Example #1
0
def equations(state, policy_state):
    E_t = State.E_t_gen(state, policy_state)
    
    loss_dict = {}

    delta_1 = Definitions.delta_1(state, policy_state)
    
    #original equation
    loss_dict['eq_1'] = E_t(lambda s, ps: PolicyState.Cy(policy_state) * PolicyState.Cy(ps) * PolicyState.lambday(policy_state) - PolicyState.Cy(ps) * State.nux(state) + PolicyState.Cy(policy_state) * beta * b_habit * State.nux (s))    
    
    # original eq 1
    #loss_dict['eq_1'] = PolicyState.lambday(policy_state) - (State.nux(state) / (PolicyState.Cy(policy_state) )) + beta * b_habit * E_t(lambda s, ps: State.nux (s) / (PolicyState.Cy(ps)))    
        
    loss_dict['eq_2'] = PolicyState.lambday(policy_state) * PolicyState.Ry(policy_state) - PolicyState.muy(policy_state) * (delta_1 + delta_2 *(PolicyState.uy(policy_state) - 1.0)) 
    
    loss_dict['eq_3'] = PolicyState.lambday(policy_state) - beta * (1.0 + PolicyState.iy(policy_state)) * E_t(lambda s, ps: (1.0/(1.0 + PolicyState.piy(ps) )))
    
    loss_dict['eq_4'] = PolicyState.lambday(policy_state) - PolicyState.muy(policy_state) * State.Zx(state) * ((1.0 - kappa/2.0 * (PolicyState.Iy(policy_state) - 1.0 )**2.0) - kappa * (PolicyState.Iy(policy_state) - 1.0) * PolicyState.Iy(policy_state)) - beta * E_t(lambda s, ps: PolicyState.muy(ps) * State.Zx(s) * kappa * (PolicyState.Iy(ps) - 1.0) * PolicyState.Iy(ps)**2.0 )
    
    loss_dict['eq_5'] = PolicyState.muy(policy_state) - beta * E_t(lambda s, ps: PolicyState.muy(ps) * PolicyState.Ry(ps) * PolicyState.uy(ps) + PolicyState.muy(ps) * (1.0 - (delta_0 + delta_1 * (PolicyState.uy(ps) - 1.0) + delta_2/2.0 * (PolicyState.uy(ps) - 1.0)**2.0 )))   
    
    loss_dict['eq_6'] = PolicyState.h1y(policy_state) * PolicyState.whashy(policy_state)**(eps_w * (1.0 + chi)) - State.nux(state) * State.psix(state) * PolicyState.wy(policy_state)**(eps_w * (1.0 + chi)) * PolicyState.Ny(policy_state)**(1.0 + chi) - phi_w * beta * (1.0 + PolicyState.piy(policy_state))**(-zeta_w * eps_w * ( 1.0 + chi )) * E_t(lambda s, ps: (1.0 + PolicyState.piy(ps))**(eps_w * (1.0 + chi)) * PolicyState.whashy(ps)**(eps_w * (1.0 + chi)) * PolicyState.h1y(ps))
 
    loss_dict['eq_7'] = PolicyState.h2y(policy_state) * PolicyState.whashy(policy_state)**eps_w - PolicyState.lambday(policy_state) * PolicyState.wy(policy_state)**eps_w * PolicyState.Ny(policy_state) - phi_w * beta * (1.0 - PolicyState.piy(policy_state))**(zeta_w * (1.0 - eps_w)) * E_t(lambda s, ps: (1.0 + PolicyState.piy(ps))**(eps_w -1.0 ) * PolicyState.whashy(ps)**eps_w * PolicyState.h2y(ps))
    
    loss_dict['eq_8'] = PolicyState.whashy(policy_state) * PolicyState.h2y(policy_state) - ( eps_w / (eps_w - 1.0)) * PolicyState.h1y(policy_state)
    
    loss_dict['eq_9'] = PolicyState.wy(policy_state) *  PolicyState.Ny(policy_state) - ((1.0 - alpha) / alpha) * PolicyState.Khaty(policy_state) *  PolicyState.Ry(policy_state)
    
    loss_dict['eq_10'] = (1.0 - alpha) * State.Ax(state) * PolicyState.mcy(policy_state) * PolicyState.Khaty(policy_state)**alpha - PolicyState.wy(policy_state) * PolicyState.Ny(policy_state)**alpha
        
    loss_dict['eq_11'] = PolicyState.x1y(policy_state) - PolicyState.lambday(policy_state) * PolicyState.mcy(policy_state) * PolicyState.Yy(policy_state) - phi_p * beta * (1.0 + PolicyState.piy(policy_state))**(-zeta_p * eps_p) * E_t(lambda s, ps: (1.0 + PolicyState.piy(ps))**eps_p * PolicyState.x1y(ps) )
    
    loss_dict['eq_12'] = PolicyState.x2y(policy_state) - PolicyState.lambday(policy_state) * PolicyState.Yy(policy_state) - phi_p * beta * ( 1.0 + PolicyState.piy(policy_state))**(zeta_p *(1.0 - eps_p)) * E_t(lambda s, ps: (1.0 + PolicyState.piy(ps))**(eps_p - 1.0) * PolicyState.x2y(ps))
    
    loss_dict['eq_13'] = ((1.0 + PolicyState.pihashy(policy_state)) * PolicyState.x2y(policy_state) - (eps_p / (eps_p - 1.0)) * (1.0 + PolicyState.piy(policy_state))* PolicyState.x1y(policy_state))

