Zero-shot domain adaptation of anomalous samples for semi-supervised
anomaly detection
- URL: http://arxiv.org/abs/2304.02221v1
- Date: Wed, 5 Apr 2023 04:29:38 GMT
- Title: Zero-shot domain adaptation of anomalous samples for semi-supervised
anomaly detection
- Authors: Tomoya Nishida and Takashi Endo and Yohei Kawaguchi
- Abstract summary: Semi-supervised anomaly detection is a task where normal data and a limited number of anomalous data are available for training.
We propose a domain adaptation method for SSAD where no anomalous data are available for the target domain.
Experimental results indicate that the proposed method helps adapt SSAD models to the target domain when no anomalous data are available for the target domain.
- Score: 7.219077740523682
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Semi-supervised anomaly detection~(SSAD) is a task where normal data and a
limited number of anomalous data are available for training. In practical
situations, SSAD methods suffer adapting to domain shifts, since anomalous data
are unlikely to be available for the target domain in the training phase. To
solve this problem, we propose a domain adaptation method for SSAD where no
anomalous data are available for the target domain. First, we introduce a
domain-adversarial network to a variational auto-encoder-based SSAD model to
obtain domain-invariant latent variables. Since the decoder cannot reconstruct
the original data solely from domain-invariant latent variables, we conditioned
the decoder on the domain label. To compensate for the missing anomalous data
of the target domain, we introduce an importance sampling-based weighted loss
function that approximates the ideal loss function. Experimental results
indicate that the proposed method helps adapt SSAD models to the target domain
when no anomalous data are available for the target domain.
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