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Papers/Extended Few-Shot Learning: Exploiting Existing Resources ...

Extended Few-Shot Learning: Exploiting Existing Resources for Novel Tasks

Reza Esfandiarpoor, Amy Pu, Mohsen Hajabdollahi, Stephen H. Bach

2020-12-13Few-Shot LearningImage ClassificationTransfer LearningFew-Shot Image ClassificationSemantic SimilaritySemantic Textual Similarity
PaperPDFCode(official)Code(official)

Abstract

In many practical few-shot learning problems, even though labeled examples are scarce, there are abundant auxiliary datasets that potentially contain useful information. We propose the problem of extended few-shot learning to study these scenarios. We then introduce a framework to address the challenges of efficiently selecting and effectively using auxiliary data in few-shot image classification. Given a large auxiliary dataset and a notion of semantic similarity among classes, we automatically select pseudo shots, which are labeled examples from other classes related to the target task. We show that naive approaches, such as (1) modeling these additional examples the same as the target task examples or (2) using them to learn features via transfer learning, only increase accuracy by a modest amount. Instead, we propose a masking module that adjusts the features of auxiliary data to be more similar to those of the target classes. We show that this masking module performs better than naively modeling the support examples and transfer learning by 4.68 and 6.03 percentage points, respectively.

Results

TaskDatasetMetricValueModel
Image ClassificationCIFAR-FS 5-way (1-shot)Accuracy81.87pseudo-shots
Image ClassificationMini-Imagenet 5-way (5-shot)Accuracy82.51pseudo-shots
Image ClassificationMini-Imagenet 5-way (1-shot)Accuracy73.35pseudo-shots
Image ClassificationFC100 5-way (5-shot)Accuracy61.58pseudo-shots
Image ClassificationFC100 5-way (1-shot)Accuracy50.57pseudo-shots
Image ClassificationCIFAR-FS - 5-Shot LearningAccuracy89.12pseudo-shots
Image ClassificationTiered ImageNet 5-way (1-shot)Accuracy76.55pseudo-shots
Image ClassificationTiered ImageNet 5-way (5-shot)Accuracy86.82pseudo-shots
Image ClassificationCIFAR-FS 5-way (5-shot)Accuracy89.12pseudo-shots
Few-Shot Image ClassificationCIFAR-FS 5-way (1-shot)Accuracy81.87pseudo-shots
Few-Shot Image ClassificationMini-Imagenet 5-way (5-shot)Accuracy82.51pseudo-shots
Few-Shot Image ClassificationMini-Imagenet 5-way (1-shot)Accuracy73.35pseudo-shots
Few-Shot Image ClassificationFC100 5-way (5-shot)Accuracy61.58pseudo-shots
Few-Shot Image ClassificationFC100 5-way (1-shot)Accuracy50.57pseudo-shots
Few-Shot Image ClassificationCIFAR-FS - 5-Shot LearningAccuracy89.12pseudo-shots
Few-Shot Image ClassificationTiered ImageNet 5-way (1-shot)Accuracy76.55pseudo-shots
Few-Shot Image ClassificationTiered ImageNet 5-way (5-shot)Accuracy86.82pseudo-shots
Few-Shot Image ClassificationCIFAR-FS 5-way (5-shot)Accuracy89.12pseudo-shots

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