Publication | Open Access
Shallow Bayesian Meta Learning for Real-World Few-Shot Recognition
55
Citations
51
References
2021
Year
Few-shot LearningEngineeringMachine LearningMeta-learningBayesian FormulationImage AnalysisZero-shot LearningData SciencePattern RecognitionRobot LearningSupervised LearningMachine VisionFinal Classifier LayerFeature LearningComputer ScienceDeep LearningComputer VisionReal-world Few-shot RecognitionBayesian Meta-learning Generalisation
Many state-of-the-art few-shot learners focus on developing effective training procedures for feature representations, before using simple (e.g., nearest centroid) classifiers. We take an approach that is agnostic to the features used, and focus exclusively on meta-learning the final classifier layer. Specifically, we introduce MetaQDA, a Bayesian meta-learning generalisation of the classic quadratic discriminant analysis. This approach has several benefits of interest to practitioners: meta-learning is fast and memory efficient, without the need to fine-tune features. It is agnostic to the off-the-shelf features chosen, and thus will continue to benefit from future advances in feature representations. Empirically, it leads to excellent performance in cross-domain few-shot learning, class-incremental few-shot learning, and crucially for real-world applications, the Bayesian formulation leads to state-of-the-art uncertainty calibration in predictions.
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