Title: Scaling
1Scaling
- Measuring the Unobservable
2Scaling
- Scaling involves the construction of an
instrument that associates qualitative constructs
with quantitative metric units. - Scaling evolved out of efforts to measure
"unmeasurable" constructs like authoritarianism
and self esteem.
Note We are talking about constructed scales
involving multiple items, not a response scale
for a particular question.
3Scaling
- How do we define or capture or measure a
nebulous concept? - By taking stabs from several directions, we can
get a more complete picture of a concept we know
exists but cannot see.
4Scaling
- In scaling, we have several items that are
intended to capture a piece of the underlying
concept. - The items are then combined in some form to
create the scale.
Quite technically, we will talk about scales and
indexes interchangeably. Scales are composed of
items caused by an underlying construct, whereas
indexes are composed of items that indicate the
level of a construct and might be useful together
to predict outcomes.
5Scaling
Graphical depiction of a scale
Latent Variable
Observed Item 1
Observed Item 2
Observed Item 3
Observed Item 4
e1
e2
e3
e4
6Scaling
Form an Index
Observed Item 1
Graphical depiction of an index
Observed Item 2
Observed Item 3
Observed Item 4
7Scaling
- In most scaling, the objects are text statements,
usually statements of attitude or belief.
8Scaling
- A scale can have any number of dimensions in it.
Most scales that we develop have only a few
dimensions. - What's a dimension?
- If you think you can measure a person's
self-esteem well with a single ruler that goes
from low to high, then you probably have a
unidimensional construct.
9Scaling
10Scaling
- Many familiar concepts (height, weight,
temperature) are actually unidimensional. - But, if the concept you are studying is in fact
multidimensional in nature, a unidimensional
scale or number line won't describe it well.
E.g., academic achievement how do you score
someone who is a high math achiever and terrible
verbally, or vice versa? - A unidimensional scale can't capture that type of
achievement.
11Scaling
- Factor analysis can tell you whether you have a
unidimensional or multidimensional scalehelping
you discover the number of dimensions or scales
that exist among a group of variables. - Factor analysis is typically an exploratory
process, but it can be confirmatory. - Exploratory factor analysis helps you reduce data
by grouping variables into sets that tap the same
phenomena.
12Scaling
- Steps in factor analysis (what the computer
does) - Assumes one factor and checks the correlation of
each item with the proposed factor and compares
the proposed inter-item correlations with the
actual inter-item correlations.
Compared with Do they Match?
Proposed Model
Actual Data
Item 1
A
Item 1
Factor Sum of 1,2
B
Correlation
Item 2
A 1s correlation with factor B 2s
correlation with factor By definition, Item 1
2s correlation is A B
Item 2
13Scaling
- Steps in factor analysis (what the computer
does) - If the single concept is not a good model, the
computer rejects one factor and forms a residual
correlation matrix (real 1,2 proposed AB) - Identifies a second concept that may explain some
of the remaining correlation and checks the
proposed inter-item correlation against the real
correlations. - And so on until the correlations match.
14Scaling
- In actuality, factor analysis will give K factors
for K variables. The last residual correlation
matrix will result in zeros. - So, how many factors should you use?
- You could use statistical criteria extract
factors until matrix is not statistically
significant from zero. - Historically, number of factors has been
determined by substantial needs, intuition, and
theory.
15Scaling
- Guideline for subjective analysis A group of
factors should be able to explain a high
proportion of total covariance among a set of
items. - Eigenvalue test
- Scree Test
16Scaling
- Eigenvalues
- An eigenvalue represents the number of units of
information that a factor explains in a k set of
variables with k units of information. - E.g., when k 10, an eigenvalue of 3 represents
30 of information is explained by the factor. - An eigenvalue of 1 corresponds with a variables
worth of information. Therefore, factors with an
eigenvalue of 1 or less do not help to reduce
data. - Get rid of factors with eigenvalues less than 1
17Scaling
- Scree Test
- Most researchers are looking for stronger, fewer
factors (they want to reduce data). Therefore,
they tend to use the scree plot. - Plot the eigenvalues relative to each other
- Strong factors form a steep slope, weaker factors
form a plateau - Retain those factors that lie above the elbow
of the plotlike with gangrene, cut off the
elbow!
