Meta-Learning with Differentiable Convex Optimization

Many meta-learning approaches for few-shot learning rely on simple base learners such as nearest-neighbor classifiers. However, even in the few-shot regime, discriminatively trained linear predictors can offer better generalization. We propose to use these predictors as base learners to learn representations for few-shot learning and show they offer better tradeoffs between feature size and performance across a range of few-shot recognition benchmarks. Our objective is to learn feature embeddings that generalize well under a linear classification rule for novel categories. To efficiently solve the objective, we exploit two properties of linear classifiers: implicit differentiation of the optimality conditions of the convex problem and the dual formulation of the optimization problem. This allows us to use high-dimensional embeddings with improved generalization at a modest increase in computational overhead. Our approach, named MetaOptNet, achieves state-of-the-art performance on miniImageNet, tieredImageNet, CIFAR-FS, and FC100 few-shot learning benchmarks. Our code is available at https://github.com/kjunelee/MetaOptNet.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Few-Shot Image Classification CIFAR-FS 5-way (1-shot) MetaOptNet-SVM-trainval Accuracy 72.8 # 31
Few-Shot Image Classification CIFAR-FS 5-way (5-shot) MetaOptNet-SVM-trainval Accuracy 85 # 30
Few-Shot Image Classification FC100 5-way (1-shot) MetaOptNet-SVM-trainval Accuracy 47.2 # 12
Few-Shot Image Classification FC100 5-way (5-shot) MetaOptNet-SVM-trainval Accuracy 62.5 # 13
Few-Shot Image Classification Mini-Imagenet 5-way (1-shot) MetaOptNet-SVM-trainval Accuracy 64.09 # 57
Few-Shot Image Classification Mini-Imagenet 5-way (5-shot) MetaOptNet-SVM-trainval Accuracy 80 # 48
Few-Shot Image Classification Tiered ImageNet 5-way (1-shot) MetaOptNet-SVM-trainval Accuracy 65.81 # 41
Few-Shot Image Classification Tiered ImageNet 5-way (5-shot) MetaOptNet-SVM-trainval Accuracy 81.75 # 40

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