Lecture 13: Generative Models
Lecture 13 - May 18, 2017 Supervised vs Unsupervised Learning 6 Supervised Learning Data: (x, y) x is data, y is label Goal: Learn a function to map x -> y Examples: Classification, regression, object detection, semantic segmentation, image captioning, etc. DOG, DOG, CAT This image is CC0 public domain Object Detection
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