2 1
Scree plot for 5 variables
18Scaling
- In addition, factors should be composed of
similar, logically linked items. This is an
especially helpful rule when the number of
factors is not that obvious.
19Scaling
- Factor Rotation
- Factor rotation involves using an algorithm to
maximize the correlation of items to a
factormaking each item appear most relevant to a
single factor. - The point is to identify variables that most
similarly form indicators of the same factoreach
factors variables being most clearly highlighted.
20Scaling
- Factor Rotation
- The best-scenario (never happens) is when all
items load (correlate with) as 1 on a single
factor and 0 on all the rest. This is called
simple structure. - Factor rotation mathematically takes the items as
close as possible to simple structure.
21Scaling
- Factor Rotation
- Orthogonal versus oblique rotation
- Orthogonal rotation makes factors completely
independent of each other. - This is preferred for finding the most unique
factors. Use if factors ought not be related. - Any items variation explained by one factor can
be added to that of another factor to get the
total variation explained by the two. - If you find lots of cross-loading, you should
consider Oblique. - Oblique rotation makes factors that are allowed
to be correlated with each other to some degree. - Use if the factors ought to be related.
- There is redundancy in the variation of any item
explained by one factor versus another, such that
they have overlapping explanatory power. - You might want to try both and look for simple
structure. - Strong loadings on two factors may indicate a
single factor, high correlation of two factors
may indicate a single factor.
22Scaling
- Factor Rotation
- Items with a high loading on (high correlation
with) a factor form the factors variable for
research purposes. - Common elements of the items is likely what the
factor represents.
23Scaling
- Type of analysis in extracting factors
- Principal components analysis produces specified
proportion of total variance among items
explained. - Common factor analysis produces specified
proportion of shared variance among items
explained. - Bottom line report which you used.
24Scaling
- Exploratory versus Confirmatory Analysis
- Exploratory is that which we have been
discussing. If using exploratory, with new
samples you rediscover a structure in each
sampleyou have persuasive evidence of the
structure. - Confirmatory typically refers to models generated
by Structural Equation Modeling where items are
specified to form a factor in advance. The
question becomes, How well do the data fit a
specified model using statistical inference?
You have to be careful not to overproduce many
meaningless factors.
25Scaling
- Validity and Reliability
- Like other measures, scales and indexes must be
valid and reliable to be useful. - Validity Face, Content, Criterion, Construct
- A particular kind of reliability that is
particularly useful for scales and indexes is
inter-item reliability (internal consistency or
high inter-item correlation) - To the degree that the items are correlated, the
common correlation is attributable to the true
score of the latent variable.
26Scaling
- Inter-item ReliabilityAlpha
- Variation in each item is caused by the latent
variable and error (unique for each) - Common variation is caused by the latent
variable. - Using the variance/covariance matrix, you can see
total variance in the sum of components. - The diagonal (variance) represents unique
variation for each item. - The off-diagonal represents co-variation of
items. This also equals 1 (?Unique/Total)
27Scaling
- Inter-item ReliabilityAlpha
- The off-diagonal represents co-variation of
items. This also equals 1 (?Unique/Total) - To correct for the ways variance/covariance
matrices change with number of items, the formula
above is adjusted by k/k-1, where k number of
items. This constrains alpha to range from 0 to
1. - k ?Unique variance
- ? k 1 ?Total variance
28Scaling
- Inter-item ReliabilityAlpha
- Some characteristics of alpha
- Holding correlation constant, alpha goes up with
more scale items - To improve a scale, look for effect on alpha if
an item were dropped. - Reliability is not good unless it is .65 or
above. Best reliability would be around .9. - Good scales require a balance between reliability
and length.
29Scaling
- Creating a scale
- Determine what you want to measure
- Clarity
- Specificity
- Generate an item pool
- Scales may be generated from 40 to 100 items
- Good reason to reuse scales
- Writing
- Positive and negative items
- Stay on topic
- Avoid lengthy items
- Keep wording simple
- Avoid multiple negatives
- No double-barreled items
30Scaling
- Creating a scale
- Determine format for measurement.
- Response options
- Broad versus narrow
- Review of item pool by experts
- Include scale validation items
- Administer to a development sample
- Evaluate items
- Differences between items
- You need item variance
- Look for means in the middle of the scale
- Item-scale correlations