Search Results - Malicious JavaScript detection

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  1. 1

    Taylor–HHO algorithm: A hybrid optimization algorithm with deep long short‐term for malicious JavaScript detection by Alex, Scaria, Dhiliphan Rajkumar, T.

    ISSN: 0884-8173, 1098-111X
    Published: New York John Wiley & Sons, Inc 01.12.2021
    “… The malicious script, like, JavaScript, is a major threat to computer networks in terms of network security…”
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    Journal Article
  2. 2

    ZipAST: Enhancing malicious JavaScript detection with sequence compression by Chen, Zixian, Wang, Weiping, Qin, Yan, Zhang, Shigeng

    ISSN: 0167-4048
    Published: Elsevier Ltd 01.06.2025
    Published in Computers & security (01.06.2025)
    “… With the advancements in deep learning technologies, deep learning networks have shown the ability to automatically learn strong feature representations from malicious JavaScript…”
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    Journal Article
  3. 3

    JSContana: Malicious JavaScript detection using adaptable context analysis and key feature extraction by Huang, Yunhua, Li, Tao, Zhang, Lijia, Li, Beibei, Liu, Xiaojie

    ISSN: 0167-4048, 1872-6208
    Published: Elsevier Ltd 01.05.2021
    Published in Computers & security (01.05.2021)
    “… Although malicious JavaScript detection methods are becoming increasingly effective, the existing methods based on feature matching or static word embeddings are difficult to detect different…”
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    Journal Article
  4. 4

    JStrong: Malicious JavaScript detection based on code semantic representation and graph neural network by Fang, Yong, Huang, Chaoyi, Zeng, Minchuan, Zhao, Zhiying, Huang, Cheng

    ISSN: 0167-4048, 1872-6208
    Published: Amsterdam Elsevier Ltd 01.07.2022
    Published in Computers & security (01.07.2022)
    “… However, the attacker uses the dynamic characteristics of the JavaScript language to embed malicious code into web pages to achieve the purpose of smuggling, redirection, and so on…”
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    Journal Article
  5. 5

    Research on Malicious JavaScript Detection Technology Based on LSTM by Fang, Yong, Huang, Cheng, Liu, Liang, Xue, Min

    ISSN: 2169-3536, 2169-3536
    Published: Piscataway IEEE 2018
    Published in IEEE access (2018)
    “… By analyzing the existing researches on malicious JavaScript detection, a malicious JavaScript detection model based on LSTM…”
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    Journal Article
  6. 6

    Malicious JavaScript Detection Based on Bidirectional LSTM Model by Song, Xuyan, Chen, Chen, Cui, Baojiang, Fu, Junsong

    ISSN: 2076-3417, 2076-3417
    Published: Basel MDPI AG 01.05.2020
    Published in Applied sciences (01.05.2020)
    “… To solve this problem, many learning-based methods for malicious JavaScript detection are being explored…”
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    Journal Article
  7. 7

    Detecting malicious JavaScript code based on semantic analysis by Fang, Yong, Huang, Cheng, Su, Yu, Qiu, Yaoyao

    ISSN: 0167-4048, 1872-6208
    Published: Amsterdam Elsevier Ltd 01.06.2020
    Published in Computers & security (01.06.2020)
    “… However, attackers use the dynamics feature of JavaScript language to embed malicious code into web pages for the purpose of drive-by-download, redirection, etc…”
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    Journal Article
  8. 8

    Spider bird swarm algorithm with deep belief network for malicious JavaScript detection by Alex, Scaria, Dhiliphan Rajkumar, T

    ISSN: 0167-4048, 1872-6208
    Published: Amsterdam Elsevier Ltd 01.08.2021
    Published in Computers & security (01.08.2021)
    “…) algorithm for malicious JavaScript detection. The proposed S-BSA is designed by the integration of Spider Monkey Optimization (SMO…”
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    Journal Article
  9. 9

    Detection of Obfuscated Malicious JavaScript Code by Alazab, Ammar, Khraisat, Ansam, Alazab, Moutaz, Singh, Sarabjot

    ISSN: 1999-5903, 1999-5903
    Published: Basel MDPI AG 01.08.2022
    Published in Future internet (01.08.2022)
    “… To secure Internet users, an adequate intrusion-detection system (IDS) for malicious JavaScript must be developed…”
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    Journal Article
  10. 10

    JACLNet:Application of adaptive code length network in JavaScript malicious code detection by Zhang, Zhining, Wan, Liang, Chu, Kun, Li, Shusheng, Wei, Haodong, Tang, Lu

    ISSN: 1932-6203, 1932-6203
    Published: United States Public Library of Science 14.12.2022
    Published in PloS one (14.12.2022)
    “…Currently, JavaScript malicious code detection methods are becoming more and more…”
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    Journal Article
  11. 11

