Главная
Study mode:
on
1
Intro
2
Internet Threats
3
Our Approach: A Unified Aggregating Framework
4
Varying Accuracy and Expertise of Scanners
5
Label Flips in Scanner Predictions
6
Scanner Correlations
7
Self Supervised Learning
8
High-Level Overall Approach
9
Pretext Task 2: Learn Temporal Scanner Dependencies
10
Pretext Task 3: Representation Consistency
11
Detailed Overall Approach
12
Evaluation
13
Siraj vs. Baselines for Early Detection
14
Siraj vs. Baselines for Different Training Size
15
Summary
Description:
Explore a conference talk on SIRAJ, a unified framework for aggregating malicious entity detectors. Delve into the challenges of internet threats and learn about a novel approach to combat them. Discover how this framework addresses varying accuracy and expertise of scanners, label flips in predictions, and scanner correlations. Understand the implementation of self-supervised learning techniques, including pretext tasks for learning temporal scanner dependencies and representation consistency. Examine the high-level and detailed overall approach of SIRAJ, and analyze its performance through evaluation metrics. Compare SIRAJ's effectiveness against baselines for early detection and different training sizes. Gain valuable insights into this innovative solution for enhancing cybersecurity and malicious entity detection.

SIRAJ - A Unified Framework for Aggregation of Malicious Entity Detectors

IEEE
Add to list
0:00 / 0:00