qiskit_machine_learning.kernels.trainable_fidelity_quantum_kernel의 소스 코드

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# (C) Copyright IBM 2022, 2023.
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"""Trainable Quantum Kernel"""

from __future__ import annotations

from typing import Sequence

import numpy as np
from qiskit import QuantumCircuit
from qiskit.circuit import Parameter, ParameterVector
from qiskit_algorithms.state_fidelities import BaseStateFidelity

from .fidelity_quantum_kernel import FidelityQuantumKernel, KernelIndices
from .trainable_kernel import TrainableKernel


[문서]class TrainableFidelityQuantumKernel(TrainableKernel, FidelityQuantumKernel): r""" An implementation of the quantum kernel that is based on the :class:`~qiskit_algorithms.state_fidelities.BaseStateFidelity` algorithm and provides ability to train it. Finding good quantum kernels for a specific machine learning task is a big challenge in quantum machine learning. One way to choose the kernel is to add trainable parameters to the feature map, which can be used to fine-tune the kernel. This kernel has trainable parameters :math:`\theta` that can be bound using training algorithms. The kernel entries are given as .. math:: K_{\theta}(x,y) = |\langle \phi_{\theta}(x) | \phi_{\theta}(y) \rangle|^2 """ def __init__( self, *, feature_map: QuantumCircuit | None = None, fidelity: BaseStateFidelity | None = None, training_parameters: ParameterVector | Sequence[Parameter] | None = None, enforce_psd: bool = True, evaluate_duplicates: str = "off_diagonal", ) -> None: """ Args: feature_map: Parameterized circuit to be used as the feature map. If ``None`` is given, :class:`~qiskit.circuit.library.ZZFeatureMap` is used with two qubits. If there's a mismatch in the number of qubits of the feature map and the number of features in the dataset, then the kernel will try to adjust the feature map to reflect the number of features. fidelity: An instance of the :class:`~qiskit_algorithms.state_fidelities.BaseStateFidelity` primitive to be used to compute fidelity between states. Default is :class:`~qiskit_algorithms.state_fidelities.ComputeUncompute` which is created on top of the reference sampler defined by :class:`~qiskit.primitives.Sampler`. training_parameters: Iterable containing :class:`~qiskit.circuit.Parameter` objects which correspond to quantum gates on the feature map circuit which may be tuned. If users intend to tune feature map parameters to find optimal values, this field should be set. enforce_psd: Project to the closest positive semidefinite matrix if ``x = y``. Default ``True``. evaluate_duplicates: Defines a strategy how kernel matrix elements are evaluated if duplicate samples are found. Possible values are: - ``all`` means that all kernel matrix elements are evaluated, even the diagonal ones when training. This may introduce additional noise in the matrix. - ``off_diagonal`` when training the matrix diagonal is set to `1`, the rest elements are fully evaluated, e.g., for two identical samples in the dataset. When inferring, all elements are evaluated. This is the default value. - ``none`` when training the diagonal is set to `1` and if two identical samples are found in the dataset the corresponding matrix element is set to `1`. When inferring, matrix elements for identical samples are set to `1`. """ super().__init__( feature_map=feature_map, fidelity=fidelity, training_parameters=training_parameters, enforce_psd=enforce_psd, evaluate_duplicates=evaluate_duplicates, ) # override the num of features defined in the base class self._num_features = feature_map.num_parameters - self._num_training_parameters self._feature_parameters = [ parameter for parameter in feature_map.parameters if parameter not in self._training_parameters ] self._parameter_dict = {parameter: None for parameter in feature_map.parameters} def _get_parameterization( self, x_vec: np.ndarray, y_vec: np.ndarray ) -> tuple[np.ndarray, np.ndarray, KernelIndices]: new_x_vec = self._parameter_array(x_vec) new_y_vec = self._parameter_array(y_vec) return super()._get_parameterization(new_x_vec, new_y_vec) def _get_symmetric_parameterization( self, x_vec: np.ndarray ) -> tuple[np.ndarray, np.ndarray, KernelIndices]: new_x_vec = self._parameter_array(x_vec) return super()._get_symmetric_parameterization(new_x_vec)