Главная
Study mode:
on
1
Introduction
2
Technology trends
3
What is machine learning
4
Traditional decomposition
5
Point anomalies
6
Contextual anomalies
7
Collective anomalies
8
Deep neural networks
9
Two styles of explanation
10
Training a neural network
11
Hierarchical classification
12
Background problem categories
13
Supervised learning
14
Project forward in time
15
Unsupervised learning
16
Traditional clustering
17
Time series type analysis
18
Spectral clustering
19
False positives
20
Challenges and risks
21
Large projects
22
Oneshot projects
23
IT infrastructure security
24
Smart cities
25
The Churring
Description:
Explore a comprehensive review of machine learning techniques for anomaly detection in this 22-minute seminar by Dr. David Green from the Alan Turing Institute. Delve into various aspects of anomaly detection, including point, contextual, and collective anomalies. Learn about traditional decomposition methods and the application of deep neural networks in this field. Discover the differences between supervised and unsupervised learning approaches, and understand how they apply to anomaly detection. Examine clustering techniques, including traditional and spectral methods, as well as time series analysis. Address challenges and risks associated with anomaly detection in large-scale projects, one-shot projects, IT infrastructure security, and smart cities. Gain insights into the latest technology trends and their impact on machine learning for anomaly detection.

A Review of Machine Learning Techniques for Anomaly Detection - Dr. David Green

Alan Turing Institute
Add to list
0:00 / 0:00