Publication | Closed Access
Meta Navigator: Search for a Good Adaptation Policy for Few-shot Learning
37
Citations
30
References
2021
Year
Artificial IntelligenceFew-shot LearningEngineeringMachine LearningMeta-learningZero-shot LearningData ScienceSearch SpaceMulti-task LearningRobot LearningMeta NavigatorCognitive ScienceComputer ScienceDeep LearningComputer VisionGood Adaptation PolicyDomain AdaptationTransfer LearningMeta-learning (Computer Science)
Few-shot learning aims to adapt knowledge learned from previous tasks to novel tasks with only a limited amount of labeled data. Research literature on few-shot learning exhibits great diversity, while different algorithms often excel at different few-shot learning scenarios. It is therefore tricky to decide which learning strategies to use under different task conditions. Inspired by the recent success in Automated Machine Learning literature (AutoML), in this paper, we present Meta Navigator, a framework that attempts to solve the aforementioned limitation in few-shot learning by seeking a higher-level strategy and proffer to automate the selection from various few-shot learning designs. The goal of our work is to search for good parameter adaptation policies that are applied to different stages in the network for few-shot classification. We present a search space that covers many popular few-shot learning algorithms in the literature, and develop a differentiable searching and decoding algorithm based on meta-learning that supports gradient-based optimization. We demonstrate the effectiveness of our searching-based method on multiple benchmark datasets. Extensive experiments show that our approach significantly outperforms baselines and demonstrates performance advantages over many state-of-the-art methods.
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