征稿已开启

查看我的稿件

注册已开启

查看我的门票

已截止
活动简介

The 2016 ACM Workshop on Artificial Intelligence and Security will be co-located with CCS - the premier computer security conference. As the 9th workshop in the series, AISec 2016 calls for papers on topics related to both AI/learning and security/privacy.
Artificial Intelligence (AI), and Machine Learning (ML) in particular, provide a set of useful analytic and decision-making techniques that are being leveraged by an ever-growing community of practitioners, including applications with security-sensitive elements. However, while security researchers often utilize such techniques to address problems and AI/ML researchers develop techniques for big-data analytics applications, neither community devotes much attention to the other. Within security research, AI/ML components are often regarded as black-box solvers. Conversely, the learning community seldom considers the security/privacy implications entailed in the application of their algorithms when designing them. While these two communities generally focus on different issues, where these two fields do meet, interesting problems appear. Researchers working in the intersection have already raised many novel questions for both communities and created a new branch of research known as secure learning.

The past few years have particularly seen increasing interest within the AISec / Secure Learning community. There are several reasons for this surge. Firstly, machine learning, data mining, and other artificial intelligence technologies play a key role in extracting knowledge, situational awareness, and security intelligence from Big Data. Secondly, companies like Google, Amazon and Splunk are increasingly exploring and deploying learning technologies to address Big Data problems for their customers. Finally, these trends are increasingly exposing companies and their customers/users to intelligent technologies. As a result, these learning technologies are both being explored by researchers as potential solutions to security/privacy problems, and also are being investigated as a potential source of new privacy/security vulnerabilities that need to be secured to prevent them from misbehaving or leaking information to an adversary. The AISec Workshop meets this need and serves as the sole long-running venue for this topic.

AISec serves as the primary meeting place for diverse researchers in security, privacy, AI, and machine learning, and as a venue to develop the fundamental theory and practical applications supporting the use of machine learning for security and privacy. The workshop addresses on this burgeoning community who are especially focused on (among other topics) learning in game-theoretic adversarial environments, privacy-preserving learning, or use of sophisticated new learning algorithms in security.

征稿信息

重要日期

2016-08-03
初稿截稿日期
2016-09-05
初稿录用日期
2016-09-18
终稿截稿日期

征稿范围

Topics of interest include, but are not limited to:

 

Theoretical topics related to security

  • Adversarial Learning

  • Robust Statistics

  • Online Learning

  • Learning in games

  • Economics of security

  • Differential privacy

 

Security applications

  • Computer Forensics

  • Spam detection

  • Phishing detection and prevention

  • Botnet detection

  • Intrusion detection and response

  • Malware identification

  • Authorship Identification

 

Security-related AI problems

  • Distributed inference and decision making for security

  • Secure multiparty computation and cryptographic approaches

  • Privacy-preserving data mining

  • Adaptive side-channel attacks

  • Design and analysis of CAPTCHAs

  • AI approaches to trust and reputation

  • Vulnerability testing through intelligent probing (e.g. fuzzing)

  • Content-driven security policy management & access control

  • Techniques and methods for generating training and test sets

  • Anomalous behavior detection (e.g. for the purposes of fraud prevention, authentication)

 

Special topic: Machine learning and security at massive scale

  • High-throughput abuse detection systems

  • Large-scale active learning

  • Big data analytics for security

  • Systems defending against multiple attack vectors

  • Techniques dealing with well-resourced adversaries

留言
验证码 看不清楚,更换一张
全部留言
重要日期
  • 10月28日

    2016

    会议日期

  • 08月03日 2016

    初稿截稿日期

  • 09月05日 2016

    初稿录用通知日期

  • 09月18日 2016

    终稿截稿日期

  • 10月28日 2016

    注册截止日期

联系方式
移动端
在手机上打开
小程序
打开微信小程序
客服
扫码或点此咨询