    loss_dict['eq_14'] = PolicyState.Yy(policy_state) - PolicyState.Cy(policy_state) - b_habit * State.Cx(state) - PolicyState.Iy(policy_state) * State.Ix(state) - State.Gx(state) 
    
    loss_dict['eq_15'] = PolicyState.Ky(policy_state) - State.Zx(state) * (1.0 - kappa/2.0 * (PolicyState.Iy(policy_state) - 1.0 )**2.0) * PolicyState.Iy(policy_state)*State.Ix(state) - (1.0 - (delta_0 + delta_1 * (PolicyState.uy(policy_state) - 1.0) + delta_2/2.0 * (PolicyState.uy(policy_state) - 1.0)**2.0)) * State.Kx(state)       
    
    loss_dict['eq_16'] = State.Ax(state) * PolicyState.Khaty(policy_state)**alpha * PolicyState.Ny(policy_state)**(1.0 - alpha) - F_prod - PolicyState.Yy(policy_state) * PolicyState.nupy(policy_state)
    
    loss_dict['eq_17'] = PolicyState.Khaty(policy_state) - PolicyState.uy(policy_state) * State.Kx(state)
    
    loss_dict['eq_18'] = PolicyState.nupy(policy_state) * (1.0 + PolicyState.piy(policy_state))**(- eps_p) - (1.0 - phi_p) * (1.0 + PolicyState.pihashy(policy_state))**(- eps_p) - (1.0 + State.pix(state))**(-zeta_p*eps_p) * phi_p * State.nupx(state)
    
    loss_dict['eq_19'] =  (1.0 + PolicyState.piy(policy_state))**(1.0 - eps_p) - (1.0 - phi_p) * (1.0 + PolicyState.pihashy(policy_state) )**(1.0 - eps_p) - (1.0 + State.pix(state))**(zeta_p * (1.0 - eps_p)) * phi_p
    
    loss_dict['eq_20'] = PolicyState.wy(policy_state)**(1.0 - eps_w) - (1.0 - phi_w)*PolicyState.whashy(policy_state)**(1.0 - eps_w) - (1.0 + State.pix(state))**(zeta_w * (1.0 - eps_w)) * phi_w * (1.0 + PolicyState.piy(policy_state))**(eps_w - 1.0) * State.wx(state)**(1.0 - eps_w)

    loss_dict['eq_21'] = PolicyState.iy(policy_state) - tf.math.maximum((1.0 - rho_i) * i_ss + rho_i * State.ix(state) +  (1.0 - rho_i) * (phi_pi * (PolicyState.piy(policy_state) - pi_ss) + phi_y * (tf.math.log(PolicyState.Yy(policy_state)) - tf.math.log(State.Yx(state))) + State.mx(state)), i_LB )

    return loss_dict
Example #2
0
def AR_step(prev_state):
    # states with autoregressive components
    ar_step = tf.zeros_like(prev_state)
    ar_step = State.update(
        ar_step, "Ax", Parameters.rho_A * tf.math.log(State.Ax(prev_state)))
    ar_step = State.update(
        ar_step, "Gx",
        (1.0 - Parameters.rho_G) * tf.math.log(Parameters.G_gov) +
        Parameters.rho_G * tf.math.log(State.Gx(prev_state)))
    ar_step = State.update(
        ar_step, "Zx", Parameters.rho_Z * tf.math.log(State.Zx(prev_state)))
    ar_step = State.update(
        ar_step, "nux", Parameters.rho_nu * tf.math.log(State.nux(prev_state)))
    return State.update(
        ar_step, "psix",
        (1.0 - Parameters.rho_psi) * tf.math.log(Parameters.psi) +
        Parameters.rho_psi * tf.math.log(State.psix(prev_state)))
Example #3
0
def augment_state(state):
    state = State.update(state, "Ax", tf.math.exp(State.Ax(state)))
    state = State.update(state, "Gx", tf.math.exp(State.Gx(state)))
    state = State.update(state, "Zx", tf.math.exp(State.Zx(state)))
    state = State.update(state, "nux", tf.math.exp(State.nux(state)))
    return State.update(state, "psix", tf.math.exp(State.psix(state)))
Example #4
0
def equations(state, policy_state):
    E_t = State.E_t_gen(state, policy_state)

    loss_dict = {}

    weight = 1.0
    weight2 = 1.0

    Ky = Definitions.Ky(state, policy_state)
    iy = Definitions.iy(state, policy_state)

    lambday_norm = Definitions.lambday_norm(state, policy_state)
    Cy_norm = Definitions.Cy_norm(state, policy_state)
    piy_norm = Definitions.piy_norm(state, policy_state)
    pihashy_norm = Definitions.pihashy_norm(state, policy_state)
    muy_norm = Definitions.muy_norm(state, policy_state)
    Iy_norm = Definitions.Iy_norm(state, policy_state)
    Ry_norm = Definitions.Ry_norm(state, policy_state)
    h1y_norm = Definitions.h1y_norm(state, policy_state)
    h2y_norm = Definitions.h2y_norm(state, policy_state)
    whashy_norm = Definitions.whashy_norm(state, policy_state)
    wy_norm = Definitions.wy_norm(state, policy_state)
    Ny_norm = Definitions.Ny_norm(state, policy_state)
    mcy_norm = Definitions.mcy_norm(state, policy_state)
    x1y_norm = Definitions.x1y_norm(state, policy_state)
    x2y_norm = Definitions.x2y_norm(state, policy_state)
    Yy_norm = Definitions.Yy_norm(state, policy_state)
    nupy_norm = Definitions.nupy_norm(state, policy_state)

