Title: Literature
1Literature
- Rijmen, F., Tuerlinckx, F. De Boeck, P.,
Kuppens, P. (2003). A nonlinear mixed model
framework for item response theory. Psychological
Methods, 8, 185-205. - De Boeck, P., Wilson, M. (Eds) (2004).
Explanatory Item Response Models A Generalized
Linear and Nonlinear Approach. New York Springer.
2Dataset 1Verbal aggression
- 316 persons filled out a behavioral questionnaire
on verbal aggression (Vansteelandt, 2000 Smits,
De Boeck, Vansteelandt, 2004 ) - 24 items
- E.g. A bus fails to stop for me. I would curse.
- No 0 0
- Perhaps 1
- Yes 2
1
3Item design
- Item were a combination of three design factors
- situation type other-to blame versus
self-to-blame - A bus fails to stop for me
- I miss a train because a clerk gave me faulty
information - The grocery store closes just as I am about to
enter - The operator disconnects me when I had used up my
last 10 cents for a call -
4- Behavior
- A bus fails to stop for me. I would curse.
- A bus fails to stop for me. I would scold.
- A bus fails to stop for me. I would shout.
- Behavior mode Want vs. Do
- A bus stop fails to stop for me. I would want to
curse - A bus stop fails to stop for me. I would curse
- Full factorial item design 43224
- situations nested within Situation Type
2(2)32
5Person p
6Person covariates
- Gender (243 females, 73 males)
- Trait Anger score (M 20 SD 4.85)
7Leading questions
- What is the effect of the item design factors?
- Self vs. Other-to-blamemore verbal aggression if
other-to-blame? - Do vs. Wantverbal aggression inhibited?
- Behaviorpopularity of behaviors?
- What is effect of person variables?
- Men vs. Women are men more verbally
aggressive? - Degree of Trait Anger is the tendency of a
person to react in a verbally aggressive way
related to trait anger?
8Leading questions
- What is the effect of the item design factors?
- Self vs. Other-to-blamemore verbal aggression if
other-to-blame?Do people differ in sensitivity
to others faults? - Do vs. Wantverbal aggression inhibited?Do
people differ in inhibition? - Behaviorpopularity of behaviors?Do people have
verbally aggressive styles? - In other words,are individual differences in
verbal aggression adequately captured by a single
underlying dimension, a tendency to react in a
verbally aggressive way? Or are more dimensions
needed?
9Dataset 2 self-report study on anger
- 510 persons filled out a behavioral questionnaire
on anger feelings (Kuppens, 2002) - 24 aversive situations. For example
- Someone broke your bike
- A member of your family is ill
- You are home and alone
- Your beloved shows more interest for someone else
- To which degree would you become angry?
- 4-point scale 0 1 2 3
-
10Item covariates
- A second group of 25 persons rated the 24
situations with respect to a set of situational
characteristics - Mean ratings (over persons) can be used as item
covariates - (some) situational characteristics
- Amount of control over the situation
- Predictability of situation
- Consequences for oneself
- Consequences for a third person
- Loss experience
11Person covariates
- Trait Anger score (M 1.3 SD 0.6)
- Self-esteem score (M 1.8 SD 0.6)
- Gender (179 females, 331 males)
12Leading questions
- What is the effect of the item covariates?
- E.g. does one show more anger when there are
important consequences for oneself? - Is the effect of an item covariate constant over
persons? - Are individual differences adequately captured by
a single underlying dimension for anger? Or are
more dimensions needed? - What is the effect of person covariates?
- E.g. Do persons with a low self-esteem become
more easily angry?
