Self-Supervised

From
Revision as of 10:42, 8 December 2019 by BPeat (talk | contribs)
Jump to: navigation, search

YouTube search... ...Google search


Self-supervised learning refers to an unsupervised learning problem that is framed as a supervised learning problem in order to apply supervised learning algorithms to solve it. Supervised learning algorithms are used to solve an alternate or pretext task, the result of which is a model or representation that can be used in the solution of the original (actual) modeling problem. A common example of self-supervised learning is computer vision where a corpus of unlabeled images is available and can be used to train a supervised model, such as making images grayscale and having a model predict a color representation (colorization) or removing blocks of the image and have a model predict the missing parts (inpainting). 14 Different Types of Learning in Machine Learning | Jason Brownlee - Machine Learning Mastery


Machine_Learning_3.jpg