    #loss_dict['eq_1'] = 1600*E_t(lambda s, ps: Cy_norm * Definitions.Cy_norm(s, ps) * lambday_norm - Definitions.Cy_norm(s, ps) * State.nux(state) + Cy_norm * beta * b_habit * State.nux (s))

    # original eq 1
    loss_dict['eq_1'] = lambday_norm - (
        State.nux(state) /
        (Cy_norm)) + beta * b_habit * E_t(lambda s, ps: State.nux(s) /
                                          (Definitions.Cy_norm(s, ps)))

    loss_dict['eq_2'] = lambday_norm - beta * (
        1.0 + iy) * E_t(lambda s, ps: Definitions.lambday_norm(s, ps) *
                        (1.0 / (1.0 + Definitions.piy_norm(s, ps))))

    loss_dict['eq_3'] = lambday_norm - muy_norm * State.Zx(state) * (
        (1.0 - kappa / 2.0 * (Iy_norm / State.Ix(state) - 1.0)**2.0) - kappa *
        (Iy_norm / State.Ix(state) - 1.0) * Iy_norm / State.Ix(state)
    ) - beta * E_t(lambda s, ps: Definitions.muy_norm(s, ps) * State.Zx(
        s) * kappa * (Definitions.Iy_norm(s, ps) / Iy_norm - 1.0) *
                   (Definitions.Iy_norm(s, ps) / Iy_norm)**2.0)

    loss_dict['eq_4'] = muy_norm - beta * E_t(
        lambda s, ps: Definitions.lambday_norm(s, ps) * Definitions.Ry_norm(
            s, ps) + Definitions.muy_norm(s, ps) * (1.0 - delta_0))

    loss_dict['eq_5'] = h1y_norm * whashy_norm**(
        eps_w *
        (1.0 + chi)) - State.nux(state) * State.psix(state) * wy_norm**(
            eps_w * (1.0 + chi)) * Ny_norm**(1.0 + chi) - phi_w * beta * (
                1.0 + piy_norm)**(-zeta_w * eps_w * (1.0 + chi)) * E_t(
                    lambda s, ps: (1.0 + Definitions.piy_norm(s, ps))**
                    (eps_w * (1.0 + chi)) * Definitions.whashy_norm(s, ps)**
                    (eps_w * (1.0 + chi)) * Definitions.h1y_norm(s, ps))

    loss_dict[
        'eq_6'] = h2y_norm * whashy_norm**eps_w - lambday_norm * wy_norm**eps_w * Ny_norm - phi_w * beta * (
            1.0 - piy_norm)**(zeta_w * (1.0 - eps_w)) * E_t(
                lambda s, ps: (1.0 + Definitions.piy_norm(s, ps))**
                (eps_w - 1.0) * Definitions.whashy_norm(
                    s, ps)**eps_w * Definitions.h2y_norm(s, ps))

    loss_dict['eq_7'] = whashy_norm * h2y_norm - (eps_w /
                                                  (eps_w - 1.0)) * h1y_norm

    loss_dict['eq_8'] = wy_norm * Ny_norm - (
        (1.0 - alpha) / alpha) * Ky * Ry_norm

    loss_dict['eq_9'] = (1.0 - alpha) * State.Ax(
        state) * mcy_norm * Ky**alpha - wy_norm * Ny_norm**alpha

    loss_dict[
        'eq_10'] = x1y_norm - lambday_norm * mcy_norm * Yy_norm - phi_p * beta * (
            1.0 + piy_norm
        )**(-zeta_p * eps_p) * E_t(lambda s, ps: (1.0 + Definitions.piy_norm(
            s, ps))**eps_p * Definitions.x1y_norm(s, ps))

    loss_dict['eq_11'] = x2y_norm - lambday_norm * Yy_norm - phi_p * beta * (
        1.0 + piy_norm)**(zeta_p * (1.0 - eps_p)) * E_t(
            lambda s, ps: (1.0 + Definitions.piy_norm(s, ps))**
            (eps_p - 1.0) * Definitions.x2y_norm(s, ps))

    loss_dict['eq_12'] = (1.0 + pihashy_norm) * x2y_norm - (
        eps_p / (eps_p - 1.0)) * (1.0 + piy_norm) * x1y_norm

    loss_dict['eq_13'] = Yy_norm - Cy_norm - b_habit * State.Cx(
        state) - Iy_norm - State.Gx(state)

    loss_dict['eq_14'] = State.Ax(state) * Ky**alpha * Ny_norm**(
        1.0 - alpha) - F_prod - Yy_norm * nupy_norm

    loss_dict['eq_15'] = nupy_norm * (1.0 + piy_norm)**(-eps_p) - (
        1.0 - phi_p) * (1.0 + pihashy_norm)**(-eps_p) - (1.0 + State.pix(
            state))**(-zeta_p * eps_p) * phi_p * State.nupx(state)

    loss_dict['eq_16'] = (1.0 + piy_norm)**(
        1.0 - eps_p) - (1.0 - phi_p) * (1.0 + pihashy_norm)**(1.0 - eps_p) - (
            1.0 + State.pix(state))**(zeta_p * (1.0 - eps_p)) * phi_p

    loss_dict['eq_17'] = wy_norm**(
        1.0 - eps_w) - (1.0 - phi_w) * whashy_norm**(1.0 - eps_w) - (
            1.0 + State.pix(state))**(zeta_w * (1.0 - eps_w)) * phi_w * (
                1.0 + piy_norm)**(eps_w - 1.0) * State.wx(state)**(1.0 - eps_w)

    return loss_dict
Example #5
0
def equations(state, policy_state):
    E_t = State.E_t_gen(state, policy_state)

    loss_dict = {}

    weight = 1.0
    weight2 = 1.0

    Ky = Definitions.Ky(state, policy_state)
    iy = Definitions.iy(state, policy_state)

