Multinomial Processing Tree Models - PowerPoint PPT Presentation

About This Presentation
Title:

Multinomial Processing Tree Models

Description:

Data-analysis tool capable of disentangling and measuring separate contributions ... fashion, then the model gains credence as a valid measurement tool' (p. 82) ... – PowerPoint PPT presentation

Number of Views:88
Avg rating:3.0/5.0
Slides: 28
Provided by: andrew221
Learn more at: http://people.umass.edu
Category:

less

Transcript and Presenter's Notes

Title: Multinomial Processing Tree Models


1
Multinomial Processing Tree Models
2
Agenda
  • Questions?
  • MPT model overview.
  • MPT overview
  • Parameters and flexibility.
  • MPT Evaluation
  • Batchelder Riefer, 1980.
  • Assignment 1 solution(s).
  • Math for next week.
  • Assignment 2 problem statement.

3
Uses of MPT Models
  • Data-analysis tool capable of disentangling and
    measuring separate contributions of different
    cognitive processes.
  • Provides a means for separately measuring latent
    processes that are confounded in observable data.
  • Framework for developing and testing quantitative
    theories.

4
Purview of MPTs
  • Categorical data each observation falls into one
    and only one of a finite set of categories.
  • Example 1 Correct or incorrect.
  • Example 2 Reaction time lt 100, 100 RT lt 200,
    200 RT.

5
Multinomial Distribution
  • Consider a die with sides 1, 1, 1, 2, 2, 3.
  • If we roll the die 10 times, what is the
    probability we get five 1s, three 2s, and two
    3s?

6
Multinomial Distribution
  • In general,
  • Inverse goal is to determine the pis given the
    nis.

7
Statistical vs Explanatory
  • Multinomial models (log-linear, logit) are
    statistical.
  • The parameters are used to explore main effects
    and interactions.
  • MPT models are explanatory.
  • The parameters of the MPT model represent the
    underlying psychological processes.

8
MPT Models
9
MPT Models
  • The probability of each process state change is
    represented by a parameter.
  • The parameters range from 0 to 1.
  • The parameters are independent.
  • There are other restrictions

10
MPT Models
  • The response probabilities are given by
    polynomials, e.g., P(E1)cr.
  • The parameter estimators (and other important
    properties) are easy to find.

11
Estimators
  • A parameter is a descriptive measure in a model
  • E.g., a is a parameter the describes how quickly
    the line increases in yaxb.
  • An estimator is a function on the data that gives
    a parameter estimate, usually denoted with a hat,
    รข.
  • E.g., given some data, get an estimate of how
    quickly the linear trend increases.
  • Estimators are usually picked to minimize the
    discrepancy between the predictions and the data.

12
Parameters and Flexibility
  • As a rule of thumb, a model should have fewer
    parameters than degrees of freedom in the data.
  • This model is saturated.

p1
C1
Cond Data Model
1 .2 .2
2 .4 .4
3 .9 .9
C2
p2
p3
C3
13
Parameters and Flexibility
  • In general, the more parameters, the more
    flexible the model.

yaxb
yb
14
But
1 parameter
2 parameters
15
Further
  • It is not always easy to count parameters.

16
Parameters and Flexibility
Possible Events
  • A more restricted a model is
  • usually simpler.
  • usually easier to interpret.
  • usually more falsifiable.

Observed Events
Model 1
Model 2
17
Nested Models
  • Models 2 and 3 are submodels (nested in) Model 1.
  • Models 2 are 3 are NOT nested.
  • The main benefit of nested models is that it
    makes it relatively easy to compare the
    goodness-of-fit of the two models.

18
Parameters and Flexibility
  • What is important is the flexibility of the model
    relative to
  • the data.
  • competing models.

19
Identifiability
  • The parameters in a model are identifiable if
    there is a unique set of parameters that give
    rise to the model predictions.
  • Identifiability is especially desirable if the
    parameter values are to be interpreted.

vs
20
Batchelder and Modeling
  • The assumption is clearly an approximation,
    but one that greatly simplifies the analysis of
    the model and still allows the model to reflect
    the main processing stages of the task (p. 59).

21
Batchelder and Modeling
  • there is usually a large number of parameters
    used to account for a small number of categories,
    leaving few, if any, degrees of freedom for
    testing the models fitHowever, it is the
    measurement of the cognitive processes in the
    form of parameter estimates, and not the
    data-fitting capacity, that characterizes the
    usefulness of MPT models (p. 81-82).

22
Batchelder and Modeling
  • there will often be psychologically
    uniterpretable MPT models that nevertheless fit a
    given set of data well. Thus, the process of
    developing a valid model requires that one fit a
    number of data sets in the same paradigm and that
    the resulting parameter estimates be
    interpretable in terms of the underlying
    processing assumptions (p. 76).

23
Batchelder and Modeling
  • Each MPT model is at best an approximation to a
    complete process description of categorical data,
    and the task of the modeler is to select the most
    important processes and capture them in a valid
    way (p. 75).

24
Batchelder and Modeling
  • the process of developing a valid model
    requires that one fit a number of data sets in
    the same paradigm and that the resulting
    parameter estimates be interpretable in terms of
    the underlying processing assumptions (p. 76).

25
Batchelder and Modeling
  • an even more crucial test of a models validity
    is to show that the model performs well under
    basic experimental manipulations. If the models
    parameters behave in a psychologically
    interpretable fashion, then the model gains
    credence as a valid measurement tool (p. 82).

26
Batchelder and Modeling
  • an acceptable MPT model must not only be able
    to fit data but its parameters must be globally
    identifiable, must be psychologically
    interpretable, and must pass appropriate
    validation experiments (p. 78).

27
Batchelder and Modeling
  • there are many models for categorical data that
    are not in the MPT class. If one of these models
    accounts for data in a a particular paradigm,
    then, technically one can infer that the MPT
    class is falsified in that paradigm. Of course,
    it may be possible to design an MPT model that
    closely mimics or approximates the successful
    fits of the non-MPT model thus, it may be
    difficult to argue that the MPT framework is
    falsifiable in practice (p. 78).
Write a Comment
User Comments (0)
About PowerShow.com