Produktbild: Practice of Statistics in the Life Sciences, Digital Update (International Edition)

Practice of Statistics in the Life Sciences, Digital Update (International Edition) with digital update

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Beschreibung

Produktdetails

Einband

Taschenbuch

Verlag

Macmillan Learning

Seitenzahl

768

Maße (L/B/H)

26,9/22/3 cm

Gewicht

1473 g

Sprache

Englisch

ISBN

978-1-319-46443-1

Beschreibung

Produktdetails

Einband

Taschenbuch

Verlag

Macmillan Learning

Seitenzahl

768

Maße (L/B/H)

26,9/22/3 cm

Gewicht

1473 g

Sprache

Englisch

ISBN

978-1-319-46443-1

Herstelleradresse

Libri GmbH
Europaallee 1
36244 Bad Hersfeld
DE

Email: gpsr@libri.de

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  • Produktbild: Practice of Statistics in the Life Sciences, Digital Update (International Edition)
  • Part I: Collecting and Exploring Data

    Chapter 1 Picturing Distributions with Graphs

    Individuals and variables

    Identifying categorical and quantitative variables

    Categorical variables: pie charts and bar graphs

    Quantitative variables: histograms

    Interpreting histograms

    Quantitative variables: dotplots

    Time plots

    Discussion: (Mis)adventures in data entry

    Chapter 2 Describing Quantitative Distributions with Numbers

    Measures of center: median, mean

    Measures of spread: percentiles, standard deviation

    Graphical displays of numerical summaries

    Spotting suspected outliers*

    Discussion: Dealing with outliers

    Organizing a statistical problem

    Chapter 3 Scatterplots and Correlation

    Explanatory and response variables

    Relationship between two quantitative variables: scatterplots

    Adding categorical variables to scatterplots

    Measuring linear association: correlation

    Chapter 4 Regression

    The least-squares regression line

    Facts about least-squares regression

    Outliers and influential observations

    Working with logarithm transformations*

    Cautions about correlation and regression

    Association does not imply causation

    Chapter 5 Two-Way Tables

    Marginal distributions

    Conditional distributions

    Simpsons paradox

    Chapter 6 Samples and Observational Studies

    Observation versus experiment

    Sampling

    Sampling designs

    Sample surveys

    Cohorts and case-control studies

    Chapter 7 Designing Experiments

    Designing experiments

    Randomized comparative experiments

    Common experimental designs

    Cautions about experimentation

    Ethics in experimentation

    Discussion: The Tuskegee syphilis study

    Chapter 8 Collecting and Exploring Data: Part I Review

    Part I Summary

    Comprehensive Review Exercises

    Large Dataset Exercises

    Online Data Sources

    EESEE Case Studies

    Part II: From Chance to Inference

    Chapter 9 Essential Probability Rules

    The idea of probability

    Probability models

    Probability rules

    Discrete versus continuous probability models

    Random variables

    Risk and odds*

    Chapter 10 Independence and Conditional Probabilities*

    Relationships among several events

    Conditional probability

    General probability rules

    Tree diagrams

    Bayess theorem

    Discussion: Making sense of conditional probabilities in diagnostic tests

    Chapter 11 The Normal Distributions

    Normal distributions

    The 68-95-99.7 rule

    The standard Normal distribution

    Finding Normal probabilities

    Finding percentiles

    Using the standard Normal table*

    Normal quantile plots*

    Chapter 12 Discrete Probability Distributions*

    The binomial setting and binomial distributions

    Binomial probabilities

    Binomial mean and standard deviation

    The Normal approximation to binomial distributions

    The Poisson distributions

    Poisson probabilities

    Chapter 13 Sampling Distributions

    Parameters and statistics

    Statistical estimation and sampling distributions

    The sampling distribution of the central limit theorem

    The sampling distribution of the law of large numbers*

    Chapter 14 Introduction to Inference

    Statistical estimation

    Margin of error and confidence level

    Confidence intervals for the mean

    Hypothesis testing P-value and statistical significance

    Tests for a population mean

    Tests from confidence intervals

    Chapter 15 Inference in Practice

    Conditions for inference in practice

    How confidence intervals behave

    How hypothesis tests behave

    Discussion: The scientific approach

    Planning studies: selecting an appropriate sample size

    Chapter 16 From Chance to Inference: Part II Review

    Part II Summary

    Comprehensive Review Exercises

    Advanced Topics (Optional Material)

