Transcript Descriptive
+
Quantitative Analysis:
Supporting Concepts
EDTEC 690 – Methods of Inquiry
Minjuan Wang (based on previous slides)
+
2
Agenda
Quick review of data
Why analysis is necessary – beyond descriptive statistics
The Culture data posted on BB
Descriptive analysis vs. inferential analysis
Review Key Concepts of Descriptive Statistics
Inferential analysis concepts
Types of tests – parametric and non-parametric
What test should I use when?
Next steps for your studies
We will help you with inferential analysis using SPSS or other
+
3
Our Special Guests:
Types of Analysis
Descriptive statistics
Correlation
Measuring a relationship
between studied variables
Inferential statistics
Inferences from a studied
sample to a population
Parametric analyses
Nonparametric analyses
+
4
What is measurement?
Measurement: process of
assigning numbers, according
to rules defined by the
researcher.
The numbers are assigned
to events or objects, such as
responses to items, or to
certain observed behaviors
Correspondence between
event/objective/behavior
and number is defined by
the researcher
+
5
Types of Measurement Scales
Nominal
Ordinal
Involves order of the scores/ratings on some basis (e.g., attitude
toward the government)
Interval
Categorization, no implied order (e.g., sex, eye color)
Unit interval is the same across the scale, doesn’t necessarily
begin at zero (e.g., time, test score)
Ratio
Equal unit with a true zero point (e.g., the government
expenditures; birth weight in pounds)
+
6
Let’s Practice!
GRE test
Celcius temperature scale
Kelvin temperature scale
Football jerseys
IQ tests
Grade Point Average
Economic status as High, Middle, or Low
Number of siblings
+
Descriptive
Statistics
+
8
Descriptive statistics
A
mathematical summary
of the data is required
Paints a picture of your data
Provides the necessary
background and foundation for
interpretation
But
descriptive data falls
short
A frequency count, constructing
histograms or a graph – they’re
not enough in most research
reports
+
9
Descriptive statistics
Describing
a
distribution of scores
To provide information
about its location, dispersion,
and shape
Mean, median
Standard
mode
deviation
Normal distribution
(i.e., bell shape or skewed)
+
10
Shapes of distribution (single variable)
Distributions with like
central tendency (means)
but different variability
Distributions with like
variability but different
central tendency (means)
Frequency distribution--Normal Curve (Figure
12.2, p. 445)
Many statistics assume the normal, bellshaped curve distribution for scores.
50% > mean; 50% < mean
Normal curve for population (height, weight, IQ scores)
Mean=median=mode
Mean + 1SD/34.13% of the score
Mean – 1SD/34.13% of the score
Mean +/- 3SD = more than 99% of the score
11
Skewed Distribution
Non-symmetrical distribution
Mean, median, mode not the same
Negatively skewed (Figure 12.3, p. 447)
extreme scores at the lower end
Mean < median <mode
most did well, a few poorly
Positively skewed
at the higher end
Mean >median >mode
Most did poorly, a few well
Colorado Mountain: Ski to the right->skew to the right
The further apart the mean and median, the more
the distribution is skewed.
12
Describing-Variability
Standard Deviation [or dispersion] (average
distance from the mean)
1 sd includes 34% above and below mean
2 sd includes 47.5% above and below mean
3 sd includes 49.9 % above and below mean
SD chart by Kathleen Barlo
URL:
http://edweb.sdsu.edu/eet/Articles/standarddev/index.h
tm
13
Using SD in Prescribing Cereal
As a practicing nutritionist, Dr. Green frequently
came across patient questions like "what is the
cereal that are within my diet in terms of calories
and fat grams?"
Dr. Greenly uses descriptive statistics to give advise.
Launch Cereal data
Draw frequency histogram
Fruit loop calories: SD=+2
Give it to someone who is trying to lose 10 lbs?
14
Predicting Height: Normal Distribution
Mean Height
SD
Monday
67.9”
3.56”
Tuesday*
68.0”
3.6”
Both Sections
68.0”
3.5”
From this sample of 30 adults, the average height of
is 68.0 inches or 5 feet 10 inches tall and that 99%
of all adults fall in between the height of ??? And ???
15
Measure of relative standing
Z-score
One type of standard scores
Compares scores from different tests
Convert scores to z scores, average them->final index of
average performance
Z= Raw Score (X)-Mean/SD
Z score of mean = 0
Percentiles
The percentage of scores that fall at or below a given score
Outliers
Example
GRE
16
+
17
Correlation (relationship between two variables)
The
correlation
coefficient is a
measure of the
relationship between
two variables.
It
can vary from -1.00
to +1.00. Zero
indicates no
relationship.
Describing-Relationships
How variables are related--need at least 2
variables
Spearman rho
coefficient correlates data that are ranked
Pearson r
correlates data that are interval or ratio
How does foot size correlate to GRE scores?
Scores go from +1 to -1
More in “Correlational Research”
18
Mini-Data Activity (After Spring break)
Salary Data
Culture Data
When you are
not heavily
cognitively
overloaded…..
19