Importance Weighted Adversarial Discriminative Transfer for Anomaly
Detection
- URL: http://arxiv.org/abs/2105.06649v2
- Date: Tue, 18 May 2021 07:23:54 GMT
- Title: Importance Weighted Adversarial Discriminative Transfer for Anomaly
Detection
- Authors: Cangning Fan, Fangyi Zhang, Peng Liu, Xiuyu Sun, Hao Li, Ting Xiao,
Wei Zhao, Xianglong Tang
- Abstract summary: This paper proposes an importance weighted adversarial autoencoder-based method to transfer anomaly detection knowledge in an unsupervised manner.
Specifically, the method learns to align the distributions of normal data in both source and target domains, but leave the distribution of abnormal data in the target domain unchanged.
In this way, an obvious gap can be produced between the distributions of normal and abnormal data in the target domain, therefore enabling the anomaly detection in the domain.
- Score: 15.63763317103138
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Previous transfer methods for anomaly detection generally assume the
availability of labeled data in source or target domains. However, such an
assumption is not valid in most real applications where large-scale labeled
data are too expensive. Therefore, this paper proposes an importance weighted
adversarial autoencoder-based method to transfer anomaly detection knowledge in
an unsupervised manner, particularly for a rarely studied scenario where a
target domain has no labeled normal/abnormal data while only normal data from a
related source domain exist. Specifically, the method learns to align the
distributions of normal data in both source and target domains, but leave the
distribution of abnormal data in the target domain unchanged. In this way, an
obvious gap can be produced between the distributions of normal and abnormal
data in the target domain, therefore enabling the anomaly detection in the
domain. Extensive experiments on multiple synthetic datasets and the UCSD
benchmark demonstrate the effectiveness of our approach. The code is available
at https://github.com/fancangning/anomaly_detection_transfer.
Related papers
- Anomaly Detection with Score Distribution Discrimination [4.468952886990851]
We propose to optimize the anomaly scoring function from the view of score distribution.
We design a novel loss function called Overlap loss that minimizes the overlap area between the score distributions of normal and abnormal samples.
arXiv Detail & Related papers (2023-06-26T03:32:57Z) - Zero-shot domain adaptation of anomalous samples for semi-supervised
anomaly detection [7.219077740523682]
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.
arXiv Detail & Related papers (2023-04-05T04:29:38Z) - Learning Unbiased Transferability for Domain Adaptation by Uncertainty
Modeling [107.24387363079629]
Domain adaptation aims to transfer knowledge from a labeled source domain to an unlabeled or a less labeled but related target domain.
Due to the imbalance between the amount of annotated data in the source and target domains, only the target distribution is aligned to the source domain.
We propose a non-intrusive Unbiased Transferability Estimation Plug-in (UTEP) by modeling the uncertainty of a discriminator in adversarial-based DA methods to optimize unbiased transfer.
arXiv Detail & Related papers (2022-06-02T21:58:54Z) - Source-Free Domain Adaptation via Distribution Estimation [106.48277721860036]
Domain Adaptation aims to transfer the knowledge learned from a labeled source domain to an unlabeled target domain whose data distributions are different.
Recently, Source-Free Domain Adaptation (SFDA) has drawn much attention, which tries to tackle domain adaptation problem without using source data.
In this work, we propose a novel framework called SFDA-DE to address SFDA task via source Distribution Estimation.
arXiv Detail & Related papers (2022-04-24T12:22:19Z) - Conditional Extreme Value Theory for Open Set Video Domain Adaptation [17.474956295874797]
We propose an open-set video domain adaptation approach to mitigate the domain discrepancy between the source and target data.
To alleviate the negative transfer issue, weights computed by the distance from the sample entropy to the threshold are leveraged in adversarial learning.
The proposed method has been thoroughly evaluated on both small-scale and large-scale cross-domain video datasets.
arXiv Detail & Related papers (2021-09-01T10:51:50Z) - Instance Level Affinity-Based Transfer for Unsupervised Domain
Adaptation [74.71931918541748]
We propose an instance affinity based criterion for source to target transfer during adaptation, called ILA-DA.
We first propose a reliable and efficient method to extract similar and dissimilar samples across source and target, and utilize a multi-sample contrastive loss to drive the domain alignment process.
We verify the effectiveness of ILA-DA by observing consistent improvements in accuracy over popular domain adaptation approaches on a variety of benchmark datasets.
arXiv Detail & Related papers (2021-04-03T01:33:14Z) - Open-Set Hypothesis Transfer with Semantic Consistency [99.83813484934177]
We introduce a method that focuses on the semantic consistency under transformation of target data.
Our model first discovers confident predictions and performs classification with pseudo-labels.
As a result, unlabeled data can be classified into discriminative classes coincided with either source classes or unknown classes.
arXiv Detail & Related papers (2020-10-01T10:44:31Z) - Toward Deep Supervised Anomaly Detection: Reinforcement Learning from
Partially Labeled Anomaly Data [150.9270911031327]
We consider the problem of anomaly detection with a small set of partially labeled anomaly examples and a large-scale unlabeled dataset.
Existing related methods either exclusively fit the limited anomaly examples that typically do not span the entire set of anomalies, or proceed with unsupervised learning from the unlabeled data.
We propose here instead a deep reinforcement learning-based approach that enables an end-to-end optimization of the detection of both labeled and unlabeled anomalies.
arXiv Detail & Related papers (2020-09-15T03:05:39Z) - Self-training Avoids Using Spurious Features Under Domain Shift [54.794607791641745]
In unsupervised domain adaptation, conditional entropy minimization and pseudo-labeling work even when the domain shifts are much larger than those analyzed by existing theory.
We identify and analyze one particular setting where the domain shift can be large, but certain spurious features correlate with label in the source domain but are independent label in the target.
arXiv Detail & Related papers (2020-06-17T17:51:42Z) - Anomaly Detection with Domain Adaptation [5.457279006229213]
We propose the Invariant Representation Anomaly Detection (IRAD) to solve this problem.
The extraction is achieved by an across-domain encoder trained together with source-specific encoders and generators by adversarial learning.
We evaluate IRAD extensively on digits images datasets (MNIST, USPS and SVHN) and object recognition datasets (Office-Home)
arXiv Detail & Related papers (2020-06-05T21:05:19Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.