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by possibilistic
4120 days ago
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It appears that they have developed a novel neural network architecture such that it is possible to understand what each of the layers encode. (Classically, the result of training might not be intelligible--the learned function is encoded in weights and parameters, and aren't meant for human readability or consumption.) Another interesting property is the "pipeline" and how they seemed to have developed the math to make back propagation work around it. Each step in the pipeline performs some convolution or transformation function. I haven't read the paper, but I'd be curious to see if they can reuse components of this pipeline in conjunction with one another. Perhaps it wouldn't be immediately possible (I imagine the parameters would have to be adjusted in some shape or form), but a plug-and-play system of pre-trained functions would be nothing sort of amazing. (I may be incorrect in my analysis. I'm drawing on the ML and image processing I took in undergrad.) |
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