Bookcover of Outlier and Anomaly Detection
Booktitle:

Outlier and Anomaly Detection

A Survey of Outlier and Anomaly Detection Methods

LAP LAMBERT Academic Publishing (2011-11-11 )

Books loader

Omni badge eligible for voucher
ISBN-13:

978-3-8465-4822-6

ISBN-10:
3846548227
EAN:
9783846548226
Book language:
English
Blurb/Shorttext:
An outlier or anomaly is a data point that is inconsistent with the rest of the data population. Outlier or anomaly detection has been used for centuries to detect and remove anomalous observations from data. It is used to monitor vital infrastructure such as utility distribution networks, transportation networks, machinery or computer networks for faults. Detection can identify faults before they escalate with potentially catastrophic consequences. Today, principled and systematic detection techniques are used, drawn from the full gamut of Computer Science and Statistics. The book forms a survey of techniques covering statistical, proximity-based, density-based, neural, natural computation, machine learning, distributed and hybrid systems. It identifies their respective motivations and distinguishes their advantages and disadvantages in a comparative review. It aims to provide the reader with a feel of the diversity and multiplicity of techniques available. The survey should be useful to advanced undergraduate and postgraduate computer and library/information science students and researchers analysing and developing outlier and anomaly detection systems.
Publishing house:
LAP LAMBERT Academic Publishing
Website:
https://www.lap-publishing.com/
By (author) :
Victoria Hodge
Number of pages:
112
Published on:
2011-11-11
Stock:
Available
Category:
Informatics, IT
Price:
49.00 €
Keywords:
Anomaly, Novelty, deviation, DETECTION, Outlier Detection, Outlier, Fault, anomaly detection, Survey, anomaly, Outliers, SURVEY

Books loader

Newsletter

Adyen::amex Adyen::mc Adyen::visa Adyen::cup Adyen::unionpay Paypal Wire Transfer

  0 products in the shopping cart
Edit cart
Loading frontend
LOADING