Title: Index Cards
1Index Cards
- Name
- Major
- Favorite Class Ever, Why
- Areas of Interest in Psychology
- Unique/Bizarre/Little Know fact about you.
- Most exciting event over vacation
- Favorite TV show ever
- Stupidest thing youve ever done
2Small Group Questions
- Name, where youre from
- Best class ever why
- Stupidest thing youve ever done
- Bizarre facts/tricks you can do
3Pop Quiz 1
- 1. Your instructor is from
- Nevada
- New York
- Nebraska
- Minnesota
- East-central Tibet
4Pop Quiz 1
- 2. Your instructor has taught statistics
- Never
- About 10 times
- About 20 times
- About 30 times
- About 40 times
- Way, way too many times
5Pop Quiz 1
- 3. Your instructor was once bitten by a
- Rattle Snake
- Polar Bear
- South American Malting Meek Mouse
- Snapping Turtle
- An oversized freshman
- His wife, after refusing to mow the lawn
6Pop Quiz 1
- 4. Your instructor cant get enough
- Chocolate
- Schlitz Malt Liquor
- Diet Pepsi
- Diet Coke
- Diet Schlitz Malt Liquor
- Prune Juice
- Red Bull
7Pop Quiz 1
- 5. Your instructors 2nd favorite TV show is
- Married with Children
- The Simpsons
- Survivor 5 Downtown Rockhill
- The Daily Show
- Space Ghost
- Seinfeld
- NOVA Deadly Snapping Turtles
8Stats Basics 1st Week Overview
- Course Tips
- Types of Data
- Graphing Distributions
- The Normal Curve
- Graphing Sample Means
- Practicing with SPSS
9Secret Course Tips
- Bulldog Tactics
- Note-taking
- Write Process
- Ask questions!
- Slow me down!
- Homework
- Studying
- Often
- Active
- Self-Explanation
- Practicing SPSS
- Laugh at my jokes!!
- Syllabus
- Office hours
- Engagement Attendance
- Quizzes
- Request for leniency
- Notebook
- Course Packs
- Organization
- Homework, Labs, Reading
- Class time
- Set-up first
- Please avoid surfing
10Make Friends Quickly!!
- Option A Solo
- Every Penguin For Herself!
- Keep the competition down.
- Option B Teamwork!!!
- Ask questions of peers
- Answer questions
- Form study groups
- Practice explaining
11Terminology Samples vs. Populations
- Samples Populations
- Statistics refer to characteristics of samples
- e.g., xbar or M
- always regular alphabet symbols
- Parameters refer to characteristics of
population - e.g. µ
- always greek symbols
- Self-check
- height of several students in class to represent
class - height of class to represent height of typical
undergraduates
12Qualitative vs. Quantitative Data
- Quantitative can be ranked
- shoe size, height, self-esteem score on scale,
airplane lift - Qualitative cant be ranked
- gender, political affiliation, major, car maker
- Check
- Gender
- region
- weight
- depression
- steps
- Social Security Number
- Letter Grade A, B, C, D
13Scales of measurement
- Nominal classify data into categories
(religion) - Ordinal classify and rank (Olympic Medals)
- Interval classify and rank with equal intervals
(Celsius) - Ratio classify, rank with equal intervals, true
zero (Kelvin)
- your residence hall
- batting average
- your rank on moms love list
- height
- IQ
- weight
- Self-esteem (7 point Likert Scale)
- SAT score
- Grade A, B, C, D
- distance
- gender
- gpa
- number of close friends
- social security number
- region of country
- level of depression
14Experimental terms
- Empirical Method Experimental Method
- Question Why do airplanes fly?
- Theory Wings create lift
- Operational Definitions
- IV Wing position (straight, bent up)
levels - DV Lift
- Gathering data
- Careful observation quantification
- Level of measurement use highest possible
- Controlling Extraneous Variables
- Drawing Conclusions
15Experimental terms (2)
- Experimental Terminology
- Independent Variable (e.g., Wing Position)
- Variable you manipulate
- variable you think will impact DV
- Dependent Variable (e.g., Change in Vertical
Position) - Variable that might be affected by IV
- variable you measure
- Extraneous Variable (e.g., drafts, throwing
style) - Any fact that affects the DV other than the IV
- Sources of error we want to STANDARDIZE
conditions to minimize the amount of error - Quasi Experimental Design
- No manipulation of IV
16Experimental terms (3)
- Practice
- Can fat people eat more bacon than skinny people?
- Does B.O. significantly decrease attractiveness?
- Do kids who get hooked on phonics have more
problems with addiction later in life - Do people who study more do better on tests?
17Frequency Distributions
- Definitions
- The values taken on by a given variable
- All the actual data points you obtained for a
given variable - Most basic ways to look at study outcomes
- Quantitative Examples
- The SAT scores for all Winthrop students
- The reaction times for all study participants
- Grades on the first test s of As, Bs, Cs,
Ds - The starting salaries of graduates
- Qualitative Examples
- Favorite TV shows of students in this class
- Residence halls occupied by students in this class
18Representing Frequency Distributions
- Table
- List possible values, and indicate the number of
times each value occurred. - Graphs
- X-axis possible values
- Y-axis of times that value occured
19Graphing Distributions
- Quantitative Data
- Line graphs or Histograms (columns touching)
- Qualitative Data
- Pie charts Bar graphs (columns not touching)
- See SPSS Guide for examples
- Also, you can practice with these datasets on the
website - city sprawl
- bogus winthrop data
- employee data
20A Graph of the Normal Curve
- Hypothetical Frequency Distribution (Line Graph)
- Shows distribution of infinitely large sample
(theoretical) - Symmetrical
- Shows common and uncommon (extreme) scores
- Basis for testing hypotheses
- Percentiles
Population
SAT Scores µ 500
21Normal Curve (with raw and standard scores)
µ
Few Extreme Scores
Few Extreme Scores
22Deviations from Normality
- Ways in which distribution can be non-normal
- Skew
- Positive Skew
- Negative Skew
- Kurtosis
- Platykurtic
- Mesokurtic
- Leptokurtic
- Modality
- Unimodal
- Bimodal (etc.)
