论文标题
量子极端学习
Quantum Extremal Learning
论文作者
论文摘要
我们提出了一种用于“极端学习”的量子算法,这是找到超极大功能输出的隐藏函数的输入的过程,而无需直接访问隐藏功能,只有部分输入输入输出(培训)数据。该算法称为量子极端学习(QEL),由一个参数量子电路组成,该量子电路是经过多种训练的参数训练,可用于模型数据输入输入关系,而编码输入数据的可训练的量子特征图(分析)进行了分析区分,以便找到极端化模型的坐标。这使得在单电路/量子计算机上结合了已建立的量子机学习建模与已建立的量子优化。我们已经基于离散或连续输入变量在一系列经典数据集上测试了我们的算法,这两种变量都与算法兼容。在离散变量的情况下,我们测试了基于最大问题生成器提出的合成问题的算法,并考虑输入输出关系中的高阶相关性。对于连续变量,我们在1D和简单的普通微分函数中测试了合成数据集的算法。我们发现,即使训练数据集稀疏或输入配置空间的一小部分,该算法也能够成功找到此类问题的最大值。我们还展示了如何将算法用于更高维度,复杂微分方程的更一般情况以及在选择建模和优化ANSATZ时具有完全灵活性。我们设想,由于其一般框架和简单的结构,Qel算法将能够在不同领域的各种应用程序中解决各种应用,从而开辟了进一步的研究领域。
We propose a quantum algorithm for `extremal learning', which is the process of finding the input to a hidden function that extremizes the function output, without having direct access to the hidden function, given only partial input-output (training) data. The algorithm, called quantum extremal learning (QEL), consists of a parametric quantum circuit that is variationally trained to model data input-output relationships and where a trainable quantum feature map, that encodes the input data, is analytically differentiated in order to find the coordinate that extremizes the model. This enables the combination of established quantum machine learning modelling with established quantum optimization, on a single circuit/quantum computer. We have tested our algorithm on a range of classical datasets based on either discrete or continuous input variables, both of which are compatible with the algorithm. In case of discrete variables, we test our algorithm on synthetic problems formulated based on Max-Cut problem generators and also considering higher order correlations in the input-output relationships. In case of the continuous variables, we test our algorithm on synthetic datasets in 1D and simple ordinary differential functions. We find that the algorithm is able to successfully find the extremal value of such problems, even when the training dataset is sparse or a small fraction of the input configuration space. We additionally show how the algorithm can be used for much more general cases of higher dimensionality, complex differential equations, and with full flexibility in the choice of both modeling and optimization ansatz. We envision that due to its general framework and simple construction, the QEL algorithm will be able to solve a wide variety of applications in different fields, opening up areas of further research.