There are two approaches to undergraduate and graduate courses in linear statistical models and experimental design in applied statistics. One is a two-term sequence focusing on regression followed by ANOVA/Experimental design. Applied Linear Statistical Models serves that market. It is offered in business, economics, statistics, industrial engineering, public health, medicine, and psychology departments in four-year colleges and universities, and graduate schools. Applied Linear Statistical Models is the leading text in the market. It is noted for its quality and clarity, and its authorship is first-rate. The approach used in the text is an applied one, with an emphasis on understanding of concepts and exposition by means of examples. Sufficient theoretical foundations are provided so that applications of regression analysis can be carried out comfortably. The fourth edition has been updated to keep it current with important new developments in regression analysis.
2024-09-26 22:02:48 9.75MB Statistical Stochastics
1
介绍统计机器学习的经典教科书, 2009年版本
2024-08-20 18:20:19 11.88MB 机器学习
1
甲基试剂盒 建置状态 介绍 methylKit是一个软件包,用于DNA甲基化分析和高通量亚硫酸氢盐测序的注释。 该软件包旨在处理及其变体的测序数据,还可以处理靶标捕获方法,例如序列。 此外,methylKit可以处理从Tab-seq或oxBS-seq获得的5hmC的碱基对分辨率数据。 如果提供正确的输入格式,它也可以处理全基因组亚硫酸氢盐测序数据。 当前功能 覆盖率统计 甲基化统计 样本相关和聚类 差异甲基化分析 功能注释和访问器/强制功能 多种可视化选项 区域和平铺窗口分析 (几乎)适当的 直接从对齐文件中读取甲基化调用 批量效果控制 多线程支持(用于更快的差异甲基化计算) 从生物导体包装GenomicRanges对物体施加强制 从通用文本文件中读取甲基化百分比数据 保持最新 您可以订阅我们的googlegroups页面,以获取有关新版本和功能的最新信息(低频率,仅发布更新) 要提问
2024-08-19 13:25:52 687KB visualization methylation statistical-analysis R
1
利用MICE填补方法和统计填补Statistical对缺失数据进行填补(包含数据集),并在数值数据的MSE和RMSE以及分类数据的准确性 Accuracy方面对两者进行评估,完整内容可以参考文章:https://blog.csdn.net/didi_ya/article/details/125168248
2024-04-22 16:29:22 196KB python mice
1
Bayesian Statistical Modeling with Stan, R, and Python.pdf
2023-09-27 21:35:31 9.63MB python stan Bayesian R
1
Focusing on high-dimensional applications, this 4th edition presents the tools and concepts used in multivariate data analysis in a style that is also accessible for non-mathematicians and practitioners. It surveys the basic principles and emphasizes both exploratory and inferential statistics; a new chapter on Variable Selection (Lasso, SCAD and Elastic Net) has also been added. All chapters include practical exercises that highlight applications in different multivariate data analysis fields: in quantitative financial studies, where the joint dynamics of assets are observed; in medicine, where recorded observations of subjects in different locations form the basis for reliable diagnoses and medication; and in quantitative marketing, where consumers’ preferences are collected in order to construct models of consumer behavior. All of these examples involve high to ultra-high dimensions and represent a number of major fields in big data analysis. The fourth edition of this book on Applied Multivariate Statistical Analysis offers the following new features: A new chapter on Variable Selection (Lasso, SCAD and Elastic Net) All exercises are supplemented by R and MATLAB code that can be found on www.quantlet.de. The practical exercises include solutions that can be found in Härdle, W. and Hlavka, Z., Multivariate Statistics: Exercises and Solutions. Springer Verlag, Heidelberg. Table of Contents Part I Descriptive Techniques Chapter 1 Comparison of Batches Part II Multivariate Random Variables Chapter 2 A Short Excursion into Matrix Algebra Chapter 3 Moving to Higher Dimensions Chapter 4 Multivariate Distributions Chapter 5 Theory of the Multinormal Chapter 6 Theory of Estimation Chapter 7 Hypothesis Testing Part III Multivariate Techniques Chapter 8 Regression Models Chapter 9 Variable Selection Chapter 10 Decomposition of Data Matrices by Factors Chapter 11 Principal Components Analysis Chapter 12 Factor Analysis Chapter 13 Cluster Analysis Chapter 14 Discriminant Analysis Chapter 15 Correspondence Analysis Chapter 16 Canonical Correlation Analysis Chapter 17 Multidimensional Scaling Chapter 18 Conjoint Measurement Analysis Chapter 19 Applications in Finance Chapter 20 Computationally Intensive Techniques Part IV Appendix Chapter 21 Symbols and Notations Chapter 22 Data
2023-09-18 20:12:47 11.83MB Multivariate Data Analysis
1
The Elements of Statistical Learning 本资源转载自网络,如有侵权,请联系上传者或csdn删除
2023-02-27 10:00:14 7.91MB ESL Deep Learnin
1
中科院机器学习课程的推荐教材,中文名统计学完全教程
2023-02-25 18:07:58 5.62MB 统计学完全教程 英文版
1
Machine Learning, Neural and Statistical Classification
2023-02-09 21:59:58 1.7MB Machine Learning
1
Statistical foundations of machine learning
2023-01-26 21:11:54 2.18MB Statistical foundations of machine
1