Create an ArmaProcess from the results of an ARMA estimation. generate_sample([nsample, scale, distrvs, …])Simulate data from an ARMA. impulse_response([leads])Compute the impulse response function (MA representation) for ARMA process. invertroots([retnew])Make MA polynomial invertible by inverting roots inside unit circle. invpowerspd(n)autocovariance from spectral density pacf([lags])Theoretical partial autocorrelation function of an ARMA process. pad(maxlag)construct AR and MA polynomials that are zero-padded to a common length padarr(arr, maxlag[, atend])pad 1d array with zeros at end to have length maxlag function that is a method, no self used periodogram([nobs])Periodogram for ARMA process given by lag-polynomials ar and ma. plot4([fig, nobs, nacf, nfreq])Plot results spd(npos)raw spectral density, returns Fourier transform spddirect(n)power spectral density using padding to length n done by fft spdmapoly(w[, twosided])ma only, need division for ar, use LagPolynomial spdpoly(w[, nma])spectral density from MA polynomial representation for ARMA process spdroots(w)spectral density for frequency using polynomial roots spdshift(n)power spectral density using fftshift Properties
arrootsRoots of autoregressive lag-polynomial isinvertibleArma process is invertible if MA roots are outside unit circle. isstationaryArma process is stationary if AR roots are outside unit circle. marootsRoots of moving average lag-polynomial