SOTAVerified

Domain Adaptation

Domain Adaptation is the task of adapting models across domains. This is motivated by the challenge where the test and training datasets fall from different data distributions due to some factor. Domain adaptation aims to build machine learning models that can be generalized into a target domain and dealing with the discrepancy across domain distributions.

Further readings:

( Image credit: Unsupervised Image-to-Image Translation Networks )

Papers

Showing 50515100 of 6439 papers

TitleStatusHype
Online Visual Tracking with One-Shot Context-Aware Domain Adaptation0
Online Word Alignment for Online Adaptive Machine Translation0
On Localized Discrepancy for Domain Adaptation0
On Measuring and Quantifying Performance: Error Rates, Surrogate Loss, and an Example in SSL0
On Scalable and Efficient Computation of Large Scale Optimal Transport0
On Self-Supervised Dynamic Incremental Regularised Adaptation0
On Size Generalization in Graph Neural Networks0
From Local Structures to Size Generalization in Graph Neural Networks0
On Target Shift in Adversarial Domain Adaptation0
On the Benefits of Attribute-Driven Graph Domain Adaptation0
On the Complementarity of Data Selection and Fine Tuning for Domain Adaptation0
On the Complementarity of Data Selection and Fine Tuning for Domain Adaptation0
On the Domain Adaptation and Generalization of Pretrained Language Models: A Survey0
On the Effectiveness of Poisoning against Unsupervised Domain Adaptation0
On the effectiveness of small, discriminatively pre-trained language representation models for biomedical text mining0
On The Effects Of Data Normalisation For Domain Adaptation On EEG Data0
On the Equity of Nuclear Norm Maximization in Unsupervised Domain Adaptation0
On the generalization capabilities of FSL methods through domain adaptation: a case study in endoscopic kidney stone image classification0
On the Generalization of Handwritten Text Recognition Models0
On the Generalization of Wasserstein Robust Federated Learning0
On the Hardness of Robustness Transfer: A Perspective from Rademacher Complexity over Symmetric Difference Hypothesis Space0
On the Hidden Negative Transfer in Sequential Transfer Learning for Domain Adaptation from News to Tweets0
On the impact of measure pre-conditionings on general parametric ML models and transfer learning via domain adaptation0
On the inductive biases of deep domain adaptation0
On the Mechanisms of Adversarial Data Augmentation for Robust and Adaptive Transfer Learning0
Selection, Ensemble, and Adaptation: Advancing Multi-Source-Free Domain Adaptation via Architecture Zoo0
On The Relationship between Visual Anomaly-free and Anomalous Representations0
On the Robustness of Domain Adaption to Adversarial Attacks0
On Unsupervised Uncertainty-Driven Speech Pseudo-Label Filtering and Model Calibration0
Open Compound Domain Adaptation with Object Style Compensation for Semantic Segmentation0
OpenDAS: Open-Vocabulary Domain Adaptation for 2D and 3D Segmentation0
OpenEarthMap: A Benchmark Dataset for Global High-Resolution Land Cover Mapping0
Open-Ended Diverse Solution Discovery with Regulated Behavior Patterns for Cross-Domain Adaptation0
Open-Ended Visual Question Answering by Multi-Modal Domain Adaptation0
Open Set Dandelion Network for IoT Intrusion Detection0
Open Set Domain Adaptation0
Open Set Domain Adaptation by Extreme Value Theory0
Open Set Domain Adaptation By Novel Class Discovery0
Open Set Domain Adaptation using Optimal Transport0
