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import pandas as pd
import statsmodels.api as sm
from collections import OrderedDict
import datetime
from alphacast import Alphacast
import gradio as gr
import plotly.graph_objects as go
import matplotlib.pyplot as plt
import seaborn as sns
import os
key = os.getenv('key_alphacast')
alphacast = Alphacast(key)
dataset = alphacast.datasets.dataset(5664)
df = dataset.download_data(format = "pandas", startDate=None, endDate=None, filterVariables = [], filterEntities = {})
data = df[["country","Date","Real Consumption at constant 2017 national prices (In mil. 2017US$)",
"Average annual hours worked by persons engaged",
"Capital Stock at constant 2017 national prices (In mil. 2017US$)",
"Population (In millions)"]]
data = data.rename(columns={
"Real Consumption at constant 2017 national prices (In mil. 2017US$)": "C",
"Average annual hours worked by persons engaged": "L",
"Capital Stock at constant 2017 national prices (In mil. 2017US$)": "I",
"Population (In millions)": "N"
})
paises = ["Argentina", "Brazil", "Chile", "Uruguay", "Colombia"]
subdatasets = {}
rbc_data = {}
for pais in paises:
df_pais = data[data['country'] == pais]
df_pais = df_pais.rename(columns = {"Date":"DATE"})
df_pais.set_index('DATE', inplace=True)
df_pais = df_pais[df_pais.index >= '1990-01-01']
N = df_pais['N']
C = df_pais['C'] / N
I = df_pais['I'] / N
L = df_pais['L']
Y = C + I
y = np.log(Y).diff()[1:]
c = np.log(C).diff()[1:]
n = np.log(L).diff()[1:]
rbc_data[pais] = pd.concat((y, n, c), axis=1)
rbc_data[pais].columns = ['output', 'labor', 'consumption']
data_2 = df[["country","Date","Real GDP at constant 2017 national prices (In mil. 2017US$)","Real Consumption at constant 2017 national prices (In mil. 2017US$)",
"Average annual hours worked by persons engaged",
"Capital Stock at constant 2017 national prices (In mil. 2017US$)",
"Population (In millions)"]]
data_2= data_2.rename(columns={"Real GDP at constant 2017 national prices (In mil. 2017US$)":"Y",
"Real Consumption at constant 2017 national prices (In mil. 2017US$)": "C",
"Average annual hours worked by persons engaged": "L",
"Capital Stock at constant 2017 national prices (In mil. 2017US$)": "I",
"Population (In millions)": "N"
})
subdatasets_2 = {}
rbc_data_2 = {}
for pais in paises:
df_pais = data_2[data_2['country'] == pais]
df_pais = df_pais.rename(columns = {"Date":"DATE"})
df_pais.set_index('DATE', inplace=True)
df_pais = df_pais[df_pais.index >= '1990-01-01']
N = df_pais['N']
Y = df_pais["Y"] / N
C = df_pais['C'] / N
I = df_pais['I'] / N
L = df_pais['L']
y = np.log(Y).diff()[1:]
c = np.log(C).diff()[1:]
n = np.log(L).diff()[1:]
rbc_data_2[pais] = pd.concat((y, n, c), axis=1)
rbc_data_2[pais].columns = ['output', 'labor', 'consumption']
def generar_grafico_pais(pais):
df_pais = rbc_data[pais]
fig = go.Figure()
fig.add_trace(go.Scatter(x=df_pais.index, y=df_pais['output'],
mode='lines+markers', name='Output (y)', marker=dict(symbol='circle')))
fig.add_trace(go.Scatter(x=df_pais.index, y=df_pais['labor'],
mode='lines+markers', name='Labor (n)', marker=dict(symbol='x')))
fig.add_trace(go.Scatter(x=df_pais.index, y=df_pais['consumption'],
mode='lines+markers', name='Consumption (c)', marker=dict(symbol='square')))
fig.update_layout(title=f'Producción, Trabajo, y Consumo para {pais} (1991 - 2019)',
xaxis_title='Fecha',
yaxis_title='Log Differences',
legend_title='Variables',
template='plotly_dark')
fig.show()
class SimpleRBC(sm.tsa.statespace.MLEModel):
parameters = OrderedDict([
('discount_rate', 0.95),
('disutility_labor', 3.),
('depreciation_rate', 0.025),
('capital_share', 0.36),
('technology_shock_persistence', 0.85),
('technology_shock_var', 0.04**2)
])
def __init__(self, endog, calibrated=None):
super(SimpleRBC, self).__init__(