13Multiple person dimensions
14overview
- Multidimensional extension of the Rasch model
- Between- and within-item multidimensionality
- Item factor analysis
- Multidimensional extension of the LLTM
15Multidimensional extension of the Rasch model
- Rasch model mixed logistic regression model
with - Random intercept
- Item indicators as predictors (separate
regression weight for each item) - Linear predictor
- ?p is a latent variable, an underlying dimension
that reflects quantitative individual differences - Tendency to react in a verbally aggressive way
- Tendency to become angry
16- The Rasch model is a unidimensional model
- Assumption all items are located on the same
dimension, they measure the same construct - Verbal aggression data if person 1 has a higher
probability than person 2 to shout in one
situation, person 1 has a higher probability to
shout in all other situations as well - Anger data if person 1 has a higher probability
than person 2 to become angry in one situation,
person 1 has a higher probability to become angry
in all other situations as well
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18 - Extension vector of
latent variables - Linear predictor
- Xri (Xri1,,XriKr) specifies to which extent
item i is measuring each of the Kr dimensions
19Between- and within-item multidimensionality
- Between-item multidimensionality
- test consists of several subtests, each measuring
a separate dimension - An item loads on one dimension only Xri is
indicator vector - Subtests are unidimensional
- E.g. Verbal aggression data separate dimensions
for do-items and want-items. Person 1 might want
to shout to a higher degree than person 2, but
shouts less (individual differences in
inhibition).
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21 - Within-item multidimensionality
- The test measures multiple dimensions
- An item can load on more than one dimension
- E.g. anger study whether one becomes angry in an
aversive situation might depend on two
dimensions - The tendency to become angry
- Tendency to inhibit socially undesirable behavior
- can be thought of as a weighted sum of the
locations of the item on the individual
dimensions -
22 23- Verbal-aggression data
- Between-item twodimensional model
- Separate dimensions for do and want items
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25- Wanting is more likely than doing
- Cursing is the most likely behavior, shouting the
least likely - Correlation between dimensions .78
- Rasch model is nested within two-dimensional
model, LR(12) 92, p lt .001
26Item factor analysis
- Often, one cannot specify apriori to which extent
an item is loading on each of the dimensions - Item factor analysis elements of Xri are
unknown. - Estimate loadings from the data
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28Multidimensional extension of the LLTM
- Linear logistic test model mixed logistic
regression model with - Random intercept accounts for person main
effects - item properties as (item) predictors account
for item main effects - Linear predictor
29 30- Interactions between item property and persons
are not taken into account by the LLTM (parallel
slopes) - But often of central interest
- E.g. anger study
- Consequences for oneself is an item property
- Its effect on anger might depend on the person
- Interaction between an item property and persons
31- Random weights LLTM
- Multidimensional extension of the LLTM
- Allows for person-specific regression weights for
(some of) the item properties - Random intercept and slope(s)
- Linear predictor
32 33- Anger data (dichotomised)
- Random weights LLTM
- Fixed effects
- Amount of control over the situation
- Predictability of situation
- Consequences for oneself
- Consequences for a third person
- Random effects
- Intercept
- Consequences for oneself
34Results
35- Tendency to show anger increases when
- Less control over the situation
- More predictability of situation
- More consequences for oneself
- More consequences for a third person
- Need for a random slope for consequences for
oneself? - LLTM is not rejected when tested against RWLLTM
36Polytomous data
37overview
- Common use of polytomous data
- Recoding the data
- Multivariate extension of the generalized linear
mixed model - Distribution
- Link function
- Linear predictor
- Specifying the link function
- Applications
38Common use of polytomous data
- data are often polytomous or multicategorical
- A bus fails to stop for me. I would scold.
- No
- Perhaps
- Yes
- Someone broke your bike. To which degree would
you become angry? - Not angry at all
- Slightly angry
- Angry
- Very angry
39- Solve for x x2 4
- 16 (wrong)
- 2 (partially correct)
- 2, -2 (correct)
- I consider myself to be a
- Liberal
- Socialist
- Conservative
- Categories can be ordered or nominal
- Only one response category can be chosen
40How to handle polytomous data?
- Dichotomize the data
- Loss of information
- Treat data as if continuous
- Not possible for nominal data
- Data are treated as if on a metrical scale (equal
distances between categories) - Data are often far from normal (inflated
zero-category)
41You are home alone and bored (anger data)
42How to handle polytomous data?
