Transcription of Extracting and Composing Robust Features with Denoising ...
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Extracting and Composing Robust Features with DenoisingAutoencodersPascal e de Montr eal, Dept. IRO, CP 6128, Succ. Centre-Ville, Montral, Qubec, H3C 3J7, CanadaAbstractPrevious work has shown that the difficul-ties in learning deep generative or discrim-inative models can be overcome by an ini-tial unsupervised learning step that maps in-puts to useful intermediate introduce and motivate a new trainingprinciple for unsupervised learning of a rep-resentation based on the idea of making thelearned representations Robust to partial cor-ruption of the input pattern. This approachcan be used to train autoencoders, and thesedenoising autoencoders can be stacked to ini-tialize deep architectures. The algorithm canbe motivated from a manifold learning andinformation theoretic perspective or from agenerative model perspective. Comparativeexperiments clearly show the surprising ad-vantage of corrupting the input of autoen-coders on a pattern classification IntroductionRecent theoretical studies indicate that deep architec-tures (Bengio & Le Cun, 2007; Bengio, 2007) may beneeded toefficientlymodel complex distributions andachieve better generalization performance on challeng-ing recognition tasks.
the (unknown) distribution of its observed input. For high dimensional redundant input (such as images) at least, such structures are likely to depend on evidence gathered from a combination of many input dimen-sions. They should thus be recoverable from partial observation only. A hallmark of this is our human
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