endog, k_states=2, k_posdef=1, initialization='stationary')
self.k_predetermined = 1
parameters = list(self.parameters.keys())
calibrated = calibrated or {}
self.calibrated = OrderedDict([
(param, calibrated[param]) for param in parameters
if param in calibrated
])
self.idx_calibrated = np.array([
param in self.calibrated for param in parameters])
self.idx_estimated = ~self.idx_calibrated
self.k_params = len(self.parameters)
self.k_calibrated = len(self.calibrated)
self.k_estimated = self.k_params - self.k_calibrated
self.idx_cap_share = parameters.index('capital_share')
self.idx_tech_pers = parameters.index('technology_shock_persistence')
self.idx_tech_var = parameters.index('technology_shock_var')
self['selection', 1, 0] = 1
@property
def start_params(self):
structural_params = np.array(list(self.parameters.values()))[self.idx_estimated]
measurement_variances = [0.1] * 3
return np.r_[structural_params, measurement_variances]
@property
def param_names(self):
structural_params = np.array(list(self.parameters.keys()))[self.idx_estimated]
measurement_variances = ['%s.var' % name for name in self.endog_names]
return structural_params.tolist() + measurement_variances
def log_linearize(self, params):
(discount_rate, disutility_labor, depreciation_rate, capital_share,
technology_shock_persistence, technology_shock_var) = params
tmp = (1. / discount_rate - (1. - depreciation_rate))
theta = (capital_share / tmp)**(1. / (1. - capital_share))
gamma = 1. - depreciation_rate * theta**(1. - capital_share)
zeta = capital_share * discount_rate * theta**(capital_share - 1)
A = np.eye(2)
B11 = 1 + depreciation_rate * (gamma / (1 - gamma))
B12 = (-depreciation_rate *
(1 - capital_share + gamma * capital_share) /
(capital_share * (1 - gamma)))
B21 = 0
B22 = capital_share / (zeta + capital_share*(1 - zeta))
B = np.array([[B11, B12], [B21, B22]])
C1 = depreciation_rate / (capital_share * (1 - gamma))
C2 = (zeta * technology_shock_persistence /
(zeta + capital_share*(1 - zeta)))
C = np.array([[C1], [C2]])
return A, B, C
def solve(self, params):
capital_share = params[self.idx_cap_share]
technology_shock_persistence = params[self.idx_tech_pers]
A, B, C = self.log_linearize(params)
eigvals, right_eigvecs = np.linalg.eig(np.transpose(B))
left_eigvecs = np.transpose(right_eigvecs)
idx = np.argsort(eigvals)
eigvals = np.diag(eigvals[idx])
left_eigvecs = left_eigvecs[idx, :]
k_nonpredetermined = self.k_states - self.k_predetermined
k_stable = len(np.where(eigvals.diagonal() < 1)[0])
k_unstable = self.k_states - k_stable
if not k_stable == self.k_predetermined:
raise RuntimeError('Blanchard-Kahn condition not met.'
' Unique solution does not exist.')
k = self.k_predetermined
p1 = np.s_[:k]
p2 = np.s_[k:]
p11 = np.s_[:k, :k]
p12 = np.s_[:k, k:]
p21 = np.s_[k:, :k]
p22 = np.s_[k:, k:]
decoupled_C = np.dot(left_eigvecs, C)
tmp = np.linalg.inv(left_eigvecs[p22])
policy_state = - np.dot(tmp, left_eigvecs[p21]).squeeze()
policy_shock = -(
np.dot(tmp, 1. / eigvals[p22]).dot(
np.linalg.inv(
np.eye(k_nonpredetermined) -
technology_shock_persistence / eigvals[p22]
)
).dot(decoupled_C[p2])
).squeeze()
transition_state = np.squeeze(B[p11] + np.dot(B[p12], policy_state))
transition_shock = np.squeeze(np.dot(B[p12], policy_shock) + C[p1])
tmp = (1 - capital_share) / capital_share
tmp1 = 1. / capital_share
design = np.array([[1 - tmp * policy_state, tmp1 - tmp * policy_shock],
[1 - tmp1 * policy_state, tmp1 * (1-policy_shock)],
[policy_state, policy_shock]])
transition = (
np.array([[transition_state, transition_shock],
[0, technology_shock_persistence]]))
return design, transition
def transform_discount_rate(self, param, untransform=False):
epsilon = 1e-4
if not untransform:
return np.abs(1 / (1 + np.exp(param)) - epsilon)
else:
return np.log((1 - param + epsilon) / (param + epsilon))
