100% de satisfacción garantizada Inmediatamente disponible después del pago Leer en línea o como PDF No estas atado a nada 4,6 TrustPilot
logo-home
Notas de lectura

Lecture notes 0HV110 (BRM3)

Puntuación
-
Vendido
2
Páginas
60
Subido en
28-10-2020
Escrito en
2020/2021

This document contains the lecture notes for all lectures of 0HV110, both for part 1 (by Chris Snijders) and part 2 (by Daniël Lakens). The notes are conveniently divided into weeks, and then ordered into the different lectures by the different teachers. Pro-tip: buy my 0HV110 bundle for a discount on the documents!

Mostrar más Leer menos
Institución
Grado

Vista previa del contenido

0HV110 - BRM 3

The notes have been ordered as following: per week, then per lecturer and then counting the
lectures. So each lecturer has a lecture which number matches the week number.

Contents
Week 1...................................................................................................................................................4
Lecture 1 Snijders – Introduction lecture...........................................................................................4
Lecture 1 Lakens................................................................................................................................4
Video 1.0 – Intro............................................................................................................................4
Video 1.1 – Frequentism likelihoods Bayesian...............................................................................4
Video 1.2 – What is a p-value........................................................................................................5
Video 1.3 – Type 1 and Type 2 errors............................................................................................6
Assignment 1.1..............................................................................................................................7
Assignment 1.2 – Understanding p-values.....................................................................................8
Week 2.................................................................................................................................................10
Lecture 2 Snijders............................................................................................................................10
Part 1 of Logistic regression.........................................................................................................10
Part 2 of Logistic regression.........................................................................................................11
Hands-on lecture.........................................................................................................................12
Lecture 2 Lakens..............................................................................................................................13
Video 2.1 – Likelihoods................................................................................................................13
Video 2.2 – Binomial Bayesian Inference.....................................................................................13
Video 2.3 – Bayesian thinking......................................................................................................14
Assignment 2.1 – Likelihoods.......................................................................................................15
Assignment 2.2 – Bayesian statistics............................................................................................16
Week 3.................................................................................................................................................17
Lecture 3 Snijders............................................................................................................................17
Part 3 of Logistic regression.........................................................................................................17
Part 4 of Logistic regression.........................................................................................................17
Part 5 of Logistic regression.........................................................................................................18
Hands-on lecture.........................................................................................................................19
Lecture 3 Lakens..............................................................................................................................21
Video 3.1 – Type 1 Errors.............................................................................................................21
Video 3.2 – Type 2 Error control..................................................................................................22
Video 3.3 – Pre-registration.........................................................................................................23
Assignment 3.1 – The positive predictive value...........................................................................24

, Assignment 3.2 – Optional stopping............................................................................................24
Week 4.................................................................................................................................................26
Lecture 4 Snijders - Sneaky Stata.....................................................................................................26
Multiple regression......................................................................................................................26
Hands-on lecture Sneaky Stata....................................................................................................28
Lecture 4 Lakens..............................................................................................................................28
Video 4.1 Effect Sizes...................................................................................................................28
Video 4.2 Cohen’s d.....................................................................................................................29
Video 4.3 Correlations (r values)..................................................................................................30
Assignment 4.1 Effect sizes Cohen’s d and r................................................................................31
Assignment 4.2 Guessing the effect.............................................................................................32
Week 5.................................................................................................................................................32
Lecture 5 Snijders............................................................................................................................32
Multilevel regression part 1 + 2...................................................................................................32
Hands-on lecture on multi-level regression.................................................................................34
Lecture 5 Daniel Lakens...................................................................................................................35
Video 5.1 Confidence intervals....................................................................................................35
Video 5.2 Sample Size Justification..............................................................................................36
Video 5.3 P-curve analysis...........................................................................................................37
Assignment 5.1 – Confidence Intervals and Capture Percentages...............................................38
Assignment 5.2 Random Variation and Power Analysis...............................................................39
Week 6.................................................................................................................................................40
Lecture 6 Chris Snijders....................................................................................................................40
Multilevel regression part 3,4,5...................................................................................................40
Hands-on lecture multi-level regression part 2............................................................................42
Lecture 6 Daniel Lakens...................................................................................................................44
Video 6.1 Philosophy of Science..................................................................................................44
Video 6.2 The null is always false.................................................................................................45
Video 6.3 Theory construction.....................................................................................................46
Assignment 6.1 Equivalence testing.............................................................................................47
Week 7.................................................................................................................................................48
Lecture 7 Chris Snijders....................................................................................................................48
Exploratory factor analysis summary (by James Gaskin)..............................................................48
Factor analysis lecture part 1: introduction factor analysis.........................................................49
Factor analysis lecture part 2: extraction, rotation, calculation...................................................50
Factor analysis lecture part 3: principle component analysis vs factor analysis..........................52