    #original equation
    loss_dict['eq_1'] = 1000 * E_t(
        lambda s, ps: PolicyState.Cy(policy_state) * PolicyState.Cy(
            ps) * PolicyState.lambday(policy_state) - PolicyState.Cy(
                ps) * State.nux(state) + PolicyState.Cy(
                    policy_state) * beta * b_habit * State.nux(s))

    # original eq 1
    #loss_dict['eq_1'] = PolicyState.lambday(policy_state) - (State.nux(state) / (PolicyState.Cy(policy_state) )) + beta * b_habit * E_t(lambda s, ps: State.nux (s) / (PolicyState.Cy(ps)))

    # original eq 1 1/C
    #loss_dict['eq_1'] = PolicyState.lambday(policy_state) - (State.nux(state) / (PolicyState.Cy(policy_state) )) + beta * b_habit * E_t(lambda s, ps: State.nux (s) / ((weight*(PolicyState.Cy(ps)) + (1-weight)*0.025)))

    ## debug #  replace (PolicyState.Cy(ps)) with (weight*(PolicyState.Cy(ps)) + (1-weight)*0.025) -- E()
    #loss_dict['eq_1'] = E_t(lambda s, ps: PolicyState.Cy(policy_state) * (weight*(PolicyState.Cy(ps)) + (1-weight)*0.025) * PolicyState.lambday(policy_state) - (weight*(PolicyState.Cy(ps)) + (1-weight)*0.025) * State.nux(state) + PolicyState.Cy(policy_state) * beta * b_habit * State.nux (s))

    #loss_dict['eq_2'] = PolicyState.lambday(policy_state) - beta * (1.0 + PolicyState.iy(policy_state)) * E_t(lambda s, ps: PolicyState.lambday(ps)*(1.0/(1.0 + PolicyState.piy(ps) )))

    # debug: replace PolicyState.lambday(ps) with (weight*(PolicyState.lambday(ps)) + (1-weight)*2.6206)
    loss_dict['eq_2'] = PolicyState.lambday(policy_state) - beta * (
        1.0 + iy) * E_t(lambda s, ps: (weight * (PolicyState.lambday(ps)) +
                                       (1 - weight) * 2.6206) *
                        (1.0 / (1.0 + PolicyState.piy(ps))))

    loss_dict['eq_3'] = PolicyState.lambday(
        policy_state
    ) - PolicyState.muy(policy_state) * State.Zx(state) * (
        (1.0 - kappa / 2.0 *
         (PolicyState.Iy(policy_state) / State.Ix(state) - 1.0)**2.0) - kappa *
        (PolicyState.Iy(policy_state) / State.Ix(state) - 1.0) *
        PolicyState.Iy(policy_state) / State.Ix(state)) - beta * E_t(
            lambda s, ps: (weight * (PolicyState.muy(ps)) +
                           (1 - weight) * 2.6206) * State.Zx(s) * kappa *
            ((weight2 * (PolicyState.Iy(ps)) +
              (1 - weight2) * 0.1881) / PolicyState.Iy(policy_state) - 1.0) *
            ((weight2 * (PolicyState.Iy(ps)) +
              (1 - weight2) * 0.1881) / PolicyState.Iy(policy_state))**2.0)

    # debug: replace PolicyState.muy(ps) with (weight*(PolicyState.muy(ps)) + (1-weight)*2.6206)
    loss_dict['eq_4'] = PolicyState.muy(policy_state) - beta * E_t(
        lambda s, ps: PolicyState.lambday(ps) * PolicyState.Ry(ps) +
        (weight * (PolicyState.muy(ps)) +
         (1 - weight) * 2.6206) * (1.0 - delta_0))

    loss_dict['eq_5'] = 10 * (
        PolicyState.h1y(policy_state) * PolicyState.whashy(policy_state)**
        (eps_w * (1.0 + chi)) -
        State.nux(state) * State.psix(state) * PolicyState.wy(policy_state)**
        (eps_w * (1.0 + chi)) * PolicyState.Ny(policy_state)**(1.0 + chi) -
        phi_w * beta * (1.0 + PolicyState.piy(policy_state))**
        (-zeta_w * eps_w *
         (1.0 + chi)) * E_t(lambda s, ps: (1.0 + PolicyState.piy(ps))**
                            (eps_w * (1.0 + chi)) * PolicyState.whashy(ps)**
                            (eps_w * (1.0 + chi)) * PolicyState.h1y(ps)))