def transform_disutility_labor(self, param, untransform=False):
return param**2 if not untransform else param**0.5
def transform_depreciation_rate(self, param, untransform=False):
return param**2 if not untransform else param**0.5
def transform_capital_share(self, param, untransform=False):
epsilon = 1e-4
if not untransform:
return np.abs(1 / (1 + np.exp(param)) - epsilon)
else:
return np.log((1 - param + epsilon) / (param + epsilon))
def transform_technology_shock_persistence(self, param, untransform=False):
if not untransform:
return param / (1 + np.abs(param))
else:
return param / (1 - param)
def transform_technology_shock_var(self, unconstrained, untransform=False):
return unconstrained**2 if not untransform else unconstrained**0.5
def transform_params(self, unconstrained):
constrained = np.zeros(unconstrained.shape, unconstrained.dtype)
i = 0
for param in self.parameters.keys():
if param not in self.calibrated:
method = getattr(self, 'transform_%s' % param)
constrained[i] = method(unconstrained[i])
i += 1
constrained[self.k_estimated:] = unconstrained[self.k_estimated:]**2
return constrained
def untransform_params(self, constrained):
unconstrained = np.zeros(constrained.shape, constrained.dtype)
i = 0
for param in self.parameters.keys():
if param not in self.calibrated:
method = getattr(self, 'transform_%s' % param)
unconstrained[i] = method(constrained[i], untransform=True)
i += 1
unconstrained[self.k_estimated:] = constrained[self.k_estimated:]**0.5
return unconstrained
def update(self, params, **kwargs):
params = super(SimpleRBC, self).update(params, **kwargs)
structural_params = np.zeros(self.k_params, dtype=params.dtype)
structural_params[self.idx_calibrated] = list(self.calibrated.values())
structural_params[self.idx_estimated] = params[:self.k_estimated]
measurement_variances = params[self.k_estimated:]
design, transition = self.solve(structural_params)
self['design'] = design
self['obs_cov', 0, 0] = measurement_variances[0]
self['obs_cov', 1, 1] = measurement_variances[1]
self['obs_cov', 2, 2] = measurement_variances[2]
self['transition'] = transition
self['state_cov', 0, 0] = structural_params[self.idx_tech_var]
calibrated = {
'discount_rate': 0.95,
'disutility_labor': 3.0,
'capital_share': 0.36,
'depreciation_rate': 0.025,
'technology_shock_persistence': 0.85,
'technology_shock_var': 0.012**2
}
def plot_irfs_plotly(irfs):
fig = go.Figure()
fig.add_trace(go.Scatter(x=list(range(len(irfs['output']))), y=irfs['output'], mode='lines+markers', name='Output'))
fig.add_trace(go.Scatter(x=list(range(len(irfs['labor']))), y=irfs['labor'], mode='lines+markers', name='Labor'))
fig.add_trace(go.Scatter(x=list(range(len(irfs['consumption']))), y=irfs['consumption'], mode='lines+markers', name='Consumption'))
fig.update_layout(
title="Función Impulso Respuesta",
xaxis_title="Años después del shcok",
yaxis_title="Impulso respuesta (%)",
legend_title="Variables",
template = "plotly_dark"
)
return fig
def plot_states_plotly(res, rbc_data):
fig = go.Figure()
capital = res.smoothed_state[0, :]
shock = res.smoothed_state[1, :]
fig.add_trace(go.Scatter(x=rbc_data.index, y=capital, mode='lines', name='Capital'))
fig.add_trace(go.Scatter(x=rbc_data.index, y=shock, mode='lines', name='Technology process'))
fig.update_layout(
title="State Variables over Time",
xaxis_title="Time",
yaxis_title="Value",
legend_title="Variables",
template = "plotly_dark"
)
return fig
def plot_rbc_model(pais, persistence, shock_variance, discount_rate, disutility_labor, capital_share, depreciation_rate):
calibrated = {
'discount_rate': discount_rate,
'disutility_labor': disutility_labor,
'capital_share': capital_share,
'depreciation_rate': depreciation_rate,
'technology_shock_persistence': persistence,
'technology_shock_var': shock_variance ** 2
