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2020/6/14

Yamato OKAMOTO
ICLR
Deep Semi-supervised Anomaly Detection
!!
●
●
● 

Twitter : RoadRoller_DESU
Anomaly Detection
Anomaly Detection
•
• What is
• ※
•
• What is
• What is Not
Anomaly Detection
Deep One-Class Classification (ICML’18)
• Classifier AutoEncoder
• LOSS
•
c ≠0
n
Anomaly Detection
•
•
• 10
10
ad-hoc post-hoc
•
• LOSS OK
• post-hoc
Semi-supervised
Anomaly Detection Unsupervised
Semi-supervised
※Semi-supervised Anomaly Detection
LOSS
Deep One-Class Classification (ICML’18) LOSS Semi-supervised
•
m semi-supervised
yj or
HigherisBetter
Unsupervised Semi-supervised
Semi-supervised
MNIST Fashion-MNIST CIFAR-10
• AutoEncoder
•
Semi-supervised Anomaly Detection
• Anomaly Detection semi-supervised
•
• post-hoc
• AE Classification
• Anomaly Detection 

MNIST

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