    loss_dict['eq_6'] = 10 * (
        PolicyState.h2y(policy_state) * PolicyState.whashy(policy_state)**eps_w
        - PolicyState.lambday(policy_state) * PolicyState.wy(policy_state)**
        eps_w * PolicyState.Ny(policy_state) - phi_w * beta *
        (1.0 - PolicyState.piy(policy_state))**(zeta_w * (1.0 - eps_w)) *
        E_t(lambda s, ps: (1.0 + PolicyState.piy(ps))**(eps_w - 1.0) *
            PolicyState.whashy(ps)**eps_w * PolicyState.h2y(ps)))

    loss_dict['eq_7'] = PolicyState.whashy(policy_state) * PolicyState.h2y(
        policy_state) - (eps_w / (eps_w - 1.0)) * PolicyState.h1y(policy_state)

    loss_dict['eq_8'] = PolicyState.wy(policy_state) * PolicyState.Ny(
        policy_state) - (
            (1.0 - alpha) / alpha) * Ky * PolicyState.Ry(policy_state)

    loss_dict['eq_9'] = (1.0 - alpha) * State.Ax(state) * PolicyState.mcy(
        policy_state) * Ky**alpha - PolicyState.wy(
            policy_state) * PolicyState.Ny(policy_state)**alpha

    loss_dict['eq_10'] = 100 * (
        PolicyState.x1y(policy_state) - PolicyState.lambday(policy_state) *
        PolicyState.mcy(policy_state) * PolicyState.Yy(policy_state) -
        phi_p * beta *
        (1.0 + PolicyState.piy(policy_state))**(-zeta_p * eps_p) *
        E_t(lambda s, ps:
            (1.0 + PolicyState.piy(ps))**eps_p * PolicyState.x1y(ps)))

    loss_dict['eq_11'] = 10 * (
        PolicyState.x2y(policy_state) - PolicyState.lambday(policy_state) *
        PolicyState.Yy(policy_state) - phi_p * beta *
        (1.0 + PolicyState.piy(policy_state))**
        (zeta_p *
         (1.0 - eps_p)) * E_t(lambda s, ps: (1.0 + PolicyState.piy(ps))**
                              (eps_p - 1.0) * PolicyState.x2y(ps)))

    loss_dict['eq_12'] = 100 * (
        (1.0 + PolicyState.pihashy(policy_state)) *
        PolicyState.x2y(policy_state) - (eps_p / (eps_p - 1.0)) *
        (1.0 + PolicyState.piy(policy_state)) * PolicyState.x1y(policy_state))

    loss_dict['eq_13'] = PolicyState.Yy(policy_state) - PolicyState.Cy(
        policy_state) - b_habit * State.Cx(state) - PolicyState.Iy(
            policy_state) - State.Gx(state)

    #original Eq.
    #loss_dict['eq_14'] = PolicyState.Ky(policy_state) - State.Zx(state) * (1.0 - kappa/2.0 * (PolicyState.Iy(policy_state)/State.Ix(state) - 1.0 )**2.0) * PolicyState.Iy(policy_state) - (1.0 - delta_0) * State.Kx(state)

    loss_dict['eq_14'] = State.Ax(state) * Ky**alpha * PolicyState.Ny(
        policy_state)**(1.0 - alpha) - F_prod - PolicyState.Yy(
            policy_state) * PolicyState.nupy(policy_state)

    loss_dict['eq_15'] = PolicyState.nupy(policy_state) * (
        1.0 + PolicyState.piy(policy_state))**(-eps_p) - (1.0 - phi_p) * (
            1.0 + PolicyState.pihashy(policy_state))**(-eps_p) - (
                1.0 + State.pix(state))**(-zeta_p *
                                          eps_p) * phi_p * State.nupx(state)

    loss_dict['eq_16'] = (1.0 + PolicyState.piy(policy_state))**(
        1.0 -
        eps_p) - (1.0 - phi_p) * (1.0 + PolicyState.pihashy(policy_state))**(
            1.0 - eps_p) - (1.0 + State.pix(state))**(zeta_p *
                                                      (1.0 - eps_p)) * phi_p

    loss_dict['eq_17'] = PolicyState.wy(policy_state)**(1.0 - eps_w) - (
        1.0 - phi_w) * PolicyState.whashy(policy_state)**(1.0 - eps_w) - (
            1.0 + State.pix(state))**(zeta_w * (1.0 - eps_w)) * phi_w * (
                1.0 + PolicyState.piy(policy_state))**(
                    eps_w - 1.0) * State.wx(state)**(1.0 - eps_w)

    #original Eq., substituted
    #loss_dict['eq_18'] = PolicyState.iy(policy_state) - tf.math.maximum((1.0 - rho_i) * i_ss + rho_i * State.ix(state) +  (1.0 - rho_i) * (phi_pi * (PolicyState.piy(policy_state) - pi_ss) + phi_y * (tf.math.log(PolicyState.Yy(policy_state)) - tf.math.log(State.Yx(state))) + State.mx(state)), i_LB )

    return loss_dict
def equations(state, policy_state):
    E_t = State.E_t_gen(state, policy_state)
    
    loss_dict = {}

    delta_1 = 1.0/beta - (1.0 - delta_0)
    #delta_1 = Definitions.delta_1(state, policy_state)
    
    weight = 0.6
    
   
    #original equation
    #loss_dict['eq_1'] = tf.exp(E_t(lambda s, ps: PolicyState.Cy(policy_state) * PolicyState.Cy(ps) * PolicyState.lambday(policy_state) - PolicyState.Cy(ps) * State.nux(state) + PolicyState.Cy(policy_state) * beta * b_habit * State.nux (s))) - 1.0    
    
