Source code for qf_lib.portfolio_construction.portfolio_models.equal_risk_contribution_portfolio

#     Copyright 2016-present CERN – European Organization for Nuclear Research
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from typing import Union, Sequence

from qf_lib.common.timeseries_analysis.risk_contribution_analysis import RiskContributionAnalysis
from qf_lib.common.utils.logging.qf_parent_logger import qf_logger
from qf_lib.containers.dataframe.qf_dataframe import QFDataFrame
from qf_lib.containers.series.qf_series import QFSeries
from qf_lib.portfolio_construction.optimizers.nonlinear_function_optimizer import NonlinearFunctionOptimizer
from qf_lib.portfolio_construction.portfolio_models.portfolio import Portfolio


[docs]class EqualRiskContributionPortfolio(Portfolio): """ Class used for constructing an ERC portfolio. """ def __init__(self, cov_matrix: QFDataFrame, upper_constraint: Union[float, Sequence[float]] = None): self.cov_matrix = cov_matrix self.upper_constraint = upper_constraint self.max_iter = 10000 # maximal number of iterations during finding the solution self.logger = qf_logger.getChild(self.__class__.__name__)
[docs] def get_weights(self) -> QFSeries: def minimised_func(weights_values: Sequence[float]): weights_series = QFSeries(data=weights_values, index=self.cov_matrix.columns) return RiskContributionAnalysis.get_distance_to_equal_risk_contrib(self.cov_matrix, weights_series) weights = NonlinearFunctionOptimizer.get_weights( minimised_func, max_iter=self.max_iter, upper_constraints=self.upper_constraint, num_of_assets=self.cov_matrix.shape[1]) weights = QFSeries(data=weights, index=self.cov_matrix.columns.copy()) if not RiskContributionAnalysis.is_equal_risk_contribution(self.cov_matrix, weights): self.logger.warning("EqualRiskContributionPortfolio: calculated weights do not create an ERC Portfolio.") return weights