Multiple linear indicators - PowerPoint PPT Presentation

1 / 35
About This Presentation
Title:

Multiple linear indicators

Description:

... to accomplish before Friday things that you can't really put off. ... For each extra laugh, we assume the person thought the joke was one unit more funny ... – PowerPoint PPT presentation

Number of Views:46
Avg rating:3.0/5.0
Slides: 36
Provided by: ChrisF7
Category:

less

Transcript and Presenter's Notes

Title: Multiple linear indicators


1
Multiple linear indicators
  • A better scenario, but one that is more
    challenging to use, is to work with multiple
    linear indicators.
  • Example Attraction

2
We assume that when someone is attracted to
someone else (a latent variable), that person is
more likely to have an increased heart rate, talk
more, and make more phone calls (all observable
variables).
heart rate
talking
phone calls
attraction
lets assume an interval scale ranging from 4
(not at all attracted) to 4 (highly attracted)
3
We assume that each observed variable has a
linear relationship with the latent
variable. Note, however, that each observed
variable has a different metric (one is heart
beats per minute, another is time spent talking).
Thus, we need a different metric for the latent
variable.
4
Allow the lowest measured value to represent the
lowest value of the latent variable
100
80
60
Observed
Allow the highest measured value to represent the
highest value of the latent variable
40
20
The line between these points maps the
relationship between them
0
-4
0
4
Latent
5
Now we can map the observed scores for each
measured variable onto the scale for the latent
variable. For example, the observed heart rate
score of 120 maps onto an attraction score of 2.
Ten-minutes of talking maps onto an attraction
score of zero. Thirteen phone calls maps to a
high attraction score of 3. (Russ on The
Bachelorette)
6
This mapping process provides us with three
estimates of the latent score 2, 0, and 3.
Because we are trying to estimate a single number
for attraction, we can simply average these three
estimates to obtain our measurement of
attraction. In this example (2 0 3)/3
5/3 1.67 (somewhat attracted)
7
Multiple linear indicators
  • Advantages
  • By using multiple indicators, the uniqueness of
    each indicator gets washed out by what is common
    to all of the indicators. (example heart rate
    and running up the stairs)
  • Disadvantages
  • More complex to use
  • There is more than one way to scale the latent
    variable, thus, unless a scientist is very
    explicit, you might not know exactly what he or
    she did to obtain the measurements.

8
Multiple linear indicators Caution
  • When using multiple indicators, researchers
    typically sum or average the scores to scale
    people on the construct
  • Example
  • (time spent talking heart rate)/2 attraction
  • Person A (2 80)/2 82/2 41
  • Person B (3 120)/2 123/2 62

9
Multiple linear indicators Caution
  • This can lead to several problems if each
    manifest variable is measured on a different
    scale.
  • First, the resulting metric for the latent
    variable doesnt make much sense.
  • Person A 2 minutes talking 80 beats per minute
  • 41 minutes talking/beats per minute???

10
Multiple linear indicators Caution
  • Second, the variables may have different ranges.
  • If this is true, then some indicators will
    count more than others.

11
Multiple linear indicators Caution
  • Variables with a large range will influence the
    latent score more than variable with a small
    range
  • Person Heart rate Time spent talking
    Average
  • A 80 2 41
  • B 80 3 42
  • C 120 2 61
  • D 120 3 62
  • Moving between lowest to highest scores matters
    more for one variable than the other
  • Heart rate has a greater range than time spent
    talking and, therefore, influences the total
    score more (i.e., the score on the latent
    variable)

12
Mapping the relationship by placing anchors at
the highest and lowest values helps to minimize
this problem
Observed
Preview Standardization and z-scores
Latent
13
Some more examples
  • Lets work through a detailed example in which we
    try to scale people on a latent psychological
    variable
  • For fun, lets try measuring stress Some people
    feel more stressed than others
  • Stress seems to be a continuous, interval-based
    variable
  • What are some indicators of stress?

14
Some possible indicators of stress
  • Hours of sleep
  • Number of things that have to be done by Friday

15
Operationalizing our indicators
  • We can operationally define these indicators as
    responses to simple questions
  • Compared to a good night, how many hours of
    sleep did you lose last night?
  • Please list all the things you have to
    accomplish before Fridaythings that you cant
    really put off.
  • Note that each of these questions will give us a
    quantitative answer. Each question is also
    explicit, so we can easily convey to other
    researchers how we measured these variables.

