WSRt, critical thinking - a summary of all articles needed in the fourth block of second year psychology at the uva
- 2597 reads
Critical thinking
Article: Gigerenzer, G. & Marewski, J, N. (2015)
Surrogate Science: The Idol of a Universal Method for Scientific Inference
doi: 10.1177/0149206314547522
Introduction
Scientific inference should not be made mechanically.
Good science requires both statistical tools and informed judgment about what model to construct, what hypotheses to test, and what tools to use.
This article is about the idol of a universal method of statistical inference.
In this article, we make three points:
The null ritual
The most prominent creation of a seemingly universal inference method is the null ritual:
Level of significance has three different meanings:
Three meanings of significance
The alpha level: the long-term relative frequency of mistakenly rejecting hypothesis H0 if it is true, also known as Type I error rate.
The beta level: the long-term frequency of mistakenly rejecting H1 if it is true.
Two statistical hypothesis need to be specified in order to be able to determine both alpha and beta.
Neyman and Pearson rejected a mere convention in favour of an alpha level that required a rational scheme.
The third definition of level of significance is the exact level of significance.
This differs fundamentally form the null ritual.
According to Neyman-Pearson, alpha needs to be determined before the data are obtained.
Bestselling textbooks sell a single method of inference
The null ritual is an invention of statistical textbook writers in the social sciences.
The idol of an universal method (in the form of the null ritual) left no space for Bayesian statistics. Nor did publishers.
The potential danger in Bayesian statistics lies in the subjective interpretation of probability, which sanctions its universal application to al situations of uncertainty.
Three interpretations of probability
Universal Bayes
If probability is thought of as a relative frequency in the long run, it immediately becomes clear that Bayes’ rule has a limited range of applications.
The same holds for propensity.
The subjective interpretation has no limits.
Universal Bayes ignores the study of genuine tools for uncertainty.
Automatic Bayes
As with the null ritual, the universal claim for Bayes’ rule tends to get together with its automatic use.
An automatic use of Bayes’ rule is a dangerously beautiful idol.
But even for a devoted Bayesian, it is not a reality. Bayesianism does not exists in the singular.
Toward a statistical toolbox
The alternative to universal and automatic of Bayesian statistics as forming part of a larger toolbox.
Bayes’ rule has its value but, does not work for all problems.
In the social sciences, objections to the use of Bayes’ rule are that:
Summary
Bayes’ rule is useful as part of a statistical toolbox.
For instance, when priors can be reliably estimated.
Neyman and Pearson’s decision theory is appropriate for repeated random drawing situations in quality control.
Fisher’s null hypothesis testing is another tool, relevant for situations in which one does not understand what is happening.
This statistical toolbox contains not only techniques of inference but, of equal importance, descriptive statistics, exploratory data analysis, and formal modeling techniques.
The only items that do not belong in the toolbox are false idols.
Surrogate science: the attempt to infer the quality of research using a single number or benchmark.
The introduction of surrogates shifts researchers’ goal away from doing innovative science and redirects their effort toward meeting the surrogate goal.
Statistical inference as surrogate for replication
This is the replication fallacy: a significant p value does not specify the probability that the same result can be reproduced in another study.
Inferential statistics have become surrogates for real replication.
Hypotheses finding is presented as hypotheses testing
Fishing expeditions: disguising hypothesis testing as hypothesis testing.
Many researchers first look at the data for patterns, check for significance, and then present the result as if it were a hypothesis test.
A hypothesis should not be tested with the same data from which it was derived.
Finding new patterns is important, but p values for confidence intervals should not be provided for these.
Routine statistical inference has become a surrogate for both hypothesis finding and replication. The surrogate goal is to obtain a significant p value or other test statistic, even when it is out of place, as in the case of hypothesis finding.
Quantity as surrogate for quality
Surrogate science does not end with statistical tests.
Research assessment exercises tend to create surrogates as well. Like citation counts.
The evident danger is that hiring committees and advisory broads study these surrogate numbers rather than the papers written by job candidates and faculty members.
With citation as surrogate for quality, some truly original work may go unheeded.
Surrogates transform science by warping researchers’ goals.
Surrogate science, from the mindless calculation of p values or Bayes factors to citation counts, is not entirely worthless.
It fuels a steady stream of work of average quality and keeps researchers busy producing more of the same.
But it makes it harder for scientists to be innovative, risk taking, and imaginative.
By transforming researchers’ goals, surrogates encourage cheating and incomplete or dishonest reporting.
Join with a free account for more service, or become a member for full access to exclusives and extra support of WorldSupporter >>
This is a summary of the articles and reading materials that are needed for the fourth block in the course WSR-t. This course is given to second year psychology students at the Uva. The course is about thinking critically about how scientific research is done and how this
...There are several ways to navigate the large amount of summaries, study notes en practice exams on JoHo WorldSupporter.
Do you want to share your summaries with JoHo WorldSupporter and its visitors?
Main summaries home pages:
Main study fields:
Business organization and economics, Communication & Marketing, Education & Pedagogic Sciences, International Relations and Politics, IT and Technology, Law & Administration, Medicine & Health Care, Nature & Environmental Sciences, Psychology and behavioral sciences, Science and academic Research, Society & Culture, Tourisme & Sports
Main study fields NL:
JoHo can really use your help! Check out the various student jobs here that match your studies, improve your competencies, strengthen your CV and contribute to a more tolerant world
2218 |
Add new contribution