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arxiv: 2108.07464 · v1 · pith:RDJORCK7 · submitted 2021-08-17 · cs.LG · cs.CV

Investigating a Baseline Of Self Supervised Learning Towards Reducing Labeling Costs For Image Classification

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classification cs.LG cs.CV
keywords learningdataself-supervisedlabeledpretextsupervisedaccuracybaseline
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Data labeling in supervised learning is considered an expensive and infeasible tool in some conditions. The self-supervised learning method is proposed to tackle the learning effectiveness with fewer labeled data, however, there is a lack of confidence in the size of labeled data needed to achieve adequate results. This study aims to draw a baseline on the proportion of the labeled data that models can appreciate to yield competent accuracy when compared to training with additional labels. The study implements the kaggle.com' cats-vs-dogs dataset, Mnist and Fashion-Mnist to investigate the self-supervised learning task by implementing random rotations augmentation on the original datasets. To reveal the true effectiveness of the pretext process in self-supervised learning, the original dataset is divided into smaller batches, and learning is repeated on each batch with and without the pretext pre-training. Results show that the pretext process in the self-supervised learning improves the accuracy around 15% in the downstream classification task when compared to the plain supervised learning.

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