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Opening the Black Box of Deep Learning: Some Lessons and Take-aways

机译:打开黑匣子的深度学习:一些课程和休息

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摘要

Deep learning has rapidly come to dominate AI and machine learning in the past decade. These successes have come despite deep learning largely being a "black box." A small subdiscipline has grown up trying to derive better understanding of the underlying mathematical properties. Via a tour d'horizon of recent theoretical analyses of deep learning in some concrete settings, we illustrate how the black box view can miss out on (or even be wrong about) special phenomena going on during training. These phenomena are also not captured by the training objective. We argue that understanding such phenomena via mathematical understanding will be crucial for enabling the full range of future applications.
机译:深入学习迅速来到过去十年中的AI和机器学习。 尽管深入学习,但这些成功很大程度上是一个“黑匣子”。 一个小的小学生已经成长,试图导出更好地了解潜在的数学特性。 通过在一些具体设置中的深度学习理论分析的旅游D'Horizo n,我们说明了黑匣子视图如何错过(甚至是错误的)在训练期间进行的特殊现象。 这些现象也没有被训练目标捕获。 我们认为,通过数学理解了解这种现象对于实现全方位的未来应用是至关重要的。

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