    # original eq 1
    #loss_dict['eq_1'] = PolicyState.lambday(policy_state) - (State.nux(state) / (PolicyState.Cy(policy_state) )) + beta * b_habit * E_t(lambda s, ps: State.nux (s) / (PolicyState.Cy(ps)))    
    
    
    
      # original eq 1 1/C
    #loss_dict['eq_1'] = PolicyState.lambday(policy_state) - (State.nux(state) / (PolicyState.Cy(policy_state) )) + beta * b_habit * E_t(lambda s, ps: State.nux (s) / ((weight*(PolicyState.Cy(ps)) + (1-weight)*0.025)))    
    
    
    # debug #  replace (PolicyState.Cy(ps)) with (weight*(PolicyState.Cy(ps)) + (1-weight)*0.025) -- E()
    loss_dict['eq_1'] = E_t(lambda s, ps: PolicyState.Cy(policy_state) * (weight*(PolicyState.Cy(ps)) + (1-weight)*0.025) * PolicyState.lambday(policy_state) - (weight*(PolicyState.Cy(ps)) + (1-weight)*0.025) * State.nux(state) + PolicyState.Cy(policy_state) * beta * b_habit * State.nux (s)) 
    
    loss_dict['eq_2'] = PolicyState.lambday(policy_state) * PolicyState.Ry(policy_state) - PolicyState.muy(policy_state) * (delta_1 + delta_2 *(PolicyState.uy(policy_state) - 1.0)) 
    
    #loss_dict['eq_3'] = PolicyState.lambday(policy_state) - beta * (1.0 + PolicyState.iy(policy_state)) * E_t(lambda s, ps: PolicyState.lambday(ps)*(1.0/(1.0 + PolicyState.piy(ps) )))        
    
    # debug: replace PolicyState.piy(ps) with (weight*(PolicyState.piy(ps)) + (1-weight)*0.005)        
    # debug: replace PolicyState.lambday(ps) with (weight*(PolicyState.lambday(ps)) + (1-weight)*2.6206) 
    loss_dict['eq_3'] = PolicyState.lambday(policy_state) - beta * (1.0 + PolicyState.iy(policy_state)) * E_t(lambda s, ps: PolicyState.lambday(ps)*(1.0/(1.0 + (weight*(PolicyState.piy(ps)) + (1-weight)*0.005))))
    
    #loss_dict['eq_4'] = PolicyState.lambday(policy_state) - PolicyState.muy(policy_state) * State.Zx(state) * ((1.0 - kappa/2.0 * (PolicyState.Iy(policy_state)/State.Ix(state) - 1.0 )**2.0) - kappa * (PolicyState.Iy(policy_state)/State.Ix(state) - 1.0) * PolicyState.Iy(policy_state)/State.Ix(state)) - beta * E_t(lambda s, ps: PolicyState.muy(ps) * State.Zx(s) * kappa * (PolicyState.Iy(ps)/PolicyState.Iy(policy_state) - 1.0) * (PolicyState.Iy(ps)/PolicyState.Iy(policy_state))**2.0 )
    
    # debug: replace PolicyState.Iy(ps) with (weight*(PolicyState.Iy(ps)) + (1-weight)*0.1881)  
    # debug: replace PolicyState.muy(ps) with (weight*(PolicyState.muy(ps)) + (1-weight)*2.6206) 
    loss_dict['eq_4'] = PolicyState.lambday(policy_state) - PolicyState.muy(policy_state) * State.Zx(state) * ((1.0 - kappa/2.0 * (PolicyState.Iy(policy_state)/State.Ix(state) - 1.0 )**2.0) - kappa * (PolicyState.Iy(policy_state)/State.Ix(state) - 1.0) * PolicyState.Iy(policy_state)/State.Ix(state)) - beta * E_t(lambda s, ps: (weight*(PolicyState.muy(ps)) + (1-weight)*2.6206) * State.Zx(s) * kappa * ((weight*(PolicyState.Iy(ps)) + (1-weight)*0.1881)/PolicyState.Iy(policy_state) - 1.0) * ((weight*(PolicyState.Iy(ps)) + (1-weight)*0.1881)/PolicyState.Iy(policy_state))**2.0 )
    
    #loss_dict['eq_5'] = PolicyState.muy(policy_state) - beta * E_t(lambda s, ps: PolicyState.lambday(ps) * PolicyState.Ry(ps) * PolicyState.uy(ps) + PolicyState.muy(ps) * (1.0 - (delta_0 + delta_1 * (PolicyState.uy(ps) - 1.0) + delta_2/2.0 * (PolicyState.uy(ps) - 1.0)**2.0 )))   

    # debug: replace PolicyState.muy(ps) with (weight*(PolicyState.muy(ps)) + (1-weight)*2.6206) 
    # debug: replace PolicyState.uy(ps) with (weight*(PolicyState.uy(ps)) + (1-weight)*1.0) 
    # debug: replace PolicyState.lambday(ps) with (weight*(PolicyState.lambday(ps)) + (1-weight)*2.6206)     
    loss_dict['eq_5'] = PolicyState.muy(policy_state) - beta * E_t(lambda s, ps: (weight*(PolicyState.lambday(ps)) + (1-weight)*2.6206) * PolicyState.Ry(ps) * PolicyState.uy(ps) + (weight*(PolicyState.muy(ps)) + (1-weight)*2.6206) * (1.0 - (delta_0 + delta_1 * ((weight*(PolicyState.uy(ps)) + (1-weight)*1.0) - 1.0) + delta_2/2.0 * ((weight*(PolicyState.uy(ps)) + (1-weight)*1.0) - 1.0)**2.0 )))  
    
