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소스 채널 @phpdevelopersuz · Post #2870 · 10월 27일

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Am Neumarkt 😱

@amneumarkt · Post #261 · 2021. 09. 13. AM 05:49

#ML#self-supervised #representation Contrastive loss is widely used in representation learning. However, the mechanism behind it is not as straightforward as it seems. Wang & Isola proposed a method to rewrite the contrastive loss in to alignment and uniformity. Samples in the feature space are normalized to unit vectors. These vectors are allocated onto a hypersphere. The two components of the contrastive loss are - alignment, which forces the positive samples to be aligned on the hypersphere, and - uniformity, which distributes the samples uniformly on the hypersphere. By optimization of such objectives, the samples are distributed on a hypersphere, with similar samples clustered, i.e., pointing to the similar directions. Uniformity makes sure the samples are using the whole hypersphere so we don't waste "space". References: Wang T, Isola P. Understanding Contrastive Representation Learning through Alignment and Uniformity on the Hypersphere. arXiv [cs.LG]. 2020. Available: http://arxiv.org/abs/2005.10242

Google Facts™ [ ️@googlefactss🌎]

@googlefactss · Post #40401 · 2025. 12. 24. PM 03:01

The Bechdel-Wallace Test checks if a movie or story has at least two women who talk to each other about something other than a man. It shows how women are often missing or only shown in relation to men. Many films fail this simple test, highlighting the need for better female representation in media. 👱‍♀👩‍🦳🚫🤷‍♂ [Read more] [See more] @googlefactss #BechdelWallaceTest🎬#WomenInFilm#Representation#Equality