Deployable Machine Learning for Security Defense - Gang Wang, Arridhana Ciptadi & Ali Ahmadzadeh

Deployable Machine Learning for Security Defense

ByGang Wang, Arridhana Ciptadi & Ali Ahmadzadeh

  • Release Date: 2020-10-17
  • Genre: Computers

Description

This book constitutes selected papers from the First International Workshop on Deployable Machine Learning for Security Defense, MLHat 2020, held in August 2020. Due to the COVID-19 pandemic the conference was held online. 
The 8 full papers were thoroughly reviewed and selected from 13 qualified submissions. The papers are organized in the following topical sections: understanding the adversaries; adversarial ML for better security; threats on networks.

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