}
calibrated_mod = SimpleRBC(rbc_data[pais], calibrated=calibrated)
calibrated_res = calibrated_mod.fit(method='nm', maxiter=1000, disp=0)
calibrated_irfs_pos = calibrated_res.impulse_responses(40, orthogonalized=True) * 100
calibrated_irfs_neg = -calibrated_irfs_pos
fig_pos = plot_irfs_plotly(pd.DataFrame(calibrated_irfs_pos, columns=['output', 'labor', 'consumption']))
fig_neg = plot_irfs_plotly(pd.DataFrame(calibrated_irfs_neg, columns=['output', 'labor', 'consumption']))
summary_df = calibrated_res.summary().tables[1].data
summary_df = pd.DataFrame(summary_df[1:], columns=summary_df[0])
estimated_coefficients = summary_df['coef'].astype(float)
estimated_var_output = estimated_coefficients[summary_df.index[0]]
estimated_var_labor = estimated_coefficients[summary_df.index[1]]
estimated_var_consumption = estimated_coefficients[summary_df.index[2]]
var_output = np.var(rbc_data_2[pais]["output"])
var_consumption = np.var(rbc_data_2[pais]["consumption"])
var_labor = np.var(rbc_data_2[pais]["labor"])
var_data = pd.DataFrame({
'Variable': ['Output Real', 'Consumption', 'Labor'],
'Varianza Real': [var_output, var_consumption, var_labor],
'Varianza Estimada': [estimated_var_output, estimated_var_consumption, estimated_var_labor],
'Diferencia': [abs(var_output - estimated_var_output), abs(var_consumption - estimated_var_consumption), abs(var_labor - estimated_var_labor)]
})
return fig_pos, fig_neg, summary_df, var_data
with gr.Blocks() as demo:
with gr.Row():
gr.Markdown("### Real Business Cycle (RBC) Model Dashboard")
with gr.Tab("Ecuaciones del Modelo"):
gr.Markdown(r"""
### Ecuaciones del Modelo RBC
- **FOC estática**:
$$ \psi c_t = (1 - \alpha) z_t \left( \frac{k_t}{n_t} \right)^{\alpha} $$
- **Ecuación de Euler**:
$$ \frac{1}{c_t} = \beta E_t \left\{ \frac{1}{c_{t+1}} \left[ \alpha z_{t+1} \left( \frac{k_{t+1}}{n_{t+1}} \right)^{\alpha-1} + (1 - \delta) \right] \right\} $$
- **Función de producción**:
$$ y_t = z_t k_t^{\alpha} n_t^{1 - \alpha} $$
- **Restricción de recursos agregados**:
$$ y_t = c_t + i_t $$
- **Acumulación de capital**:
$$ k_{t+1} = (1 - \delta)k_t + i_t $$
- **Comercio entre trabajo y ocio**:
$$ 1 = l_t + n_t $$
- **Transición del choque tecnológico**:
$$ \log z_t = \rho \log z_{t-1} + \varepsilon_t $$
""")
#with gr.Tab("Gráfico del País"):
# pais_plot = gr.Dropdown(label="Clasificación Fondo", choices=["Argentina", "Brazil", "Chile", "Uruguay", "Colombia"])
# plot_output = gr.Plot()
# pais_plot.change(generar_grafico_pais, pais_plot, plot_output)
with gr.Tab("Calibración del Modelo"):
pais_selec = gr.Dropdown(choices=["Argentina", "Brazil", "Chile", "Uruguay", "Colombia"], label="Selecciona un país")
persistence = gr.Slider(label="Persistencia del choque tecnológico", minimum=0.5, maximum=1.0, value=0.85)
shock_variance = gr.Slider(label="Desviación estándar del choque tecnológico", minimum=0.01, maximum=0.05, value=0.012)
discount_rate = gr.Number(label="Tasa de descuento (β)", value=0.95)
disutility_labor = gr.Number(label="Desutilidad del trabajo", value=3.0)
capital_share = gr.Number(label="Participación del capital (α)", value=0.36)
depreciation_rate = gr.Number(label="Tasa de depreciación", value=0.025)
btn = gr.Button("Actualizar Modelo")
output_pos = gr.Plot(label="Respuesta ante un Choque Tecnológico Positivo")
output_neg = gr.Plot(label="Respuesta ante un Choque Tecnológico Negativo")
with gr.Tab("Estadísticas del Modelo"):
output_stats = gr.DataFrame(label="Output estadístico del modelo", type="pandas")
output_var = gr.DataFrame(label="Varianzas reales", type = "pandas")
btn.click(fn=plot_rbc_model,
inputs=[pais_selec,persistence, shock_variance, discount_rate, disutility_labor, capital_share, depreciation_rate],
outputs=[output_pos, output_neg, output_stats,output_var])
demo.launch() |