    Online Data Sources

    EESEE Case Studies

    Part III: Statistical Inference

    Chapter 17 Inference about a Population Mean

    Conditions for inference

    The t distributions

    The one-sample t confidence interval

    The one-sample t test

    Matched pairs t procedures

    Robustness of t procedures

    Chapter 18 Comparing Two Means

    Comparing two population means

    Two-sample t procedures

    Robustness again

    Avoid the pooled two-sample t procedures*

    Avoid inference about standard deviations*

    Chapter 19 Inference about a Population Proportion

    The sample proportion

    Large-sample confidence intervals for a proportion

    Accurate confidence intervals for a proportion

    Choosing the sample size*

    Hypothesis tests for a proportion

    Chapter 20 Comparing Two Proportions

    Two-sample problems: proportions

    The sampling distribution of a difference between proportions

    Large-sample confidence intervals for comparing proportions

    Accurate confidence intervals for comparing proportions

    Hypothesis tests for comparing proportions

    Relative risk and odds ratio*

    Discussion: Assessing and understanding health risks

    Chapter 21 The Chi-Square Test for Goodness of Fit

    Hypotheses for goodness of fit

    The chi-square test for goodness of fit

    Interpreting chi-square results

    Conditions for the chi-square test

    The chi-square distributions

    The chi-square test and the one-sample z test*

    Chapter 22 The Chi-Square Test for Two-Way Tables

    Two-way tables

    The problem of multiple comparisons

    Expected counts in two-way tables

    The chi-square test

    Conditions for the chi-square test

    Uses of the chi-square test

    Using a table of critical values*

    The chi-square test and the two-sample z test*

    Chapter 23 Inference for Regression

    Conditions for regression inference

    Estimating the parameters

    Testing the hypothesis of no linear relationship

    Testing lack of correlation*

    Confidence intervals for the regression slope

    Inference about prediction

    Checking the conditions for inference

    Chapter 24 One-Way Analysis of Variance: Comparing Several Means

    Comparing several means

    The analysis of variance F test

    The idea of analysis of variance

    Conditions for ANOVA F-distributions and degrees of freedom

    The one-way ANOVA and the pooled two-sample t test*

    Details of ANOVA calculations*

    Chapter 25 Statistical Inference: Part III Review

    Part III Summary

    Review Exercises

    Supplementary Exercises

    EESEE Case Studies

    Part IV: Optional Companion Chapters

    Chapter 26 More about Analysis of Variance: Follow-up Tests and Two-Way ANOVA

    Beyond one-way ANOVA

    Follow up analysis: Tukey's pairwise multiple comparisons

    Follow up analysis: contrasts*

    Two-way ANOVA: conditions, main effects, and interaction

    Inference for two-way ANOVA

    Some details of two-way ANOVA*

    Chapter 27 Nonparametric Tests

    Comparing two samples: the Wilcoxon rank sum test

    Matched pairs: the Wilcoxon signed rank test

    Comparing several samples: the Kruskal-Wallis test

    Chapter 28 Multiple and Logistic Regression

    Parallel regression lines

    Estimating parameters

    Conditions for inference

    Inference for multiple regression

    Interaction

    A case study for multiple regression

    Logistic regression

    Inference for logistic regression

    Notes and Data Sources

    Tables

    Answers to Selected Exercises

    Some Data Sets Recurring Across Chapters

    Index