- Dichotomize the data
- Loss of information
- Treat data as if continuous
- Not possible for nominal data
- Data are treated as if on a metrical scale
- Data are often far from normal (inflated
zero-category) - Treat the data as they are polytomous
43Recoding the data
- Ypi m response of person p to item i is m
- p 1,,P
- i 1,,I
- m 0,,Mi-1 Mi categories
- Without loss of generality Mi M for all i
- Ypi can be recoded into a vector Cpi of Q M-1
dummy variables
44- Example verbal agggression data
- 3 response categories (M 3) recoded into 2
dummies (Q 2) - Response Ypi Cpi1 Cpi2
- No 0 0 0
- Perhaps 1 1 0
- Yes 2 0 1
- For simplicity M3 for the remainder
45Multivariate extension of the generalized linear
mixed model
- Distribution
- Link function
- Linear predictor
46Multivariate extension of the generalized linear
mixed model distribution
- Dichotomous outcomes Bernoulli (binomial with
total count equal to one) - Bernoulli distribution belongs to the exponential
family
47- Polytomous outcomes multivariate Bernoulli
(multinomial with total count equal to one)
48- Multinomial distribution is member of
multivariate exponential family - Mean Vector of probabilities
- Variance
49Multivariate extension of the generalized linear
mixed model link function
- Dichotomous outcomes single-valued link function
transforms the mean into the linear predictor - Polytomous outcomes vector-valued link function
transforms the mean vector into the linear
predictor vector - Several vector-valued generalizations of
single-valued link functions possible
50Multivariate extension of the generalized linear
mixed model linear predictor
- Dichotomous outcomes
- For simplicity only item predictors
51 52Predictor types
- Dichotomous outcomes
- Person predictors
- Item predictors
- Person-by-item-predictors
- Polytomous outcomes
- Person predictors
- Item predictors
- Category(-contrast) predictors
- Person-by-item-predictors
-
53Specifying the link function
- Focus logit link
- Logit link for dichotomous outcomes can be
generalized in different ways - Baseline-category logits nominal data
- Adjacent-category logits
- Cumulative logits ordinal data
- Continuation-ratio logits
- Generalized logits reduce to the regular
single-valued logit when the data have only two
categories - Each logit type comes with its own interpretation
54Baseline-category logits
- qth baseline-category logit is the log odds of
category q versus category 0 (baseline-category) - All categories can be chosen as baseline
category, but category 0 is often a reasonable
choice
Pr(Ypi0)
55 56Adjacent-category logits
- qth adjacent-category logit is the log odds of
category q versus category q-1
Pr(Ypi0)
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58- Adjacent-category logits can be expressed as
baseline-category logits
59Cumulative logits
- qth cumulative logit is the log odds of category
q or higher versus a category lower than q
Pr(Ypi gt1)
Pr(Ypilt1)
Pr(Ypi gt2)
Pr(Ypi lt2)
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61Continuation-ratio logits
- qth continuation-ratio logit is the log odds of
category q versus a category lower than q
Pr(Ypilt1)
Pr(Ypi lt2)
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63Verbal agression data partial credit model and
rating scale model
- Partial credit model (Masters, 1982)
- Random intercept
- Adjacent-category logit
- Item-by-category-contrast interactions (Item by
category-contrast predictors) - Linear predictor
- value of where probabilities of
responding in category q-1 and q are equal
(category crossing parameter) -
64Figuur 1
65- Inverting the link function gives the
probabilities
66Figuur 3.4
67- Rating scale model (Andrich, 1978)
- Random intercept
- Adjacent-categories logit
- Item and category-contrast predictors
- Linear predictor
- Restricted PCM
- Category crossings are at the same distance apart
from each other for all items
68- PCM or RSM ?
- LR(23) 52, plt.001
69- Inclusion of gender and trait anger as person
predictors - Latent regression
- GENDER 1 for men, and 0 for women
- Linear predictor
70- LR(2)29, plt.001
- Odds for responding responding perhaps rather
than no ( yes rather than perhaps ) are
exp(0.28)1.3 times higher for men - Increase of 1 SD in Trait Anger multiplies
adjacent-categories odds with exp(4.850.06)1.3
71- Analoguous to the linear logistic test model for
dichotomous outcomes - Category crossings can be modelled as a weighted
sum of item predictors -gt Linear PCM - Item locations of a RSM can be modelled as a
weighted sum of item predictors -gt Linear RSM
72Conclusion
- The generalized (nonlinear) mixed model for
dichotomous outcomes can be extended to the
multivariate generalized (nonlinear) mixed model
for polytomous outcomes - Different link functions can be specified,
depending on which sets of categories are
contrasted with each other - Familiar IRT models for polytomous data can be
understood as multivariate generalized
(nonlinear) mixed models for polytomous outcomes - This way, extensions are easily incorporated