Pirsiavash, HamedAbbasi Koohpayegani, Soroush2023-07-072023-07-072022-01-0112572http://hdl.handle.net/11603/28463Self-supervised learning aims to learn good representations with unlabeled data. Recent works have shown that larger models benefit more from self-supervised learning than smaller models. As a result, the gap between supervised and self-supervised learning has been greatly reduced for larger models. In this work, instead of designing a new pseudo task for self-supervised learning, we develop a model compression method to compress an already learned, deep self-supervised model (teacher) to a smaller one (student). We train the student model so that it mimics the relative similarity between the datapoints in the teacher's embedding space. For AlexNet, our method outperforms all previous methods including the fully supervised model on ImageNet linear evaluation (59.0% compared to 56.5%) and on nearest neighbor evaluation (50.7% compared to 41.4%). To the best of our knowledge, this is the first time a self-supervised AlexNet has outperformed supervised one on ImageNet classification. Moreover, we show that our method is effective in a few other applications: reducing the computation precision rather than the model depth only, learning small models for video representations, learning across modalities, and self-distillation.application:pdfThis item may be protected under Title 17 of the U.S. Copyright Law. It is made available by UMBC for non-commercial research and education. For permission to publish or reproduce, please see http://aok.lib.umbc.edu/specoll/repro.php or contact Special Collections at speccoll(at)umbc.eduComputer VisionDistillationEfficient ModelMachine LearningRepresentation LearningSelf-Supervised LearningSELF-SUPERVISED LEARNING BY COMPRESSING REPRESENTATIONS FOR LIGHTWEIGHT MODELSText