Research on performance optimizations for TCM-KNN network anomaly detection algorithm

Based on TCM-KNN(transductive confidence machine for K-nearest neighbors) algorithm,the filter-based feature selection and cluster-based instance selection methods were used towards optimizing it as a lightweight network anomaly detection scheme,which not only reduced its complex feature space,but a...

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Main Authors: LI Yang1, GUO Li1, LU Tian-bo3, TIAN Zhi-hong1
Format: Article
Language:zho
Published: Editorial Department of Journal on Communications 2009-01-01
Series:Tongxin xuebao
Subjects:
Online Access:http://www.joconline.com.cn/zh/article/74651426/
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author LI Yang1
GUO Li1
LU Tian-bo3
TIAN Zhi-hong1
author_facet LI Yang1
GUO Li1
LU Tian-bo3
TIAN Zhi-hong1
author_sort LI Yang1
collection DOAJ
description Based on TCM-KNN(transductive confidence machine for K-nearest neighbors) algorithm,the filter-based feature selection and cluster-based instance selection methods were used towards optimizing it as a lightweight network anomaly detection scheme,which not only reduced its complex feature space,but also acquired high quality instances for training.A series of experimental results demonstrate the two methods for optimizations are actually effective in greatly reducing the computational costs while ensuring high detection performances for TCM-KNN algorithm.Therefore,the two methods make TCM-KNN be a good scheme for a lightweight network anomaly detection in practice.
format Article
id doaj-art-ae6d5c3e024d433daadb8981f4342714
institution Kabale University
issn 1000-436X
language zho
publishDate 2009-01-01
publisher Editorial Department of Journal on Communications
record_format Article
series Tongxin xuebao
spelling doaj-art-ae6d5c3e024d433daadb8981f43427142025-01-14T08:28:57ZzhoEditorial Department of Journal on CommunicationsTongxin xuebao1000-436X2009-01-0130131974651426Research on performance optimizations for TCM-KNN network anomaly detection algorithmLI Yang1GUO Li1LU Tian-bo3TIAN Zhi-hong1Based on TCM-KNN(transductive confidence machine for K-nearest neighbors) algorithm,the filter-based feature selection and cluster-based instance selection methods were used towards optimizing it as a lightweight network anomaly detection scheme,which not only reduced its complex feature space,but also acquired high quality instances for training.A series of experimental results demonstrate the two methods for optimizations are actually effective in greatly reducing the computational costs while ensuring high detection performances for TCM-KNN algorithm.Therefore,the two methods make TCM-KNN be a good scheme for a lightweight network anomaly detection in practice.http://www.joconline.com.cn/zh/article/74651426/network securityanomaly detectionTCM-KNN algorithmfeature selectioninstance selection
spellingShingle LI Yang1
GUO Li1
LU Tian-bo3
TIAN Zhi-hong1
Research on performance optimizations for TCM-KNN network anomaly detection algorithm
Tongxin xuebao
network security
anomaly detection
TCM-KNN algorithm
feature selection
instance selection
title Research on performance optimizations for TCM-KNN network anomaly detection algorithm
title_full Research on performance optimizations for TCM-KNN network anomaly detection algorithm
title_fullStr Research on performance optimizations for TCM-KNN network anomaly detection algorithm
title_full_unstemmed Research on performance optimizations for TCM-KNN network anomaly detection algorithm
title_short Research on performance optimizations for TCM-KNN network anomaly detection algorithm
title_sort research on performance optimizations for tcm knn network anomaly detection algorithm
topic network security
anomaly detection
TCM-KNN algorithm
feature selection
instance selection
url http://www.joconline.com.cn/zh/article/74651426/
work_keys_str_mv AT liyang1 researchonperformanceoptimizationsfortcmknnnetworkanomalydetectionalgorithm
AT guoli1 researchonperformanceoptimizationsfortcmknnnetworkanomalydetectionalgorithm
AT lutianbo3 researchonperformanceoptimizationsfortcmknnnetworkanomalydetectionalgorithm
AT tianzhihong1 researchonperformanceoptimizationsfortcmknnnetworkanomalydetectionalgorithm