Title: Jargon
1Jargon Basic Concepts
- Howell
- Statistical Methods for Psychology
2Questions
- Define and illustrate
- Population, Sample
- Parameter, Statistic
- Descriptive, inferential statistics
- Random selection (sampling), assignment
- Internal, External validity
- Discrete, continuous variables
- Scale types (nominal, ordinal, interval, ratio)
3Population vs. Sample
- Population collection of all the objects of
interest to researcher (you). - College students, students at USF
- Sample subset of objects from the population
- Want a representative sample
- Samples are relatively practical
- Random samples have good properties
- One persons sample is anothers population
4Parameter vs. Statistic
- Parameter numerical summary of population
- E.g., mean, standard deviation
- Statistic numerical summary of sample
- E.g., mean, standard deviation
- Typically we compute statistics and estimate
parameters using statistics.
5Descriptive vs. Inferential
- Descriptive statistics describe a sample
- How tall are these students?
- Inferential statistics use sample statistics to
make decisions about populations. - Is one method of instruction better than another?
6Random Select Assign
- Random selection is a process of picking a sample
from a population so that each element has the
same probability of being sampled. - E.g., lottery, every 3rd name from a list (this
is actually a systematic sample but its good) - Random assignment is assignment to treatment so
that each element has an equal probability of
being assigned to each treatment. - E.g., lottery, every other name, etc.
- Both are typically accomplished by lists (aka
frames) and computer generated numbers (e.g., SAS
PROC PLAN)
7Internal, External Validity
- Internal validity - quality of inferences about
the study itself. Random assignment, history,
maturation, etc. - External validity quality of inferences from
the study to the larger domain of interest.
Representative sample of participants, task
relevance, behavioral consequents, etc. Aka
generalizability of the results (but not
generalizability study).
8 Variable Distribution
- Variable vs. constant
- Attribute either varies across objects or not
- Distribution Collection of data
- Distribution Array of scores
- Height
- Beck Depression Index
- Rat bar press
- Wonderlic
9Discrete vs. Continuous
- Math
- Integer vs. real numbers
- Data
- Categorical vs. continuous (many valued, ordered)
- Examples
- Political party, job satisfaction, response time,
country of origin
10Scale types
- Nominal, ordinal, interval, ratio
- Nominal categories. No ordering mean has no
connection to attributes - Ordinal rank order only
- Interval rank order plus equal interval. ratio
of differences has meaning - Ratio rank order, equal intervals, rational
zero point. Ratio of numbers has meaning.
11Scale Types Footrace review
Nominal Ordinal Interval Ratio
ID number Rank order of finish Time of day of finish Elapsed time from start
043 1 1057 a.m. 4 min
011 2 10.59 a.m. 6 min
136 3 1101 a.m. 8 min
112 4 1102 a.m. 9 min
086 5 1104 a.m. 11 min
12Review
Find a partner to work on this exercise. Suppose
you want to know whether one brand of tennis shoe
is better than another. You have about 10K from
a grant to study this. Describe a study you might
conduct to find out. What might be your
population, sample, independent and dependent
variables? What statistics might you want to
compute? Never mind the actual statistical test
at this point. What data would you gather? What
might a critic say about the internal and
external validity of your study? What scale
types are your IV and DV?