    #loss_dict['eq_6'] = PolicyState.h1y(policy_state) * PolicyState.whashy(policy_state)**(eps_w * (1.0 + chi)) - State.nux(state) * State.psix(state) * PolicyState.wy(policy_state)**(eps_w * (1.0 + chi)) * PolicyState.Ny(policy_state)**(1.0 + chi) - phi_w * beta * (1.0 + PolicyState.piy(policy_state))**(-zeta_w * eps_w * ( 1.0 + chi )) * E_t(lambda s, ps: (1.0 + PolicyState.piy(ps))**(eps_w * (1.0 + chi)) * PolicyState.whashy(ps)**(eps_w * (1.0 + chi)) * PolicyState.h1y(ps))
 
    # debug: replace PolicyState.whashy(ps) with (weight*(PolicyState.whashy(ps)) + (1-weight)*1.969) 
    # debug: replace PolicyState.h1y(ps) with (weight*(PolicyState.h1y(ps)) + (1-weight)*1.6711)     
    # debug: replace PolicyState.piy(ps) with (weight*(PolicyState.piy(ps)) + (1-weight)*0.005)         
    loss_dict['eq_6'] = PolicyState.h1y(policy_state) * PolicyState.whashy(policy_state)**(eps_w * (1.0 + chi)) - State.nux(state) * State.psix(state) * PolicyState.wy(policy_state)**(eps_w * (1.0 + chi)) * PolicyState.Ny(policy_state)**(1.0 + chi) - phi_w * beta * (1.0 + PolicyState.piy(policy_state))**(-zeta_w * eps_w * ( 1.0 + chi )) * E_t(lambda s, ps: (1.0 + (weight*(PolicyState.piy(ps)) + (1-weight)*0.005))**(eps_w * (1.0 + chi)) * (weight*(PolicyState.whashy(ps)) + (1-weight)*1.969)**(eps_w * (1.0 + chi)) * (weight*(PolicyState.h1y(ps)) + (1-weight)*1.6711))
 
    #loss_dict['eq_7'] = PolicyState.h2y(policy_state) * PolicyState.whashy(policy_state)**eps_w - PolicyState.lambday(policy_state) * PolicyState.wy(policy_state)**eps_w * PolicyState.Ny(policy_state) - phi_w * beta * (1.0 - PolicyState.piy(policy_state))**(zeta_w * (1.0 - eps_w)) * E_t(lambda s, ps: (1.0 + PolicyState.piy(ps))**(eps_w -1.0 ) * PolicyState.whashy(ps)**eps_w * PolicyState.h2y(ps))
    
    # debug: replace PolicyState.whashy(ps) with (weight*(PolicyState.whashy(ps)) + (1-weight)*1.969) 
    # debug: replace PolicyState.h2y(ps) with (weight*(PolicyState.h2y(ps)) + (1-weight)*2.8441)         
    # debug: replace PolicyState.piy(ps) with (weight*(PolicyState.piy(ps)) + (1-weight)*0.005)             
    loss_dict['eq_7'] = PolicyState.h2y(policy_state) * PolicyState.whashy(policy_state)**eps_w - PolicyState.lambday(policy_state) * PolicyState.wy(policy_state)**eps_w * PolicyState.Ny(policy_state) - phi_w * beta * (1.0 - PolicyState.piy(policy_state))**(zeta_w * (1.0 - eps_w)) * E_t(lambda s, ps: (1.0 + (weight*(PolicyState.piy(ps)) + (1-weight)*0.005))**(eps_w -1.0 ) * (weight*(PolicyState.whashy(ps)) + (1-weight)*1.969)**eps_w * (weight*(PolicyState.h2y(ps)) + (1-weight)*2.8441))
    
    loss_dict['eq_8'] = PolicyState.whashy(policy_state) * PolicyState.h2y(policy_state) - ( eps_w / (eps_w - 1.0)) * PolicyState.h1y(policy_state)
    
    loss_dict['eq_9'] = PolicyState.wy(policy_state) *  PolicyState.Ny(policy_state) - ((1.0 - alpha) / alpha) * PolicyState.Khaty(policy_state) *  PolicyState.Ry(policy_state)
    
    loss_dict['eq_10'] = (1.0 - alpha) * State.Ax(state) * PolicyState.mcy(policy_state) * PolicyState.Khaty(policy_state)**alpha - PolicyState.wy(policy_state) * PolicyState.Ny(policy_state)**alpha
        
    #loss_dict['eq_11'] = PolicyState.x1y(policy_state) - PolicyState.lambday(policy_state) * PolicyState.mcy(policy_state) * PolicyState.Yy(policy_state) - phi_p * beta * (1.0 + PolicyState.piy(policy_state))**(-zeta_p * eps_p) * E_t(lambda s, ps: (1.0 + PolicyState.piy(ps))**eps_p * PolicyState.x1y(ps) )

