Source code for qiskit_finance.applications.estimation.fixed_income_pricing

# This code is part of a Qiskit project.
#
# (C) Copyright IBM 2018, 2023.
#
# This code is licensed under the Apache License, Version 2.0. You may
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"""An application class for the Fixed Income Pricing."""
from typing import Tuple, List

import numpy as np

from qiskit.circuit import QuantumCircuit
from qiskit_algorithms import (
    EstimationProblem,
    AmplitudeEstimatorResult,
)
from qiskit_finance.applications.estimation.estimation_application import (
    EstimationApplication,
)
from qiskit_finance.circuit.library.payoff_functions.fixed_income_pricing_objective import (
    FixedIncomePricingObjective,
)


[docs]class FixedIncomePricing(EstimationApplication): r"""An estimation application for the fixed income pricing problem. evaluate the expected value of the total value :math:`V` of the assets .. math:: V = \sum_{t=1}^T \frac{c_t}{(1+r_t)^t}. [1]: Woerner, S., & Egger, D. J. (2018). Quantum Risk Analysis. `arXiv:1806.06893 <http://arxiv.org/abs/1806.06893>`_ """ def __init__( self, num_qubits: List[int], pca_matrix: np.ndarray, initial_interests: List[int], cash_flow: List[float], rescaling_factor: float, bounds: List[Tuple[float, float]], uncertainty_model: QuantumCircuit, ) -> None: r""" Args: num_qubits: A list specifying the number of qubits used to discretize the assets. pca_matrix: The PCA matrix for the changes in the interest rates, :math:`\delta_r`. initial_interests: The initial interest rates / offsets for the interest rates. cash_flow: The cash flow time series. rescaling_factor: The scaling factor used in the Taylor approximation. bounds: The list of the tuple of the bounds, (min, max), for return values the assets can attain. The bounds for return values the assets can attain. uncertainty_model: A circuit for encoding a problem distribution """ self._objective = FixedIncomePricingObjective( num_qubits=num_qubits, pca_matrix=pca_matrix, initial_interests=initial_interests, cash_flow=cash_flow, rescaling_factor=rescaling_factor, bounds=bounds, ) self._state_preparation = QuantumCircuit(self._objective.num_qubits) self._state_preparation.compose( uncertainty_model, range(uncertainty_model.num_qubits), inplace=True ) self._state_preparation.compose( self._objective, range(self._objective.num_qubits), inplace=True ) self._objective_qubits = uncertainty_model.num_qubits
[docs] def to_estimation_problem(self) -> EstimationProblem: """Convert a problem instance into a :class:`qiskit_algorithms.EstimationProblem` Returns: The :class:`qiskit_algorithms.EstimationProblem` created from the Fixed problem instance. """ problem = EstimationProblem( state_preparation=self._state_preparation, objective_qubits=[self._objective_qubits], post_processing=self._objective.post_processing, ) return problem
[docs] def interpret(self, result: AmplitudeEstimatorResult) -> float: """Convert the calculation result of the problem (:class:`qiskit_algorithms.AmplitudeEstimatorResult`) to the answer of the problem. Args: result: The calculated result of the problem Returns: The estimation value after the post_processing. """ return result.estimation_processed