Details

Fundamentals of Statistical Inference


Fundamentals of Statistical Inference

What is the Meaning of Random Error?
SpringerBriefs in Applied Statistics and Econometrics

von: Norbert Hirschauer, Sven Grüner, Oliver Mußhoff

53,49 €

Verlag: Springer
Format: PDF
Veröffentl.: 18.08.2022
ISBN/EAN: 9783030990916
Sprache: englisch
Anzahl Seiten: 134

Dieses eBook enthält ein Wasserzeichen.

Beschreibungen

This book provides a coherent description of foundational matters concerning statistical inference and shows how statistics can help us make inductive inferences about a broader context, based only on a limited dataset such as a random sample drawn from a larger population. By relating those basics to the methodological debate about inferential errors associated with&nbsp;<i>p</i>-values and statistical significance testing, readers are provided with a clear grasp of what statistical inference presupposes, and what it can and cannot do. To facilitate intuition, the representations throughout the book are as non-technical as possible.<div><br></div><div>The central inspiration behind the text comes from the scientific debate about good statistical practices and the replication crisis. Calls for statistical reform include an unprecedented methodological warning from the&nbsp;<i>American Statistical Association</i>&nbsp;in 2016, a special issue “Statistical Inference in the 21st Century:A World Beyond&nbsp;<i>p</i>&nbsp;&lt; 0.05” of&nbsp;<i>The American Statistician</i>&nbsp;in 2019, and a widely supported call to “Retire statistical significance” in&nbsp;<i>Nature</i>&nbsp;in 2019.</div><div><br></div><div>The book elucidates the probabilistic foundations and the potential of sample-based inferences, including random data generation, effect size estimation, and the assessment of estimation uncertainty caused by random error. Based on a thorough understanding of those basics, it then describes the&nbsp;<i>p</i>-value concept and the null-hypothesis-significance-testing ritual, and finally points out the ensuing inferential errors. This provides readers with the competence to avoid ill-guided statistical routines and misinterpretations of statistical quantities in the future.<p>Intended for readers with an interest in understanding the role of statistical inference, the book provides a prudent assessment of the knowledge gain that can be obtained from a particular setof data under consideration of the uncertainty caused by random error. More particularly, it offers an accessible resource for graduate students as well as statistical practitioners who have a basic knowledge of statistics. Last but not least, it is aimed at scientists with a genuine methodological interest in the above-mentioned reform debate.</p></div>
- 1.&nbsp;Introduction. - 2.&nbsp;The Meaning of Scientific and Statistical Inference. - 3.&nbsp;The Basics of Statistical Inference: Simple Random Sampling. - 4.&nbsp;Estimation Uncertainty in Complex Sampling Designs. - 5.&nbsp;Knowledge Accumulation Through Meta-analysis and Replications. - 6.&nbsp;The <i>p</i>-Value and Statistical Significance Testing. - 7.&nbsp;Statistical Inference in Experiments. - 8.&nbsp;Better Inference in the 21st Century: A World Beyond p &lt; 0.05.
<p><b>Norbert Hirschauer</b> is Professor of Agribusiness Management at the Martin Luther University Halle-Wittenberg, Germany. His research fields include whole-farm risk analysis, economics of crime and compliance, behavioral and experimental economics, and statistical inference. Since 2015, he has headed an informal working group that includes the book’s co-authors and concerns itself with inferential errors and the replication crisis in the social sciences.</p>

<p><b>Sven Grüner</b> is a PostDoc in the Agribusiness Management Group of the Martin Luther University Halle-Wittenberg, Germany. His research focus lies in behavioral and experimental economics. Within this realm, he is interested in the external validity of behavioral study findings. He has been a member of the working group on inferential errors and the replication crisis since 2015. </p>

<p><b>Oliver Mußhoff</b> is Professor of Farm Management at the Georg-August-University Göttingen, Germany. He has worked on a broadrange of research questions in the field of agricultural economics, including modeling of entrepreneurial decisions, investment and finance, risk management as well as experimental impact analysis of agricultural policy measures. He has been a member of the working group on inferential errors and the replication crisis since 2015.</p>
This book provides a coherent description of foundational matters concerning statistical inference and shows how statistics can help us make inductive inferences about a broader context, based only on a limited dataset such as a random sample drawn from a larger population. By relating those basics to the methodological debate about inferential errors associated with&nbsp;<i>p</i>-values and statistical significance testing, readers are provided with a clear grasp of what statistical inference presupposes, and what it can and cannot do. To facilitate intuition, the representations throughout the book are as non-technical as possible.<div><br></div><div>The central inspiration behind the text comes from the scientific debate about good statistical practices and the replication crisis. Calls for statistical reform include an unprecedented methodological warning from the&nbsp;<i>American Statistical Association</i>&nbsp;in 2016, a special issue “Statistical Inference in the 21st Century:A World Beyond&nbsp;<i>p</i>&nbsp;&lt; 0.05” of&nbsp;<i>The American Statistician</i>&nbsp;in 2019, and a widely supported call to “Retire statistical significance” in&nbsp;<i>Nature</i>&nbsp;in 2019.<p>The book elucidates the probabilistic foundations and the potential of sample-based inferences, including random data generation, effect size estimation, and the assessment of estimation uncertainty caused by random error. Based on a thorough understanding of those basics, it then describes the&nbsp;<i>p</i>-value concept and the null-hypothesis-significance-testing ritual, and finally points out the ensuing inferential errors. This provides readers with the competence to avoid ill-guided statistical routines and misinterpretations of statistical quantities in the future.</p><p>Intended for readers with an interest in understanding the role of statistical inference, the book provides a prudent assessment of the knowledge gain that can be obtained from a particular set of data under consideration of the uncertainty caused by random error. More particularly, it offers an accessible resource for graduate students as well as statistical practitioners who have a basic knowledge of statistics. Last but not least, it is aimed at scientists with a genuine methodological interest in the above-mentioned reform debate.</p></div>
Facilitates effective intuition of what statistical inference presupposes, and what it can and cannot do Elaborates on the ongoing debate about inferential errors related to p-values and statistical significance testing Provides a non-technical introduction to statistical inference, accessible for students and practitioners

Diese Produkte könnten Sie auch interessieren:

Modeling Uncertainty
Modeling Uncertainty
von: Moshe Dror, Pierre L'Ecuyer, Ferenc Szidarovszky
PDF ebook
236,81 €
Level Crossing Methods in Stochastic Models
Level Crossing Methods in Stochastic Models
von: Percy H. Brill
PDF ebook
203,29 €
Continuous Bivariate Distributions
Continuous Bivariate Distributions
von: N. Balakrishnan, Chin Diew Lai
PDF ebook
128,39 €