Title: Sampling
1Sampling
2Introduction
- Sampling
- The process of drawing a number of individual
cases from a larger population - A way to learn about a larger population by
obtaining information from a subset of a larger
population - Example
- Presidential polls are based upon samples of the
population that might vote in an election
3(No Transcript)
4Introduction
- Why Sample?
- To learn something about a large group without
having to study every member of that group - Time and cost
- Studying every single instance of a thing is
impractical or too expensive - Example
- Census
5Introduction
- Why Sample?
- Improve data quality
- Obtain in-depth information about each subject
rather than superficial data on all
6Introduction
- Why Sample?
- We want to minimize the number of things we
examine or maximize the quality of our
examination of those things we do examine.
7Introduction
- Why Sample?
- When is sampling unnecessary?
- The number of things we want to sample is small
- Data is easily accessible
- Data quality is unaffected by the number of
things we look at - Example
- You are interested in the relationship between
team batting average and winning percentage of
major league baseball teams - There are only 30 major league teams
- Data on team batting averages and winning
percentages are readily available
8Introduction
- Why Sample?
- Elements
- A kind of thing the researcher wants to look at
9Quiz Question 1
- Suppose you are interested in describing the
nationality of Nobel prize-winning scientists.
What would an element in your study be? What
would the population be?
10Introduction
- Why Sample?
- Population
- The group of elements from which a researcher
samples and to which she or he might like to
generalize
11Quiz Question 2
- In the case of presidential elections in the
United States the population is ________ and the
elements of this population are _________.
12Introduction
- Why Sample?
- Sample
- A number of individual cases drawn from a larger
population
13Introduction
- Sampling Frames, Probability versus
Nonprobability Samples - Target population
- A population of theoretical interest
14Introduction
- Sampling Frames, Probability versus
Nonprobability Samples - Sampling frame or study population
- The group of elements from which a sample is
actually selected
15Quiz Question 3
- The local television station conducted a study of
TV viewers in the local viewing region. A list
of all residential customers who subscribed to
cable TV was obtained from the cable company.
The list had 200,000 households as subscribers.
The TV station samples every 40th household on
the subscriber list. An interviewer visited each
household and conducted the survey on viewing
habits of household members. - What is the sampling frame of the study?
16Introduction
- Sampling Frames, Probability versus
Nonprobability Samples - Nonprobability Samples
- A sample that has been drawn in a way that
doesnt give every member of the population a
known chance of being selected
17Introduction
- Sampling Frames, Probability versus
Nonprobability Samples - Probability
- A sample drawn in a way to give every member of
the population a known (nonzero) chance of
inclusion - Probability samples are usually more
representative than nonprobability samples of the
populations from which they are drawn
18Introduction
- Sampling Frames, Probability versus
Nonprobability Samples - Biased Samples
- A sample that is not representative from the
population which it is drawn - Probability samples are LESS likely to be biased
samples
19Introduction
- Sampling Frames, Probability versus
Nonprobability Samples - Generalizability
- The ability to apply the results of a study to
groups or situations beyond those actually
studied - A probability sample tends to be more
generalizable because it increases the chances
that samples are representative of the
populations from which they are drawn.
20Introduction
- STOP AND THINK
- Can you think why researchers havent used cell
phone numbers in polling until recently? - What problem may result from only using landline
numbers?
21Focal Research
- Calling Cell Phones in 08 Pre-Election Polls
- Examines the hypothesis than Barack Obama fared
better in probability samples including landline-
and cell phone-users than in samples including
landline users alone.
22Focal Research
- Thinking about ethics
- Because of the sampling technique employed, the
Pew pollsters never knew the identity of their
respondents, so respondent anonymity was never in
danger. - Moreover, participation in the survey was
voluntary.
23Sources of Error Associated with Sampling
- Types of Survey Error due to sampling
- Coverage Error
- Nonresponse Error
- Sampling Error
24Sources of Error Associated with Sampling
- Coverage Errors
- Errors that results from differences between the
sampling frame and the target population
25Sources of Error Associated with Sampling
- Coverage Errors
- People are typically left out, if samples are
drawn from phone books, car registrations, etc - Unlisted Phone Numbers one of the greatest
potentials for coverage error - Pollsters use random digit dial to avoid unlisted
numbers - Random-digit dialing
- A method for selecting participants in a
telephone survey that involves randomly
generating telephone numbers - What are potential future problems, with using
telephone listings to draw a sample?
