100% satisfaction guarantee Immediately available after payment Both online and in PDF No strings attached 4.2 TrustPilot
logo-home
Summary

ARMS lecture, seminar and grasple summary

Rating
-
Sold
2
Pages
40
Uploaded on
24-03-2025
Written in
2024/2025

This is all information for the exam of ARMS, including the information from the lectures, seminars and grasple assignments.

Institution
Course











Whoops! We can’t load your doc right now. Try again or contact support.

Written for

Institution
Study
Course

Document information

Uploaded on
March 24, 2025
Number of pages
40
Written in
2024/2025
Type
Summary

Subjects

Content preview

ARMS samenvatting herkansing

Week 1

LECTURE
Frequentist framework
-​ test how well the data fit H0
-​ p-values, confidence intervals, effect sizes, power analysis

Bayesian
-​ probability of hypothesis given the data, taking prior information into account
-​ bayes factors, priors, posteriors, credible intervals

Frequentist estimation
-​ all relevant information for inference is contained in the likelihood function
-​ our parameter of interest is a population mean (µ)
-​ we assume a normal likelihood function
-​ x-as : values for µ
-​ y-as : probability of the observed data for each value of µ : P(data|µ)
→ likelihood
Bayesian estimation
-​ in addition to the data, we may also have prior information about µ
-​ central idea: prior knowledge is updated with information in the data and together
provides the posterior distribution for µ
-​ information in our dataset provides information about what reasonable
values for µ could be (through likelihood function)
-​ advantage: accumulating knowledge (today’s posterior is tomorrow's prior)
-​ disadvantage: results depend on choice of prior

Prior influences the posteriors

Bayesian estimates
-​ the posterior distribution of the parameters of interest provides all desired estimates
-​ posterior mean/mode
-​ combination of the prior and likelihood
-​ posterior SD (comparable to frequentist ‘standard error’)
-​ posterior 95% credible interval: providing the bounds of the part of the posterior
with 95% of the posterior mass

Frequentist probability
-​ p value = probability of observing same or more extreme data given that null is true
-​ testing conditions on H0
-​ the probability of an event is assumed to be the frequency with which it occurs




1

,Bayesian probability
-​ when testing hypotheses, bayesians can calculate the probability of the hypothesis given the
data
-​ bayesian conditions on observed data
-​ PMP = posterior model probability
-​ the (bayesian) probability of the hypothesis after observing the data
-​ bayesian probability of hypothesis being true, depends on 2 criteria
1.​ how sensible it is, based on prior knowledge (the prior)
2.​ how well it fits the new evidence (the data)
-​ bayesian testing is comparative: hypotheses are tested against one another, not in isolation
-​ bayes factor:



-​ BF10 = 10, support for H1 is 10 times stronger than for H0
-​ BF10 =1, support for H1 is as strong as support for H0
-​ Posterior probabilities of hypothesis (PMP) are also relative probabilities
-​ updates of prior probabilities (for hypotheses) with the BF

Definition of probability
-​ frequentist: probability is the relative frequency of events (more formal?)
-​ bayesian: probability is the degree of belief (more intuitive?)

Intervals
-​ frequentist 95% confidence interval
-​ if we were to repeat this experiment many times and calculate a CI each time, 95%
of the intervals will include the true parameter value, and 5% won’t
-​ bayesian 95% credible interval
-​ there is 95% probability that the true value is in the credible interval

Linear regression
-​ scatterplot for scores on the variables x and y and the linear positive association between
them

Multiple linear regression




-​ observed outcome is the prediction based on the model + prediction error

Model assumptions
-​ serious violations → incorrect results
-​ sometimes easy solutions
-​ per model, know what the assumptions are



2

,MLR assumptions
1.​ interval/ratio variables (outcome and predictors)
-​ MLR can handle dummy variables as predictors
-​ dummy variable has 0 and 1 (1= males, 0 = females)

Evaluating the model
-​ frequentist
-​ estimate parameters of model
-​ test with NHST if parameters are significantly non-zero




-​ bayesian
-​ estimate parameters of model
-​ compare support in data for different models/hypotheses using bayes factors

Frequentist analyses




Bayesian analysis




3

, -​ bayesian estimates are summary of posterior distribution of parameters (B)
-​ differences with frequentist results can be explained by impact of prior
-​ BFinclusion shows if the model improves with this predictor (BF = 5.467, when adding age)
-​ last column provides 95% credible interval for each regression coefficient

Hierarchical linear regression analysis
-​ comparing 2 nested models

Exploration vs theory evaluation
-​ frequentist
-​ method enter
-​ data analyst decides what goes in the model
-​ confirmatory
-​ stepwise method
-​ best prediction model is determined based on results in the sample
-​ capitalizes most on chance
-​ best chance to get replicated
-​ bayesian
-​ exploratory
-​ BAIN can evaluate informative hypotheses → confirmatory

SEMINAR
Point estimate: single value estimate of a parameter

Interval estimate: range of values believed to contain the parameter
-​ provide a measure of uncertainty
-​ more information than point estimate
-​ ‘range of plausible values’
-​ can be used for estimation and testing

Frequentist statistics: confidence interval
-​ constructing a confidence interval around a point estimate
-​ we need
-​ point estimate (the sample mean, x)
-​ SD of point estimate, s
-​ sample size, n
-​ calculate the CI




4
$12.67
Get access to the full document:

100% satisfaction guarantee
Immediately available after payment
Both online and in PDF
No strings attached

Get to know the seller
Seller avatar
mdegroot4
1.0
(1)

Get to know the seller

Seller avatar
mdegroot4 Universiteit Utrecht
Follow You need to be logged in order to follow users or courses
Sold
10
Member since
8 months
Number of followers
0
Documents
3
Last sold
2 weeks ago

1.0

1 reviews

5
0
4
0
3
0
2
0
1
1

Recently viewed by you

Why students choose Stuvia

Created by fellow students, verified by reviews

Quality you can trust: written by students who passed their tests and reviewed by others who've used these notes.

Didn't get what you expected? Choose another document

No worries! You can instantly pick a different document that better fits what you're looking for.

Pay as you like, start learning right away

No subscription, no commitments. Pay the way you're used to via credit card and download your PDF document instantly.

Student with book image

“Bought, downloaded, and aced it. It really can be that simple.”

Alisha Student

Frequently asked questions