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Fundamental principals of Computational Learning Theory

机译:计算学习理论的基本原则

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This paper presents some major key points of Computational Learning Theory, which describes fundamental building blocks of a mathematical formal representation of a cognitive process. The excerpt of the theory outlines and pinpoints the importance of having a distribution-free model that represents a learning process implementation for text classification purposes, widely adapted by Machine Learning. The authors emphasize on the importance of Probably Approximately Correct Learning paradigm and Efficient Learning solutions within acceptable running time of algorithms with high confidence and accuracy results. The examples that will be looked at will provide additional understanding of the theory and its application in the real world.
机译:本文介绍了计算学习理论的一些主要关键点,其描述了认知过程的数学正式表示的基本构建块。理论概述的摘录并确定了具有无分布模型的重要性,该模型代表了文本分类目的的学习过程实现,通过机器学习广泛适应。作者强调可能在具有高置信度和准确度的算法的可接受运行时间内大致正确的学习范式和高​​效学习解决方案的重要性。将看到的例子将提供对该理论的额外理解及其在现实世界中的应用。

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