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When and How to Apply Statistics, Machine Learning and Deep Learning Techniques

机译:何时以及如何应用统计,机器学习和深度学习技术

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Machine Learning has become 'commodity' in engineering and experimental sciences, as calculus and statistics did before. After the hype produced during the 00's, machine learning (statistical learning, neural networks, etc.) has become a solid and reliable set of techniques available to the general researcher population to be included in their common procedures, far from the mysticism surrounding this field when only ML experts could solve modeling and prediction problems using such novel algorithms. But while knowledge on this field has settled among professionals, novice ML users still have trouble to decide when determined techniques could and should be applied to solve a given problem, sometimes ending with over-complicated solutions for simplistic problems, or complex problems partially solved by simplistic methods. This tutorial wants to introduce the most common techniques on statistical learning and neural networks, towards showing the proper techniques for each given scenario.
机译:像微积分和统计学一样,机器学习已成为工程和实验科学中的“商品”。在00年代大肆宣传之后,机器学习(统计学习,神经网络等)已成为一套坚实而可靠的技术,可供普通研究人员使用,以纳入他们的通用程序中,而不是围绕该领域的神秘主义。当只有ML专家可以使用这种新颖的算法解决建模和预测问题时。但是,尽管该领域的知识已经在专业人员中积累了下来,但是新手ML用户仍然难以决定何时可以并且应该使用确定的技术来解决给定的问题,有时会以过于复杂的解决方案来解决简单问题,或者通过部分解决来解决复杂问题简单的方法。本教程旨在介绍有关统计学习和神经网络的最常用技术,以显示适用于每种给定场景的适当技术。

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