ap statistics section 1 - cabarrus county schools · 2014-08-25 · ap statistics section 1.1...
TRANSCRIPT
Full Name
Phone # Birthday
Parents’ Names
Mom Cell/Work # Dad Cell/Work #
Parent email:
Extracurricular Activities:
List the Math Courses you have taken and the grade you received
1st
2nd
3rd
4th
Turn your card over
Write something interesting about yourself on the back… something you want us to know….
AP Statistics Section 1.1
Displaying Distributions with Graphs
Distributions
A distribution can be a table or a graph. It tells us all the values a variable can take, and how often it takes those values.
Think about how data is “distributed”.
Examples of Distributions
Race Proportion
White 62.8%
African American
28.4%
Asian 5.6%
Hispanic 3.2%
White
African
American
Asian
Hispanic
Let’s start with a little vocab!
Individuals: People, animals, or things for which you are collecting data.
Variables: The values of data you are collecting (ex. How many miles a person travels in a week). Always be specific.
Categorical vs. Quantitative Variables
Categorical variable – records in which category or group an individual belongs Examples: marital status, sex, birth
month, Likert scale
Quantitative variable – takes numerical values for which arithmetic operations make sense Examples: height, IQ, # of siblings
Categorical or Quantitative?
Race Proportion
White 62.8%
African American
28.4%
Asian 5.6%
Hispanic 3.2%
White
African
American
Asian
Hispanic
Why it’s important to know the difference between categorical and quantitative variables
You will receive NO credit (really!) on the AP exam if you construct a graph that isn’t appropriate for that type of data
Type of Variable Appropriate Graph
Categorical Pie Chart, Bar Graph
Quantitative Dotplot, Stemplot, Histogram
Types of Graphs for Categorical Variables
Pie Chart
Bar Graph
Note: The bars should not “touch” each other. Bars are labeled with the category name.
Pie Chart (Categorical)
Categories must make up a whole.
Percents must add up to 100%.
Music preferences in young adults 14 to 19.
Bar Graph (Categorical)
Represent a count OR percent.
These do not have to be part of a whole or add up to 100%.
Percentage of Drivers Wearing Seat Belts by Region
0.00%
10.00%
20.00%
30.00%
40.00%
50.00%
60.00%
70.00%
80.00%
90.00%
Northeast Midwest South West
Region
Per
cen
t
Types of Graphs for Quantitative Variables
Dotplots—place a dot above each value of the variable for every time it occurs in the data set
Types of Graphs for Quantitative Variables
Stemplots – divide the data into “stems” and “leaves.”
Leaves include the last digit (you can round if necessary)
It is imperative you have a key.
How to interpret graphs Remember SOCS: Spread, outliers, center,
shape
Spread—stating the smallest and largest values (note: different from the range where you actually subtract the values). We will talk about other measures of spread later.
Outliers—values that differ from the overall pattern.
Center—the value that separates the observations so that about half take larger values and about half take smaller values (in the past, you may have heard this called median).
Shape—symmetric, skewed left, skewed right. We’ll learn more about shape later.
Activity
QUIETLY take your pulse for 60 seconds. Write it down on an index card. Do not put your name on the index card. Bring your index card to me.
Finish up the activity
Is this data quantitative or categorical?
How could we represent this data?
Construct an appropriate graph with your group members.
One-Variable Quantitative Data
The most common graph is a histogram.
It is useful for large data sets.
NOTE—histograms are appropriate graphs for one-variable quantitative data!!!
Note that
the axes are
labeled!
The bars have equal
width!!!
The height of each bar
tells how many students
fall into that class.
Bars include the starting value but not the ending value.
Reading a Histogram
There are 3 trees with heights between 60 and 64.
How many trees have heights between 70 and 79? From 70 to 80?
Each value on the scale of the histogram is the START of the next bar.
Another Example
Refer to p. 20 for an example of a histogram that has a “break” in the scale on one of the axes.
Using the TI Calculator to Construct Histograms
Follow the instructions on p. 21 to construct a histogram. Enter the data from Example 1.6 on p. 19.
Note: Clear Y= screen before beginning.
Using Your Calculator Effectively
Know that the Xscl sets the width of each histogram bar.
XMin and XMax should be a little smaller and a little bigger than the extremes in your data set.
Beware of letting the calculator choose the bar width for you.
Shape
Symmetric – the right and left sides of the histogram are approximately mirror images of each other
Skewed Left – there is a long tail to the left
Skewed Right – there is a long tail to the right
Examples of Shape
Skewed left!
Skewed right!
Now what?
Constructing the graph is a “minor” step. The most important skill is being able to interpret the histogram.
Remember SOCS?
Spread
Outliers
Center
Shape
SOCS
Spread: from 7 to 22
Outliers: there do not
appear to be any outliers.
Center: around 15 or 16
Shape: skewed left
Homework
Chapter 1
#9, 16, 18, 27, 38