蒹葭苍苍,白露为霜。
所谓伊人,在水一方。

Data Mining Tools for Malware Detection - pdf - 电子书免费下载

内容提要:

Although the use of data mining for security and malware detection is quickly on the rise, most books on the subject provide high-level theoretical discussions to the near exclusion of the practical aspects. Breaking the mold, Data Mining Tools for Malware Detection provides a step-by-step breakdown of how to develop data mining tools for malware detection. Integrating theory with practical techniques and experimental results, it focuses on malware detection applications for email worms, malicious code, remote exploits, and botnets.

The authors describe the systems they have designed and developed: email worm detection using data mining, a scalable multi-level feature extraction technique to detect malicious executables, detecting remote exploits using data mining, and flow-based identification of botnet traffic by mining multiple log files. For each of these tools, they detail the system architecture, algorithms, performance results, and limitations.

Discusses data mining for emerging applications, including adaptable malware detection, insider threat detection, firewall policy analysis, and real-time data mining
Includes four appendices that provide a firm foundation in data management, secure systems, and the semantic web
Describes the authors’ tools for stream data mining
From algorithms to experimental results, this is one of the few books that will be equally valuable to those in industry, government, and academia. It will help technologists decide which tools to select for specific applications, managers will learn how to determine whether or not to proceed with a data mining project, and developers will find innovative alternative designs for a range of applications.

ISBN:1439854548

年份:2012

总页数:450

语言:English

文件大小:9.19 MB

文件格式:PDF

下载:关注本站公众号(右侧二维码),在 个性化-联系客服 中输入本文链接可获取文件下载链接。

赞(0) 打赏
未经允许不得转载:酷居科技 » Data Mining Tools for Malware Detection - pdf - 电子书免费下载

评论 抢沙发

  • 昵称 (必填)
  • 邮箱 (必填)
  • 网址

锦瑟无端五十弦,一弦一柱思华年

酷居科技联系我们

觉得文章有用就打赏一下文章作者

支付宝扫一扫打赏

微信扫一扫打赏