Audit Analysis of Abnormal Behavior of Social Security Fund Based on Adaptive Spectral Clustering Algorithm

Abnormal behavior detection of social security funds is a method to analyze large-scale data and find abnormal behavior. Although many methods based on spectral clustering have achieved many good results in the practical application of clustering, the research on the spectral clustering algorithm is...

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Main Authors: Yan Wu, Yonghong Chen, Wenhao Ling
Format: Article
Language:English
Published: Hindawi-Wiley 2021-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2021/4969233
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spelling doaj-9d88a5e3be0b4a69a4efca6cdd9de6d32021-05-31T00:33:15ZengHindawi-WileyComplexity1099-05262021-01-01202110.1155/2021/4969233Audit Analysis of Abnormal Behavior of Social Security Fund Based on Adaptive Spectral Clustering AlgorithmYan Wu0Yonghong Chen1Wenhao Ling2School of BusinessSchool of Public AdministrationInstitute of Local Government and Societal GovernanceAbnormal behavior detection of social security funds is a method to analyze large-scale data and find abnormal behavior. Although many methods based on spectral clustering have achieved many good results in the practical application of clustering, the research on the spectral clustering algorithm is still in the early stage of development. Many existing algorithms are very sensitive to clustering parameters, especially scale parameters, and need to manually input the number of clustering. Therefore, a density-sensitive similarity measure is introduced in this paper, which is obtained by introducing new parameters to transform the Gaussian function. Under this metric, the distance between data points belonging to different classes will be effectively amplified, while the distance between data points belonging to the same class will be reduced, and finally, the distribution of data will be effectively clustered. At the same time, the idea of Eigen gap is introduced into the spectral clustering algorithm, and the verified gap sequence is constructed on the basis of Laplace matrix, so as to solve the problem of the number of initial clustering. The strong global search ability of artificial bee colony algorithm is used to make up for the shortcoming of spectral clustering algorithm that is easy to fall into local optimal. The experimental results show that the adaptive spectral clustering algorithm can better identify the initial clustering center, perform more effective clustering, and detect abnormal behavior more accurately.http://dx.doi.org/10.1155/2021/4969233
collection DOAJ
language English
format Article
sources DOAJ
author Yan Wu
Yonghong Chen
Wenhao Ling
spellingShingle Yan Wu
Yonghong Chen
Wenhao Ling
Audit Analysis of Abnormal Behavior of Social Security Fund Based on Adaptive Spectral Clustering Algorithm
Complexity
author_facet Yan Wu
Yonghong Chen
Wenhao Ling
author_sort Yan Wu
title Audit Analysis of Abnormal Behavior of Social Security Fund Based on Adaptive Spectral Clustering Algorithm
title_short Audit Analysis of Abnormal Behavior of Social Security Fund Based on Adaptive Spectral Clustering Algorithm
title_full Audit Analysis of Abnormal Behavior of Social Security Fund Based on Adaptive Spectral Clustering Algorithm
title_fullStr Audit Analysis of Abnormal Behavior of Social Security Fund Based on Adaptive Spectral Clustering Algorithm
title_full_unstemmed Audit Analysis of Abnormal Behavior of Social Security Fund Based on Adaptive Spectral Clustering Algorithm
title_sort audit analysis of abnormal behavior of social security fund based on adaptive spectral clustering algorithm
publisher Hindawi-Wiley
series Complexity
issn 1099-0526
publishDate 2021-01-01
description Abnormal behavior detection of social security funds is a method to analyze large-scale data and find abnormal behavior. Although many methods based on spectral clustering have achieved many good results in the practical application of clustering, the research on the spectral clustering algorithm is still in the early stage of development. Many existing algorithms are very sensitive to clustering parameters, especially scale parameters, and need to manually input the number of clustering. Therefore, a density-sensitive similarity measure is introduced in this paper, which is obtained by introducing new parameters to transform the Gaussian function. Under this metric, the distance between data points belonging to different classes will be effectively amplified, while the distance between data points belonging to the same class will be reduced, and finally, the distribution of data will be effectively clustered. At the same time, the idea of Eigen gap is introduced into the spectral clustering algorithm, and the verified gap sequence is constructed on the basis of Laplace matrix, so as to solve the problem of the number of initial clustering. The strong global search ability of artificial bee colony algorithm is used to make up for the shortcoming of spectral clustering algorithm that is easy to fall into local optimal. The experimental results show that the adaptive spectral clustering algorithm can better identify the initial clustering center, perform more effective clustering, and detect abnormal behavior more accurately.
url http://dx.doi.org/10.1155/2021/4969233
work_keys_str_mv AT yanwu auditanalysisofabnormalbehaviorofsocialsecurityfundbasedonadaptivespectralclusteringalgorithm
AT yonghongchen auditanalysisofabnormalbehaviorofsocialsecurityfundbasedonadaptivespectralclusteringalgorithm
AT wenhaoling auditanalysisofabnormalbehaviorofsocialsecurityfundbasedonadaptivespectralclusteringalgorithm
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