    TransAST: A Machine Translation-Based Approach for Obfuscated Malicious JavaScript Detection by Qin, Yan, Wang, Weiping, Chen, Zixian, Song, Hong, Zhang, Shigeng

    ISSN: 2158-3927
    Published: IEEE 01.01.2023
    “…As an essential part of the website, JavaScript greatly enriches its functions. At the same time, JavaScript has become the most common attack payload on malicious website…”
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    Conference Proceeding
  12. 12

    ScriptNet: Neural Static Analysis for Malicious JavaScript Detection by Stokes, Jack W., Agrawal, Rakshit, McDonald, Geoff, Hausknecht, Matthew

    ISSN: 2155-7586
    Published: IEEE 01.11.2019
    “… For internet-scale processing, static analysis offers substantial computing efficiencies. We propose the ScriptNet system for neural malicious JavaScript detection which is based on static analysis…”
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    Conference Proceeding
  13. 13

    Detection of malicious javascript on an imbalanced dataset by Phung, Ngoc Minh, Mimura, Mamoru

    ISSN: 2542-6605, 2542-6605
    Published: Elsevier B.V 01.03.2021
    Published in Internet of things (Amsterdam. Online) (01.03.2021)
    “…In order to be able to detect new malicious JavaScript with low cost, methods with machine learning techniques have been proposed and gave positive results…”
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    Journal Article
  14. 14

    An Approach for Malicious JavaScript Detection Using Adaptive Taylor Harris Hawks Optimization-Based Deep Convolutional Neural Network by Alex, Scaria, T, Dhiliphan Rajkumar

    ISSN: 1947-3532, 1947-3540
    Published: IGI Global 20.05.2022
    “… This paper devises a novel technique for detecting malicious JavaScript. Here, JavaScript codes are fed to the feature extraction phase for extracting the noteworthy…”
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    Journal Article
  15. 15

    Detecting Malicious JavaScript Using Structure-Based Analysis of Graph Representation by Rozi, Muhammad Fakhrur, Ban, Tao, Ozawa, Seiichi, Yamada, Akira, Takahashi, Takeshi, Kim, Sangwook, Inoue, Daisuke

    ISSN: 2169-3536, 2169-3536
    Published: Piscataway IEEE 2023
    Published in IEEE Access (2023)
    “…Malicious JavaScript code in web applications poses a significant threat as cyber attackers exploit it to perform various malicious activities…”
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    Journal Article
  16. 16

    A machine learning approach to detection of JavaScript-based attacks using AST features and paragraph vectors by Ndichu, Samuel, Kim, Sangwook, Ozawa, Seiichi, Misu, Takeshi, Makishima, Kazuo

    ISSN: 1568-4946, 1872-9681
    Published: Elsevier B.V 01.11.2019
    Published in Applied soft computing (01.11.2019)
    “… Most of these websites use JavaScript (JS) to create dynamic content. The exploitation of vulnerabilities in servers, plugins, and other third-party systems enables the insertion of malicious codes into website…”
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    Journal Article
  17. 17

    Malicious JavaScript Code Detection Based on Hybrid Analysis by He, Xincheng, Xu, Lei, Cha, Chunliu

    ISSN: 2640-0715
    Published: IEEE 01.12.2018
    “… However, since the heavy use of obfuscation techniques, many methods no longer apply to malicious JavaScript code detection, and it has been a huge challenge to de-obfuscate obfuscated malicious Java…”
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    Conference Proceeding
  18. 18

    Adaptive Spider Bird Swarm Algorithm-Based Deep Recurrent Neural Network for Malicious JavaScript Detection Using Box-Cox Transformation by Alex, Scaria, Rajkumar, T Dhiliphan

    ISSN: 1942-3926, 1942-3934
    Published: Hershey IGI Global 01.10.2020
    “…) is proposed for detecting the malicious JavaScript codes in web applications. However, the proposed adaptive SBSA is designed by integrating the adaptive concept with the bird swarm algorithm (BSA…”
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    Journal Article
  19. 19

    Detecting Malicious Javascript in PDF through Document Instrumentation by Daiping Liu, Haining Wang, Stavrou, Angelos

    ISSN: 1530-0889
    Published: IEEE 01.06.2014
    “… In this paper, we propose a context-aware approach for detection and confinement of malicious Javascript in PDF…”
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    Conference Proceeding
  20. 20

    Malicious JavaScript Detection by Features Extraction by Gerardo Canfora, Francesco Mercaldo, Corrado Aaron Visaggio

    ISSN: 1897-7979, 2084-4840
    Published: Wroclaw University of Science and Technology 01.06.2015
    “… Existing techniques for detecting malicious JavaScripts could fail for different reasons…”
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    Journal Article