Statistics is Easy!

D. Shasha, Manda Wilson
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引用次数: 13

Abstract

Statistics is the activity of inferring results about a population given a sample. Historically, statistics books assume an underlying distribution to the data (typically, the normal distribution) and derive results under that assumption. Unfortunately, in real life, one cannot normally be sure of the underlying distribution. For that reason, this book presents a distribution-independent approach to statistics based on a simple computational counting idea called resampling. This book explains the basic concepts of resampling, then systematically presents the standard statistical measures along with programs (in the language Python) to calculate them using resampling, and finally illustrates the use of the measures and programs in a case study. The text uses junior high school algebra and many examples to explain the concepts. The ideal reader has mastered at least elementary mathematics, likes to think procedurally, and is comfortable with computers. Table of Contents: The Basic Idea / Bias Corrected Confidence Intervals / Pragmatic Considerations When Using Resampling / Terminology / The Essential Stats / Case Study: New Mexico's 2004 Presidential Ballots / References
统计很简单!
统计学是对给定样本的总体结果进行推断的活动。从历史上看,统计书籍假设数据的基本分布(通常是正态分布),并在该假设下得出结果。不幸的是,在现实生活中,人们通常无法确定潜在的分布。出于这个原因,这本书提出了一个分布独立的方法来统计基于一个简单的计算计数思想,称为重采样。本书解释了重采样的基本概念,然后系统地介绍了标准的统计度量以及使用重采样计算它们的程序(在Python语言中),最后在案例研究中说明了度量和程序的使用。本文用初中代数和许多例子来解释这些概念。理想的读者至少已经掌握了初级数学,喜欢用程序思考,并且对计算机很熟悉。目录:基本思想/偏差校正置信区间/使用重新抽样时的实用主义考虑/术语/基本统计/案例研究:新墨西哥州2004年总统投票/参考资料
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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