23Graphing Sample Means
- One IV Typically use bar-graph
- Two IV Typically use line-graph
24Math Review
- Preparation for Calculating Standard Deviation
- Learn the differences between
- Sx
- Sx2
- (Sx)2
25Problem 1
26Problem 1 Answer
27Problem 2
28Problem 2 Answer-a
29Problem 2 Answer-b
30Problem 3
31Problem 3 Answer
32Descriptive Statistics
- Measures of Central Tendency
- Where does the center of the distribution fall?
- Where are most of the scores
- Measures of Variability
- How spread out is the distribution?
- How dispersed are the scores?
- Importance
- To determine whether IV affects DV, we consider
- The difference between the means
- The amount of variability
33Imaginary Study with 2 Outcomes
- Purpose See why variability is important
- Research Question
- Imagine a business where customers are routinely
offended - comments about their mothers
- misc. name calling
- Does social skills training for clerks improve
customer satisfaction scores. - IV Social Skills training (training, no
training) - DV Customer Satisfaction
- Imagine two worlds where we get two different
outcomes
34Training Study Outcomes
35Measures of Central Tendency
- Note Use frequencies in SPSS
- Mean
- arithmetic mean all scores divided by n
- Sample xbar or M Population µ (mu)
- most arithmetically sophisticated
- best predictor if no other info available
- used in deviation score calculation
- M 4.36
- Median
- Score at 50th percentile middle score
- less influenced by skew
- Md 4
- Mode
- most frequent score
- used with qualitative data
- Mo 3
36Choosing Measures of Central Tendency
- Whats best for A?
- Whats best for B?
- Whats best for C?
37SPSS Setting up Frequencies Analysis
38SPSS Frequencies Output (partial)
- Note Need to select mean, median, mode
39Measures of Variability
- What is Variability?
- dispersion spread distance between scores
- Some people did really well, some did really
poorly - My tips are always about the same, between 30
and 35 - Some students study only a few minutes a day,
some put in 30 hours per week. - Range
- simplest measure
- High Score Low Score
- Problems
- only uses two scores not good for summarize
entire distribution - unduly affected by extreme scores
40The Big Daddy Standard Deviation
- Standard Deviation
- The typical deviation of a score from the mean of
the distribution - Most scores (68) fall between 1 and 1 SD.
- Four Steps to Standard Deviation
- 1. Deviation Score
- 2. Sum of Squares
- 3. Variance
- 4. Standard Deviation
411. Deviation Scores
- idea
- consider deviation of every score and add up
- distance from mean of a given score x xbar
- positive/negative deviation scores fall to the
____ of the mean - problem
- why cant we just add up the deviation scores
- consider distribution of 1, 2, 3
422. Sum of Squares (SS)
- Means Sum of the Squared Deviation Scores
- Square each score, then add up
- Conceptual Formula (how we think about it)
- Computational Formula (how we calculate by hand)
Sum of x Quantity Squared
Sum of x Squared
- Problem
- Biased by sample size bigger samples have
bigger SS
433. Variance
- Sum of Squares no control for size of sample
- Think of relation between sum and average
divide sum by n - with sum of sq. and variance divide sum of
sq. by n - Variance
- Average of the Squared Deviation Scores
444. Standard Deviation
- Want measure in metric of raw scores
- Remember?? We used Sum of the SQUARED Deviations
- Sowe take the square root of the variance
- Note, subscript x is optional
note that s is no longer squared
45SD Bridge Building Example
- How high should the bridge be?
- Truck Height
- 7,6,8,5,6,5,6,7
- average 6.25
- Can we build it 6.25?
- Calculation Tip
- Think anal retentive!!
46SD Bridge Building II
- So wed expect the truck height to range between
about 6.25 ? .9682 - Roughly 5.25 to 7.25.
- But
- What if we missed some extremely tall trucks???
- Should actually calculate s Standard Deviation
as a population estimate
47SD Typical Formula
- Standard Deviation as a Population Parameter
- SD as a Population Parameter Estimate
- corrects for bias of smaller samples missing of
extreme scores
48SD Different Forms
49SD Bridge Building Revisited
- So
- s 0.9682
- s 1.0351
- SD calculated as estimate will always be larger.
50What type of Standard Deviation?
- A manager wants to know the variability in shift
productivity for planning future projects. - A teacher calculates the variability of reading
scores for just her class of 25 students, and
only applies it to her sample. - The Educational Testing Service calculates the
variability among SAT scores for all the students
that took the SAT. - A researcher determines the variability in
reaction time in a perception study. - Your statistics professor calculates test score
variability with 25 students to know how much
variability to expect on that sort of test. - A researcher on anxiety collects data from 1000
participants in order to develop norms for a new
anxiety instrument.
51Practice
Problem Calculate s for 4,2,3
52 Practice Calculations I
53 Practice Calculations II
54Confidence Intervals
- Combines mean with standard deviation
- 68 CI M 1SD
- We can be 68 certain that a given score will
fall between one SD below the mean to one SD
above. - Example
- Bob took the history test after the rest of the
class. The class scored 70 on average (µ 70)
with a standard deviation of 10 (s). What score
do you expect Bob to get? - 68 CI M 1SD
- 68 CI 70 10
- 68 CI 60, 80
- That is, wed expect Bob to get between 60 and
80. Well be right about 68 of the time.
55Error Bars
- Graph in SPSS
- Shows mean 1 SD.