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Deep Learning of Representations: Looking Forward

机译:深入学习的陈述:期待

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Deep learning research aims at discovering learning algorithms that discover multiple levels of distributed representations, with higher levels representing more abstract concepts. Although the study of deep learning has already led to impressive theoretical results, learning algorithms and breakthrough experiments, several challenges lie ahead. This paper proposes to examine some of these challenges, centering on the questions of scaling deep learning algorithms to much larger models and datasets, reducing optimization difficulties due to ill-conditioning or local minima, designing more efficient and powerful inference and sampling procedures, and learning to disentangle the factors of variation underlying the observed data. It also proposes a few forward-looking research directions aimed at overcoming these challenges.
机译:深入学习研究旨在发现发现多个分布式表示的学习算法,具有更高的级别代表更多抽象概念。虽然对深度学习的研究已经导致了令人印象深刻的理论结果,学习算法和突破性实验,但是未来的几个挑战。本文建议审查其中一些挑战,以缩放深入学习算法的问题为更大的型号和数据集,降低了由于病态或局部最小值,设计更高效和强大的推理和采样程序以及学习而降低优化困难解开观察到的数据底层的变异因素。它还提出了一些前瞻性的研究方向,旨在克服这些挑战。

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