YoVDO

Continuous Learning for Android Malware Detection

Offered By: USENIX via YouTube

Tags

USENIX Security Courses Cybersecurity Courses Machine Learning Courses Active Learning Courses Contrastive Learning Courses

Course Description

Overview

Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only!
Explore a 14-minute conference talk from USENIX Security '23 that addresses the challenge of concept drift in Android malware detection. Learn about innovative methods combining contrastive learning with active learning to combat the rapid decline in effectiveness of machine learning classifiers. Discover how researchers from UC Berkeley developed a new hierarchical contrastive learning scheme and sample selection technique to continuously train Android malware classifiers. Examine the significant improvements achieved by this approach, including reduced false negative and false positive rates, and its ability to maintain consistent performance over an extended period. Gain insights into the evolution of malware and benign apps, and understand the importance of continuous learning in maintaining effective security measures for Android devices.

Syllabus

USENIX Security '23 - Continuous Learning for Android Malware Detection


Taught by

USENIX

Related Courses

Security Principles
(ISC)² via Coursera
A Strategic Approach to Cybersecurity
University of Maryland, College Park via Coursera
FinTech for Finance and Business Leaders
ACCA via edX
Access Control Concepts
(ISC)² via Coursera
Access Controls
(ISC)² via Coursera