, Factor analysis lecture part 4: assumptions and sample size.......................................................53
Hands-on lecture factor analysis..................................................................................................53
Week 7 Daniel Lakens......................................................................................................................55
Video 7.1 Replications..................................................................................................................55
Video 7.2 Publication bias............................................................................................................56
Video 7.3 Open science................................................................................................................57
Video 7.4 Scientific integrity........................................................................................................59
Assignment 7.2 Applied research ethics......................................................................................59
General take-aways.............................................................................................................................60

, Week 1
Lecture 1 Snijders – Introduction lecture
The homepage of the Canvas page shows the course structure.

Part 1

- Watch pre-recorded lecture before Wednesday each week
- Wednesday live lectures show how exercises should be handled
- Friday morning there is the opportunity to ask questions about all exercises

Part 2

- Nothing live
- Weekly assignment + homework

Lecture 1 Lakens
Video 1.0 – Intro
The part of Lakens in this course is aimed to improve our statistical inferences. This means confusion
is prevented and understanding of statistics is improved.

Problems in science related to statistics nowadays:

- Too small sample sizes
- Flexible analysis of data, resulting in flukes in data interpreted as true effects
- Publication bias: mainly research showing an effect is published, while research not showing
an effect is not

Video 1.1 – Frequentism likelihoods Bayesian
There are often multiple action paths in statistics to find the same result.

- Path of action:
o Use p-values to accept or reject the null hypothesis (Neyman-Pearson)
o Does not say anything about the current test, but gives more information in the long
run
- Path of knowledge: likelihoods
o Plotting the likelihood function of different hypotheses, and use this to find the
likelihood of the data
- Path of belief/ devotion: estimating the data based on prior beliefs
o Bayesian statistics

For this course, each approach can be chosen when seeming most useful, or can even be combined.

Quiz questions
1) If we reject the null hypothesis based on p < alpha, we:
a. Can be certain our conclusions is correct for the current test
b. We can’t know whether we are right or wrong in the current test, but we will not
be wrong too often over a large number of tests
c. Are making a mistake: we should have rejected the alternative hypothesis
2) Which approach allows you to incorporate your prior belief in your statistical inferences?
a. Frequentist statistics
b. Bayesian statistics
c. A likelihood approach

Escuela, estudio y materia

Institución
Estudio
Grado

Información del documento

Subido en
28 de octubre de 2020
Número de páginas
60
Escrito en
2020/2021
Tipo
NOTAS DE LECTURA
Profesor(es)
Lakens, snijders
Contiene
Todas las clases

Temas

$7.13
Accede al documento completo:

100% de satisfacción garantizada
Inmediatamente disponible después del pago
Leer en línea o como PDF
No estas atado a nada


Documento también disponible en un lote

Conoce al vendedor

Seller avatar
Los indicadores de reputación están sujetos a la cantidad de artículos vendidos por una tarifa y las reseñas que ha recibido por esos documentos. Hay tres niveles: Bronce, Plata y Oro. Cuanto mayor reputación, más podrás confiar en la calidad del trabajo del vendedor.
hildeeschx Technische Universiteit Eindhoven
Seguir Necesitas iniciar sesión para seguir a otros usuarios o asignaturas
Vendido
131
Miembro desde
9 año
Número de seguidores
108
Documentos
67
Última venta
1 mes hace

4.2

20 reseñas

5
11
4
3
3
4
2
2
1
0

Documentos populares

Recientemente visto por ti

Por qué los estudiantes eligen Stuvia

Creado por compañeros estudiantes, verificado por reseñas

Calidad en la que puedes confiar: escrito por estudiantes que aprobaron y evaluado por otros que han usado estos resúmenes.

¿No estás satisfecho? Elige otro documento

¡No te preocupes! Puedes elegir directamente otro documento que se ajuste mejor a lo que buscas.

Paga como quieras, empieza a estudiar al instante

Sin suscripción, sin compromisos. Paga como estés acostumbrado con tarjeta de crédito y descarga tu documento PDF inmediatamente.

Student with book image

“Comprado, descargado y aprobado. Así de fácil puede ser.”

Alisha Student

Preguntas frecuentes