Open Set Domain Adaptation with Vision-language models via Gradient-aware Separation0
Open-Set Domain Adaptation with Visual-Language Foundation Models0
Open Set Domain Adaptation with Zero-shot Learning on Graph0
Open-Set Hypothesis Transfer with Semantic Consistency0
Open-Set Multi-Source Multi-Target Domain Adaptation0
Opinion-based Relational Pivoting for Cross-domain Aspect Term Extraction0
Opinion-based Relational Pivoting for Cross-domain Aspect Term Extraction0
Opinions Summarization: Aspect Similarity Recognition Relaxes The Constraint of Predefined Aspects0
Multi-Sensor Diffusion-Driven Optical Image Translation for Large-Scale Applications0
Optimal Bayesian Transfer Learning0
Optimal Boxes: Boosting End-to-End Scene Text Recognition by Adjusting Annotated Bounding Boxes via Reinforcement Learning0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1FFTATAverage Accuracy96Unverified
2PMTransAverage Accuracy95.3Unverified
3CMKDAverage Accuracy94.4Unverified
4SSRT-B (ours)Average Accuracy93.5Unverified
5CDTransAverage Accuracy92.6Unverified
6CoViAverage Accuracy91.8Unverified
7GSDEAverage Accuracy91.7Unverified
8FixBiAverage Accuracy91.4Unverified
9Contrastive Adaptation NetworkAverage Accuracy90.6Unverified
10BIWAAAverage Accuracy90.5Unverified
#ModelMetricClaimedVerifiedStatus
1HALOmIoU78.1Unverified
2ILM-ASSLmIoU76.6Unverified
3DCFmIoU69.3Unverified
4HRDA+PiPamIoU68.2Unverified
5MICmIoU67.3Unverified
6FREDOM - TransformermIoU67Unverified
7HRDAmIoU65.8Unverified
8SePiComIoU64.3Unverified
9MIC + Guidance TrainingmIoU63.8Unverified
10DAFormer + ProCSTmIoU61.6Unverified
#ModelMetricClaimedVerifiedStatus
1HALOmIoU77.8Unverified
2DCFmIoU77.7Unverified
3ILM-ASSLmIoU76.1Unverified
4MICmIoU75.9Unverified
5HRDA+PiPamIoU75.6Unverified
6HRDAmIoU73.8Unverified
7FREDOM - TransformermIoU73.6Unverified
8HALOmIoU73.3Unverified
9SePiComIoU70.3Unverified
10DAFormer + ProCSTmIoU69.4Unverified
#ModelMetricClaimedVerifiedStatus
1SWGAccuracy92.3Unverified
2RCLAccuracy90Unverified
3PGA (ViT-L/14)Accuracy89.4Unverified
4PMTransAccuracy89Unverified
5CMKDAccuracy89Unverified
6MICAccuracy86.2Unverified
7PGA (ViT-B/16)Accuracy85.1Unverified
8ELSAccuracy84.6Unverified
9SDAT (ViT-B/16)Accuracy84.3Unverified
10CDTrans (DeiT-B)Accuracy80.5Unverified
#ModelMetricClaimedVerifiedStatus
1FFTATAccuracy93.8Unverified
2RCLAccuracy93.2Unverified
3MICAccuracy92.8Unverified
4SWGAccuracy92.7Unverified
5CMKDAccuracy91.8Unverified
6DePTAccuracy90.7Unverified
7SDAT(ViT)Accuracy89.8Unverified
8SFDA2++Accuracy89.6Unverified
9PMtransAccuracy88.8Unverified
10CoViAccuracy88.5Unverified
#ModelMetricClaimedVerifiedStatus
1CMKDAccuracy94.3Unverified
2MCC+NWDAccuracy90.7Unverified
3GLOT-DRAccuracy90.4Unverified
4SPLAccuracy90.3Unverified
5DFA-SAFNAccuracy90.2Unverified
6DADAAccuracy89.3Unverified
7DFA-ENTAccuracy89.1Unverified
8MEDMAccuracy88.9Unverified
9DDAAccuracy88.9Unverified
10IAFN+ENTAccuracy88.9Unverified
#ModelMetricClaimedVerifiedStatus
1SoRAmIoU78.8Unverified
2ReinmIoU77.6Unverified
3CoDAmIoU72.6Unverified
4Refign (HRDA)mIoU72.1Unverified
5HALOmIoU71.9Unverified
6MICmIoU70.4Unverified
7HRDAmIoU68Unverified
8Refign (DAFormer)mIoU65.5Unverified
9VBLC (DAFormer)mIoU64.2Unverified
10CMFormermIoU60.1Unverified
#ModelMetricClaimedVerifiedStatus
1FACTAccuracy98.8Unverified
2FAMCDAccuracy98.72Unverified
3DFA-MCDAccuracy98.6Unverified
4Mean teacherAccuracy98.26Unverified
5DRANetAccuracy98.2Unverified
6SHOTAccuracy98Unverified
7DFA-ENTAccuracy97.9Unverified
8CyCleGAN (Light-weight Calibrator)Accuracy97.1Unverified