Statistical learning: data mining and prediction with applications to medicine and genomics

S. Stankovic, M. Milosavljevic, L. Buturovic, M. Stankovic
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引用次数: 1

Abstract

Summary form only given. This tutorial is devoted to an important segment of statistical learning techniques related to the problem of supervised learning, which aims at predicting the value of an outcome given a number of inputs. Theoretical material is oriented mainly towards methods and concepts. The introduction outlines general aspects of statistical learning, together with motivations for its applications in medicine and genomics. The second part deals with the main theoretical aspects of supervised learning, including a short overview of statistical decision theory, with the emphasis on the problem of trade-off between bias and variance. Attention is further paid to linear methods, applied to both regression and classification problems. In the presentation of neural networks applied to statistical learning, stress is placed on multi-layer perceptrons and training algorithms based on gradient search techniques. Various issues important in practice are given considerable attention, including cross-validation techniques and the choice of suitable learning procedures.
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统计学习:数据挖掘和预测在医学和基因组学中的应用
只提供摘要形式。本教程致力于与监督学习问题相关的统计学习技术的一个重要部分,其目的是预测给定一些输入的结果的值。理论材料主要面向方法和概念。引言概述了统计学习的一般方面,以及其在医学和基因组学中的应用动机。第二部分涉及监督学习的主要理论方面,包括统计决策理论的简要概述,重点是偏差和方差之间的权衡问题。进一步关注线性方法,应用于回归和分类问题。在神经网络应用于统计学习的介绍中,重点放在多层感知器和基于梯度搜索技术的训练算法上。各种重要的问题在实践中给予相当的关注,包括交叉验证技术和选择合适的学习程序。
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