block: ep: accuracy: stochastic: order debug: 0 memory: 0 init: 0 check_stability: 0 lp: 5 fp: 2 innovation_distribution: 'gaussian' 'calibrated' maxit: 500 periods: 200 set_dynare_seed_to_default: 1 solve_algo: stack_solve_algo: 4 step: 50 stochastic: IntegrationAlgorithm: 'Tensor-Gaussian-Quadrature' 'Stroud-Cubature-3' 'Stroud-Cubature-5' 'Unscented' method: '' algo: 0 order: 1 hybrid_order: 0 homotopic_steps: 1 nodes: 3 quadrature: ortpol: 'hermite' nodes: 5 pruned: ortpol: 'hermite' nodes: 5 pruned: [1x1 struct] verbosity: 0 initial_period: NaN lmmcp: lb: ub: status: 0 (?? status is not an option ??) mcppath: lb: ub: minimal_solving_period: order: ramsey_policy: simul: maxit solve_algo: stack_solve_algo: ut: (unscented free parameter) pfm.stochastic_order = DynareOptions.ep.stochastic.order; pfm.periods = DynareOptions.ep.periods; pfm.verbose = DynareOptions.ep.verbosity; * in extended_path_core, one passes options.ep and individual options * there are no options to control extended_path_homotopy * extended_path_initialization sets ep and options * setup_integration_nodes: number of nodes is not handled in a symmetric way for all algorithms * why extended_path_initialization et setup_stochastic_extended_path ? * do we need solve_stochastic_perfect_foresight_model.m and solve_stochastic_perfect_foresight_model_1.m ?