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Learn vanilla AE #2

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vlad17 opened this issue Oct 19, 2017 · 2 comments
Open

Learn vanilla AE #2

vlad17 opened this issue Oct 19, 2017 · 2 comments
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@vlad17
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vlad17 commented Oct 19, 2017

(Try to find existing imple if possible)

autoencoders reading

diff prediction

@vlad17 vlad17 mentioned this issue Oct 19, 2017
@vlad17 vlad17 self-assigned this Oct 19, 2017
@vlad17 vlad17 changed the title Learn vanilla AE/VAE + dynamics for Pong Learn vanilla AE + dynamics for Pong Oct 23, 2017
@vlad17
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vlad17 commented Oct 23, 2017

On top of vanilla/regularized AE consider using a CAE (might need jacobian code as performed here, or use a trace of the jacobian (?) .

DAE - dae might be useful, considering its relation to ladder nets.

Use HW3 conv net for the lower stack (also collect training from hw3 random agent).

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vlad17 commented Oct 24, 2017

@vlad17 vlad17 changed the title Learn vanilla AE + dynamics for Pong Learn vanilla AE Oct 26, 2017
@vlad17 vlad17 mentioned this issue Oct 27, 2017
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