Research on mimic decision method based on deep learning

Due to software and hardware differentiation, the problem of false positives mistakenly identified as network attack behavior caused by inconsistent mimic decision results frequently occurs.Therefore, a mimic decision method based on deep learning was proposed.By constructing an unsupervised autoenc...

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Main Authors: Xiaohan YANG, Guozhen CHENG, Wenyan LIU, Shuai ZHANG, Bing HAO
Format: Article
Language:zho
Published: Editorial Department of Journal on Communications 2024-02-01
Series:Tongxin xuebao
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Online Access:http://www.joconline.com.cn/zh/article/doi/10.11959/j.issn.1000-436x.2024047/
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author Xiaohan YANG
Guozhen CHENG
Wenyan LIU
Shuai ZHANG
Bing HAO
author_facet Xiaohan YANG
Guozhen CHENG
Wenyan LIU
Shuai ZHANG
Bing HAO
author_sort Xiaohan YANG
collection DOAJ
description Due to software and hardware differentiation, the problem of false positives mistakenly identified as network attack behavior caused by inconsistent mimic decision results frequently occurs.Therefore, a mimic decision method based on deep learning was proposed.By constructing an unsupervised autoencoder-decoder deep learning model, the deep semantic features of diverse normal response data were explored from different executions and its statistical rules were analyzed and summarized.Additionally, the offline learning-online decision-making mechanism and the feedback optimization mechanism were designed to solve false positive problem, thereby accurately detecting network attacks and improving target system security resilience.Since statistical rules of normal response data was understood and mastered by deep learning model, the mimic decision results among different executions could remain consistent, indicating that the target system was in a secure state.However, once the target system was subjected to a network attacks, the response data outputted by the different executions was deviated from statistical distribution of deep learning model.Therefore, inconsistent mimic decision results were presented, indicating that the affected execution was under attack and the target system was exposed to potential security threats.The experiments show that the performance of the proposed method is significantly superior to the popular mimic decision methods, and the average prediction accuracy is improved by 14.89%, which is conducive to integrating the method into the mimic transformation of real application to enhance the system’s defensive capability.
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spelling doaj-art-3897ff4573424e7bb3e4e764293634742025-01-14T06:22:04ZzhoEditorial Department of Journal on CommunicationsTongxin xuebao1000-436X2024-02-0145798959383201Research on mimic decision method based on deep learningXiaohan YANGGuozhen CHENGWenyan LIUShuai ZHANGBing HAODue to software and hardware differentiation, the problem of false positives mistakenly identified as network attack behavior caused by inconsistent mimic decision results frequently occurs.Therefore, a mimic decision method based on deep learning was proposed.By constructing an unsupervised autoencoder-decoder deep learning model, the deep semantic features of diverse normal response data were explored from different executions and its statistical rules were analyzed and summarized.Additionally, the offline learning-online decision-making mechanism and the feedback optimization mechanism were designed to solve false positive problem, thereby accurately detecting network attacks and improving target system security resilience.Since statistical rules of normal response data was understood and mastered by deep learning model, the mimic decision results among different executions could remain consistent, indicating that the target system was in a secure state.However, once the target system was subjected to a network attacks, the response data outputted by the different executions was deviated from statistical distribution of deep learning model.Therefore, inconsistent mimic decision results were presented, indicating that the affected execution was under attack and the target system was exposed to potential security threats.The experiments show that the performance of the proposed method is significantly superior to the popular mimic decision methods, and the average prediction accuracy is improved by 14.89%, which is conducive to integrating the method into the mimic transformation of real application to enhance the system’s defensive capability.http://www.joconline.com.cn/zh/article/doi/10.11959/j.issn.1000-436x.2024047/mimic defenseactive defensemimic decisiondeep learningoffline learning-online decision-making
spellingShingle Xiaohan YANG
Guozhen CHENG
Wenyan LIU
Shuai ZHANG
Bing HAO
Research on mimic decision method based on deep learning
Tongxin xuebao
mimic defense
active defense
mimic decision
deep learning
offline learning-online decision-making
title Research on mimic decision method based on deep learning
title_full Research on mimic decision method based on deep learning
title_fullStr Research on mimic decision method based on deep learning
title_full_unstemmed Research on mimic decision method based on deep learning
title_short Research on mimic decision method based on deep learning
title_sort research on mimic decision method based on deep learning
topic mimic defense
active defense
mimic decision
deep learning
offline learning-online decision-making
url http://www.joconline.com.cn/zh/article/doi/10.11959/j.issn.1000-436x.2024047/
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AT guozhencheng researchonmimicdecisionmethodbasedondeeplearning
AT wenyanliu researchonmimicdecisionmethodbasedondeeplearning
AT shuaizhang researchonmimicdecisionmethodbasedondeeplearning
AT binghao researchonmimicdecisionmethodbasedondeeplearning