    # debug: replace PolicyState.x1y(ps) with (weight*(PolicyState.x1y(ps)) + (1-weight)*5.3470) 
    # debug: replace PolicyState.piy(ps) with (weight*(PolicyState.piy(ps)) + (1-weight)*0.005)                 
    loss_dict['eq_11'] = PolicyState.x1y(policy_state) - PolicyState.lambday(policy_state) * PolicyState.mcy(policy_state) * PolicyState.Yy(policy_state) - phi_p * beta * (1.0 + PolicyState.piy(policy_state))**(-zeta_p * eps_p) * E_t(lambda s, ps: (1.0 + (weight*(PolicyState.piy(ps)) + (1-weight)*0.005))**eps_p * (weight*(PolicyState.x1y(ps)) + (1-weight)*5.3470))

    
    #loss_dict['eq_12'] = PolicyState.x2y(policy_state) - PolicyState.lambday(policy_state) * PolicyState.Yy(policy_state) - phi_p * beta * ( 1.0 + PolicyState.piy(policy_state))**(zeta_p *(1.0 - eps_p)) * E_t(lambda s, ps: (1.0 + PolicyState.piy(ps))**(eps_p - 1.0) * PolicyState.x2y(ps))

    # debug: replace PolicyState.x2y(ps) with (weight*(PolicyState.x2y(ps)) + (1-weight)*6.6009)  
    # debug: replace PolicyState.piy(ps) with (weight*(PolicyState.piy(ps)) + (1-weight)*0.005)                     
    loss_dict['eq_12'] = PolicyState.x2y(policy_state) - PolicyState.lambday(policy_state) * PolicyState.Yy(policy_state) - phi_p * beta * ( 1.0 + PolicyState.piy(policy_state))**(zeta_p *(1.0 - eps_p)) * E_t(lambda s, ps: (1.0 + (weight*(PolicyState.piy(ps)) + (1-weight)*0.005))**(eps_p - 1.0) * (weight*(PolicyState.x2y(ps)) + (1-weight)*6.6009))    
    
    loss_dict['eq_13'] = (1.0 + PolicyState.pihashy(policy_state)) * PolicyState.x2y(policy_state) - (eps_p / (eps_p - 1.0)) * (1.0 + PolicyState.piy(policy_state))* PolicyState.x1y(policy_state)

    loss_dict['eq_14'] = PolicyState.Yy(policy_state) - PolicyState.Cy(policy_state) - b_habit * State.Cx(state) - PolicyState.Iy(policy_state) - State.Gx(state) 
    
    loss_dict['eq_15'] = PolicyState.Ky(policy_state) - State.Zx(state) * (1.0 - kappa/2.0 * (PolicyState.Iy(policy_state)/State.Ix(state) - 1.0 )**2.0) * PolicyState.Iy(policy_state) - (1.0 - (delta_0 + delta_1 * (PolicyState.uy(policy_state) - 1.0) + delta_2/2.0 * (PolicyState.uy(policy_state) - 1.0)**2.0)) * State.Kx(state)       
    
    #loss_dict['eq_15'] = tf.square(PolicyState.Ky(policy_state) - State.Zx(state) * (1.0 - kappa/2.0 * (PolicyState.Iy(policy_state)/State.Ix(state) - 1.0 )**2.0) * PolicyState.Iy(policy_state) - (1.0 - (delta_0 + delta_1 * (PolicyState.uy(policy_state) - 1.0) + delta_2/2.0 * (PolicyState.uy(policy_state) - 1.0)**2.0)) * State.Kx(state))    




    loss_dict['eq_16'] = State.Ax(state) * PolicyState.Khaty(policy_state)**alpha * PolicyState.Ny(policy_state)**(1.0 - alpha) - F_prod - PolicyState.Yy(policy_state) * PolicyState.nupy(policy_state)
    
    loss_dict['eq_17'] = PolicyState.Khaty(policy_state) - PolicyState.uy(policy_state) * State.Kx(state)
    
    loss_dict['eq_18'] = PolicyState.nupy(policy_state) * (1.0 + PolicyState.piy(policy_state))**(- eps_p) - (1.0 - phi_p) * (1.0 + PolicyState.pihashy(policy_state))**(- eps_p) - (1.0 + State.pix(state))**(-zeta_p*eps_p) * phi_p * State.nupx(state)
    
    loss_dict['eq_19'] =  (1.0 + PolicyState.piy(policy_state))**(1.0 - eps_p) - (1.0 - phi_p) * (1.0 + PolicyState.pihashy(policy_state) )**(1.0 - eps_p) - (1.0 + State.pix(state))**(zeta_p * (1.0 - eps_p)) * phi_p
    
    loss_dict['eq_20'] = PolicyState.wy(policy_state)**(1.0 - eps_w) - (1.0 - phi_w)*PolicyState.whashy(policy_state)**(1.0 - eps_w) - (1.0 + State.pix(state))**(zeta_w * (1.0 - eps_w)) * phi_w * (1.0 + PolicyState.piy(policy_state))**(eps_w - 1.0) * State.wx(state)**(1.0 - eps_w)

    loss_dict['eq_21'] = PolicyState.iy(policy_state) - tf.math.maximum((1.0 - rho_i) * i_ss + rho_i * State.ix(state) +  (1.0 - rho_i) * (phi_pi * (PolicyState.piy(policy_state) - pi_ss) + phi_y * (tf.math.log(PolicyState.Yy(policy_state)) - tf.math.log(State.Yx(state))) + State.mx(state)), i_LB )

    return loss_dict