16
Operationally defining the latent variable
6
4.2
2.4
Observed Hours of Lost Sleep
-.6
-1.2
-3
Latent Stress Level
17
Operationally defining the latent variable
15
12.6
10.2
Observed Things to do
7.8
5.4
3
Latent Stress Level
18
Estimating latent scores
19
Summary
  • Recap of what we did
  • Determined the metric of the latent variable
  • Identified two indicators of the latent variable
  • Mapped the relationship between the latent
    variable and each observed variable
  • Using this mapping, estimated the latent scores
    for each person with each observed variable
  • Averaged the latent score estimates for each
    person

20
Multiple linear indicators
  • By mapping the measured variables explicitly to
    the latent metric, we can avoid some of the
    problems that emerge when variables are assessed
    on very different metrics

21
Multiple linear indicators
  • When the indicators are on the same metric (e.g.,
    questionnaire items that are rated on a 1 to 7
    scale), the process of estimating the latent
    score is easier, and researchers often use the
    manifest metric as the latent metric and average
    the observed scores to obtain a score on the
    latent variable.

22
Operational Definitions
  • In our last class, we discussed (a) what it means
    to quantify psychological variables and (b) the
    different scales of measurement used for
    categorical and continuous variables.
  • However, we deliberately side-stepped an
    important question How do we determine what
    matters when we try to measure a variable?

23
Simple Example
  • Lets consider a relatively simple example Lets
    try to measure crying.
  • Before we can do so, we need to decide what
    counts as crying behavior.
  • What examples come to mind?

24
Definition of an Operational Definition
  • It is critical that the set of rules, or
    operations, that we use to measure a behavior be
    explicit and as clear-cut as possible.
  • These rules, or operations, constitute the
    operational definition of a variable.

25
Complex Example
  • Now lets consider a more complex variable the
    experience of humor.
  • Whether or not someone finds something funny is a
    much more challenging (i.e., less tangible) thing
    to measure than crying.
  • In-Class Example Two sets of operational
    definitions, and three students listening to
    jokes.

26
Important Distinction
  • Latent vs. Observed variables
  • An observed variable, like crying, is behavioral
    and, therefore, directly observable.
  • A latent variable or construct is not directly
    observable. Instead, it is inferred from
    variables that can be observed.

27
Measuring Latent Variables
  • Latent variables can be measured, but their
    measurement is much more complicated than that of
    observed variables.
  • The first thing we need to do is identify,
    usually on an intuitive or theoretical basis, the
    scale of the latent variable. Is it categorical
    or continuous? If continuous, should we scale it
    on an interval metric or a ratio metric?
  • Next, we need to identify the indicators of the
    latent variable (i.e., the observable
    consequences or manifestations of the latent
    variable).

28
Measuring Latent Variables
  • Lets answer the following question Someone who
    finds something funny should be likely to behave
    in the following ways __________.
  • These things (e.g., laughing)which also need to
    be operationally definedcan be considered
    observable indicators of the unobserved state of
    finding something humorous.

29
Measuring Latent Variables
  • So, to operationally define a latent variable, we
    need to (a) specify the scale of the variable,
    (b) identify the observable manifestations of
    that latent variable, and (c) operationally
    define those observable manifestations.
  • Next, we need to know how the operational
    definitions of the observable variables map onto
    the latent variable.

30
Mapping
  • Mappingspecifying the relationship between the
    latent and manifest variabletends to be handled
    differently by different researchers.
  • Two considerations
  • How many indicators to use?
  • Can we assume a linear relationship between the
    measured variables and the latent variable?

31
(No Transcript)
32
How many indicators?
1
One
Multiple linear indicators (Simple)
Equivalence relation (Simplest)
Linear
Mathematical Mapping
Multiple non-linear indicators (Very Complex)
Single non-linear relationship (Complex)
Nonlinear
33
Equivalence Relationship
  • Simplest case The equivalence relationship. In
    this case, we use one indicator and assume that
    the relation between the latent variable and the
    manifest variable is linear. The scale of the
    latent variable is identical to the scale chosen
    for the manifest variable.
  • Example We may operationally define laughing,
    and then measure humor as if it is equal to
    laughing.

34
For each extra laugh, we assume the person
thought the joke was one unit more funny Someone
who laughs 8 times would get a humor score of 8.
Laughing
Humor
35
Equivalence Relationship
  • Advantages
  • Explicit and straight-forward
  • Doesnt require complicated mathematics
  • Other researchers can easily determine what you
    did
  • Disadvantages
  • Behaviors are influenced by many things. Thus,
    part of what youre measuring may be unrelated to
    the latent variable of interest.
  • Latent variables manifest themselves in a variety
    of ways. By focusing on one variable, our
    measurements are not as rich or compelling.
Write a Comment
User Comments (0)
About PowerShow.com