Anomaly detection for imbalanced datasets with deep generative models

N.R. Santos Buitrago, L.M.A. Tonnaer, V. Menkovski, Dimitrios Mavroeidis

Onderzoeksoutput: Bijdrage aan congresPaperAcademic

409 Downloads (Pure)

Samenvatting

Many important data analysis applications present with severely imbalanced datasets with respect to the target variable. A typical example is medical image analysis, where positive samples are scarce, while performance is commonly estimated against the correct detection of these positive examples. We approach this challenge by formulating the problem as anomaly detection with generative models. We train a generative model without supervision on the ‘negative’ (common) datapoints and use this model to estimate the likelihood of unseen data. A successful model allows us to detect the ‘positive’ case as low likelihood
datapoints.
In this position paper, we present the use of state-of-the-art deep generative models (GAN and VAE) for the estimation of a likelihood of the data. Our results show that on the one hand both GANs and VAEs are able to separate the ‘positive’ and ‘negative’ samples in the MNIST case. On the other hand, for the NLST case, neither GANs nor VAEs were able to capture the complexity of the data and discriminate anomalies at the level that this task requires. These results show that even though there are a number of successes presented in the literature for using generative models in similar applications, there remain further challenges for broad successful implementation.
Originele taal-2Engels
Aantal pagina's15
StatusGepubliceerd - 8 sep. 2018
Evenement30st Benelux Conference on Artificial Intelligence and 27th Belgian-Dutch Conference on Machine Learning, BNAIC/BeneLearn 2018 - Jheronimus Academy of Data Science (JADS), 's-Hertogenbosch, Nederland
Duur: 8 nov. 20189 nov. 2018
Congresnummer: 30th
https://bnaic2018.nl/

Congres

Congres30st Benelux Conference on Artificial Intelligence and 27th Belgian-Dutch Conference on Machine Learning, BNAIC/BeneLearn 2018
Verkorte titelBenelearn 2018
Land/RegioNederland
Stad's-Hertogenbosch
Periode8/11/189/11/18
Internet adres

Vingerafdruk

Duik in de onderzoeksthema's van 'Anomaly detection for imbalanced datasets with deep generative models'. Samen vormen ze een unieke vingerafdruk.

Citeer dit