statsmodels.tsa.statespace.kalman_filter.FilterResults¶
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class
statsmodels.tsa.statespace.kalman_filter.FilterResults(model)[source]¶ Results from applying the Kalman filter to a state space model.
Parameters: model (Representation) – A Statespace representation -
nobs¶ int – Number of observations.
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k_endog¶ int – The dimension of the observation series.
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k_states¶ int – The dimension of the unobserved state process.
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k_posdef¶ int – The dimension of a guaranteed positive definite covariance matrix describing the shocks in the measurement equation.
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dtype¶ dtype – Datatype of representation matrices
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prefix¶ str – BLAS prefix of representation matrices
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shapes¶ dictionary of name,tuple – A dictionary recording the shapes of each of the representation matrices as tuples.
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endog¶ array – The observation vector.
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design¶ array – The design matrix, \(Z\).
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obs_intercept¶ array – The intercept for the observation equation, \(d\).
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obs_cov¶ array – The covariance matrix for the observation equation \(H\).
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transition¶ array – The transition matrix, \(T\).
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state_intercept¶ array – The intercept for the transition equation, \(c\).
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selection¶ array – The selection matrix, \(R\).
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state_cov¶ array – The covariance matrix for the state equation \(Q\).
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missing¶ array of bool – An array of the same size as endog, filled with boolean values that are True if the corresponding entry in endog is NaN and False otherwise.
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nmissing¶ array of int – An array of size nobs, where the ith entry is the number (between 0 and k_endog) of NaNs in the ith row of the endog array.
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time_invariant¶ bool – Whether or not the representation matrices are time-invariant
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initialization¶ str – Kalman filter initialization method.
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initial_state¶ array_like – The state vector used to initialize the Kalamn filter.
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initial_state_cov¶ array_like – The state covariance matrix used to initialize the Kalamn filter.
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filter_method¶ int – Bitmask representing the Kalman filtering method
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inversion_method¶ int – Bitmask representing the method used to invert the forecast error covariance matrix.
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stability_method¶ int – Bitmask representing the methods used to promote numerical stability in the Kalman filter recursions.
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conserve_memory¶ int – Bitmask representing the selected memory conservation method.
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filter_timing¶ int – Whether or not to use the alternate timing convention.
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tolerance¶ float – The tolerance at which the Kalman filter determines convergence to steady-state.
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loglikelihood_burn¶ int – The number of initial periods during which the loglikelihood is not recorded.
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converged¶ bool – Whether or not the Kalman filter converged.
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period_converged¶ int – The time period in which the Kalman filter converged.
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filtered_state¶ array – The filtered state vector at each time period.
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filtered_state_cov¶ array – The filtered state covariance matrix at each time period.
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predicted_state¶ array – The predicted state vector at each time period.
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predicted_state_cov¶ array – The predicted state covariance matrix at each time period.
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kalman_gain¶ array – The Kalman gain at each time period.
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forecasts¶ array – The one-step-ahead forecasts of observations at each time period.
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forecasts_error¶ array – The forecast errors at each time period.
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forecasts_error_cov¶ array – The forecast error covariance matrices at each time period.
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llf_obs¶ array – The loglikelihood values at each time period.
Methods
predict([start, end, dynamic])In-sample and out-of-sample prediction for state space models generally update_filter(kalman_filter)Update the filter results update_representation(model[, only_options])Update the results to match a given model Attributes
kalman_gainKalman gain matrices standardized_forecasts_errorStandardized forecast errors -
