Back to Search Start Over

Quantum Algorithm for Anomaly Detection of Sequences

Authors :
Guo, Ming-Chao
Liu, Hai-Ling
Pan, Shi-Jie
Li, Wen-Min
Qin, Su-Juan
Huang, Xin-Yi
Gao, Fei
Wen, Qiao-Yan
Publication Year :
2022

Abstract

Anomaly detection of sequences is a hot topic in data mining. Anomaly Detection using Piecewise Aggregate approximation in the Amplitude Domain (called ADPAAD) is one of the widely used methods in anomaly detection of sequences. The core step in the classical algorithm for performing ADPAAD is to construct an approximate representation of the subsequence, where the elements of each subsequence are divided into several subsections according to the amplitude domain and then the average of the subsections is computed. It is computationally expensive when processing large-scale sequences. In this paper, we propose a quantum algorithm for ADPAAD, which can divide the subsequence elements and compute the average in parallel. Our quantum algorithm can achieve polynomial speedups on the number of subsequences and the length of subsequences over its classical counterpart.

Subjects

Subjects :
Quantum Physics

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2209.08594
Document Type :
Working Paper