bibtype C - Conference Paper (international conference)
ARLID 0522204
utime 20240103223735.4
mtime 20200214235959.9
title (primary) (eng) Orthogonal Approximation of Marginal Likelihood of Generative Models
specification
page_count 9 s.
media_type E
serial
ARLID cav_un_epca*0522203
title Bayesian Deep Learning NeurIPS 2019 Workshop
publisher
place Vancouver
name University of Oxford Computer Science department
year 2019
keyword approximation
keyword generative models
keyword orthogonal combinations
author (primary)
ARLID cav_un_auth*0101207
name1 Šmídl
name2 Václav
institution UTIA-B
full_dept (cz) Adaptivní systémy
full_dept (eng) Department of Adaptive Systems
department (cz) AS
department (eng) AS
full_dept Department of Adaptive Systems
fullinstit Ústav teorie informace a automatizace AV ČR, v. v. i.
author
ARLID cav_un_auth*0389606
name1 Bím
name2 J.
country CZ
author
ARLID cav_un_auth*0307300
name1 Pevný
name2 T.
country CZ
source
url http://library.utia.cas.cz/separaty/2020/AS/smidl-0522204.pdf
cas_special
project
project_id GA18-21409S
agency GA ČR
ARLID cav_un_auth*0374053
abstract (eng) This paper presents a new approximation of the marginal likelihood of generative models which is used as a score for anomaly detection. The score is motivated by the shortcoming of the popular reconstruction error that it can behave arbitrarily outside the known samples. The proposed score corrects this by orthogonal combination of the reconstruction error and the likelihood in the latent space. As experimentally shown on benchmark problems from anomaly detection and illustrated on a toy problem, this combination lends the score robustness to outliers. Generative models evaluated with this score outperformed the competing methods especially in tasks of learning distribution from data corrupted by anomalies. Finally, the score is compatible with contemporary generative models, namely variational auto-encoders and generative adversarial networks
action
ARLID cav_un_auth*0389608
name NeurIPS 2019
dates 20191208
mrcbC20-s 20191214
place Vancouver
country CA
RIV BD
FORD0 10000
FORD1 10200
FORD2 10201
reportyear 2021
num_of_auth 3
presentation_type PO
inst_support RVO:67985556
permalink http://hdl.handle.net/11104/0308914
mrcbC61 1
confidential S
article_num 48
arlyear 2019
mrcbU14 SCOPUS
mrcbU24 PUBMED
mrcbU34 WOS
mrcbU63 cav_un_epca*0522203 Bayesian Deep Learning NeurIPS 2019 Workshop Vancouver University of Oxford Computer Science department 2019