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Adversarial Machine Learning

來源:機電工程學院          點擊:
報告人 Prof.Fabio Roli 時間 6月19日16:00
地點 北校區主樓Ⅲ區237會議室 報告時間 2019-06-19 16:00:00

講座名稱: Adversarial Machine Learning

講座時間: 2019-06-19 16:00:00

講座地點: 西電北校區主樓III-237報告廳

講座人: Fabio Roli


講座人介紹:

Fabio Roli is a Full Professor of Computer Engineering at the University of Cagliari, Italy, and Director of the Pattern Recognition and Applications laboratory (http://pralab.diee.unica.it/). He is partner and R&D manager of the company Pluribus One that he co-founded (https://www.pluribus-one.it). He has been doing research on the design of pattern recognition and machine learning systems for thirty years. His current h-index is 60 according to Google Scholar (June 2019). He has been appointed Fellow of the IEEE and Fellow of the International Association for Pattern Recognition. He was a member of NATO advisory panel for Information and Communications Security, NATO Science for Peace and Security (2008 – 2011).


講座內容:

Machine-learning algorithms are widely used for cybersecurity applications, including spam, malware detection, biometric recognition. In these applications, the learning algorithm has to face intelligent and adaptive attackers who can carefully manipulate data to purposely subvert the learning process. As machine learning algorithms have not been originally designed under such premises, they have been shown to be vulnerable to well-crafted, sophisticated attacks, including test-time evasion and training-time poisoning attacks (also known as adversarial examples). This talk aims to introduce the fundamentals of adversarial machine learning by a well-structured overview of techniques to assess the vulnerability of machine-learning algorithms to adversarial attacks (both at training and test time), and some of the most effective countermeasures proposed to date. We report application examples including object recognition in images, biometric identity recognition, spam and malware detection.


主辦單位:機電工程學院

123

南校區地址:陜西省西安市西灃路興隆段266號

郵編:710126

北校區地址:陜西省西安市太白南路2號

郵編:710071

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