Litcius/Paper detail

Tune it the Right Way: Unsupervised Validation of Domain Adaptation via Soft Neighborhood Density

Kuniaki Saito, Donghyun Kim, Piotr Teterwak, Stan Sclaroff, Trevor Darrell, Kate Saenko

20212021 IEEE/CVF International Conference on Computer Vision (ICCV)32 citationsDOI

Abstract

Unsupervised domain adaptation (UDA) methods can dramatically improve generalization on unlabeled target domains. However, optimal hyper-parameter selection is critical to achieving high accuracy and avoiding negative transfer. Supervised hyper-parameter validation is not possible without labeled target data, which raises the question: How can we validate unsupervised adaptation techniques in a realistic way? We first empirically analyze existing criteria and demonstrate that they are not very effective for tuning hyper-parameters. Intuitively, a well-trained source classifier should embed target samples of the same class nearby, forming dense neighborhoods in feature space. Based on this assumption, we propose a novel unsupervised validation criterion that measures the density of soft neighborhoods by computing the entropy of the similarity distribution between points. Our criterion is simpler than competing validation methods, yet more effective; it can tune hyper-parameters and the number of training iterations in both image classification and semantic segmentation models. The code used for the paper will be available at https://github.com/VisionLearningGroup/SND.

Topics & Concepts

Computer scienceDomain adaptationArtificial intelligenceClassifier (UML)Entropy (arrow of time)SegmentationPattern recognition (psychology)Unsupervised learningGeneralizationSource codeMachine learningCross entropyCode (set theory)Data miningSet (abstract data type)MathematicsOperating systemQuantum mechanicsMathematical analysisPhysicsProgramming languageDomain Adaptation and Few-Shot LearningMultimodal Machine Learning ApplicationsCOVID-19 diagnosis using AI