Persistent homology, a powerful mathematical tool for data analysis, summarizes the shape of data through tracking topological features across changes in different scales. Classical algorithms for persistent homology are often constrained by running times and memory requirements that grow exponentially on the number of data points. To surpass this problem, two quantum algorithms of persistent homology have been developed based on two different approaches. However, both of these quantum algorithms consider a data set in the form of a point cloud, which can be restrictive considering that many data sets come in the form of time series. In this paper, we alleviate this issue by establishing a quantum Takens's delay embedding algorithm, which turns a time series into a point cloud by considering a pertinent embedding into a higher dimensional space. Having this quantum transformation of time series to point clouds, then one may use a quantum persistent homology algorithm to extract the topological features from the point cloud associated with the original times series.
翻译:持久性同质学是一个强大的数据分析数学工具,它通过跟踪不同尺度变化的地形特征来总结数据形状。 持久性同质学的经典算法往往受到运行时间和记忆要求的限制,这些算法在数据点数上成倍增长。 要克服这个问题,根据两种不同的方法,已经开发了两种持久性同质学的量子算法。 但是,这两种量子算法都考虑以点云形式构成的数据集,考虑到许多数据集是以时间序列的形式出现的,这种数据集可能是限制性的。在本文中,我们通过建立量子控件延迟嵌入算法来缓解这一问题,这种算法将时间序列转换成点云,将相关的时间序列嵌入一个更高的维空间。如果将时间序列的量子转换成点云,那么人们就可以使用量性的持续同质算法从与原始时间序列相关的点云中提取表学特征。