Manifold Mixup: Learning Better Representations by Interpolating Hidden States
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Ioannis Mitliagkas | Yoshua Bengio | Christopher Beckham | Aaron C. Courville | Amir Abbas Najafi | Alex Lamb | Aaron Courville | Vikas Verma | Yoshua Bengio | Alex Lamb | Ioannis Mitliagkas | Vikas Verma | Christopher Beckham | Amir Najafi
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