Density-Approximating Neural Network Models for Anomaly Detection
The result's identifiers
Result code in IS VaVaI
<a href="https://www.isvavai.cz/riv?ss=detail&h=RIV%2F67985556%3A_____%2F18%3A00507118" target="_blank" >RIV/67985556:_____/18:00507118 - isvavai.cz</a>
Result on the web
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DOI - Digital Object Identifier
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Alternative languages
Result language
angličtina
Original language name
Density-Approximating Neural Network Models for Anomaly Detection
Original language description
We propose an alternative use of neural models in anomaly detection. Traditionally, in anomaly detection context the common use of neural models is in form of auto-encoders. Through the use of auto-encoders the true anomality is proxied by reconstruction error. Auto-encoders often perform well but do not guarantee to perform as expected in all cases. A popular more direct way of modeling anomality distribution is through k-Nearest Neighbor models. Although kNN can perform better than auto-encoders in some cases, their applicability can be seriously impaired by their space and time complexity especially with high-dimensional large-scale data. The alternative we propose is to model the distribution imposed by kNN using neural networks. We show that such neural models are capable of achieving comparable accuracy to kNN while reducing computational complexity by orders of magnitude. The de-noising e ect of a neural model with limited number of neurons and layers is shown to lead to accuracy improvements in some cases. We evaluate the proposed idea against standard kNN and auto-encoders on a large set of benchmark data and show that in majority of cases it is possible to improve on accuracy or computational cost.
Czech name
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Czech description
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Classification
Type
D - Article in proceedings
CEP classification
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OECD FORD branch
20204 - Robotics and automatic control
Result continuities
Project
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Continuities
I - Institucionalni podpora na dlouhodoby koncepcni rozvoj vyzkumne organizace
Others
Publication year
2018
Confidentiality
S - Úplné a pravdivé údaje o projektu nepodléhají ochraně podle zvláštních právních předpisů
Data specific for result type
Article name in the collection
ACM SIGKDD 2018 Workshop
ISBN
978-1-4503-5552-0
ISSN
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e-ISSN
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Number of pages
8
Pages from-to
1-8
Publisher name
ACM
Place of publication
New York
Event location
London
Event date
Aug 20, 2018
Type of event by nationality
WRD - Celosvětová akce
UT code for WoS article
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