26Sources of Error Associated with Sampling
- Coverage Errors
- Parameter- A summary of a variable characteristic
in a population
27Sources of Error Associated with Sampling
- Coverage Errors
- Statistic-A summary of a variable in a sample
28Sources of Error Associated with Sampling
- Nonresponse Error
- Errors that result from differences between
nonreponders and responders to a survey
29Stop and Think
- What kinds of people might not be home to pick up
the phone in the early evening when most survey
organizations make their calls? - What kinds of people might refuse to respond to
telephone polls, even if they were contacted?
30Sources of Error Associated with Sampling
- Sampling Error
- Any difference between the characteristics of a
sample and the characteristics of the population
from which the sample is drawn
31Sources of Error Associated with Sampling
- Sampling Error
- Sampling Variability
- The variability in sample statistics that occurs
when different samples are drawn from the same
population
32Sources of Error Associated with Sampling
- Margin of error
- Suggestion of how far away the actual population
parameter is likely to be from the statistic
33Types of Probability Sampling
- Simple Random Sampling
- Systematic Sampling
- Stratified Sampling
- Cluster Sampling
- Multistage Sampling
34Types of Probability Sampling
- Simple Random Sampling
- A probability sample in which every member of a
study population has been given an equal chance
of selection - One way to draw a simple random sample, is to put
all possibilities on paper, cut them up, and then
draw a sample from a hat - Research Randomizer (http//randomizer.org)
35Types of Probability Sampling
- Simple Random Sampling
- Sampling distribution
- The distribution of a sample statistic
- A visual display of the samples
36Types of Probability Sampling
37Types of Probability Sampling
- Systematic Sampling
- A probability sampling procedure that involves
selecting every kth element from a list of
population elements, after the first element has
been randomly selected - Example
- Divide the total number of elements by the number
you want in your sample 24/6 4 - Randomly select a number between 1 and 4 and then
select every 4th element from that number
38Types of Probability Sampling
- Systematic Sampling
- Selection interval
- The distance between the elements selected in a
sample - Selection Interval (k) population size
- sample size
39Types of Probability Sampling
- Stratified Sampling
- A probability sampling procedure that involves
dividing the population in groups or strata
defined by the presence of certain
characteristics and then random sampling from
each stratum - Example
- If you had a population that was 10 women and
you want a sample that is also 10 women
40Types of Probability Sampling
- Stratified Sampling
- Steps to draw a stratified random sample
- Group the study population into strata or into
groups that share a given characteristic - Enumerate each group separately
- Randomly sample within each strata
41Types of Probability Sampling
- Cluster Sampling
- A probability sampling procedure that involves
randomly selecting clusters of elements from a
population and subsequently selecting every
element in each selected cluster for inclusion in
the sample - Cluster sampling is an option if data collection
involves visits to sites that are far apart
42Types of Probability Sampling
- Cluster Sampling
- Example
- You are conducting a study of Kentucky high
school students - You could obtain a list of all high school
students in the state and complete random
sampling - A cluster sample would be more practical
- Obtain a list of all high schools in Kentucky
- Random sample the high schools from the list
- Obtain a list of students for each high school
selected and then contact each of those students
43Types of Probability Sampling
- Multistage Sampling
- A probability sampling procedure that involves
several stages, such as randomly selecting
clusters from a population, then randomly
selecting elements from each of the clusters
44Types of Probability Sampling
- Multistage Sampling
- Example
- Random Digit Dial
- Stage 1 Areas Codes randomly sampled
- Stage 2 Three digit local exchanges randomly
sampled - Stage 3 Last four digits randomly sampled
- Stage 4 Asking the person who answer the phone
for - the appropriate person you want to
interview
45Quiz Question 4
- You want to draw a sample of the employees at a
large university ensuring that in your sample you
have people represented from all personnel
categories including administrators, faculty,
secretarial staff, cleaning staff, mail room
staff, technicians, and students. - What type of probability sample would be best?
46Types of Nonprobabilty Sampling
- Purposive Sampling
- Quota Sampling
- Snowball Sampling
- Convenience Sampling
47Types of Nonprobability Sampling
- Purposive Sampling
- A nonprobability sampling procedure that involves
selecting elements based on a researcher's
judgment about which elements will facilitate his
or her investigation
48Types of Nonprobability Sampling
- Quota Sampling
- A nonprobability sampling procedure that involves
describing the target population in terms of what
are thought to be relevant criteria and then
selecting sample elements to represent the
relevant subgroups in proportion to their
presence in the target population
49Types of Nonprobability Sampling
- Snowball Sampling
- A nonprobability sampling procedure that involves
using members of the group of interest to
identify other members of the group
50Types of Nonprobability Sampling
- Convenience Sampling
- A nonprobability sampling procedure that involves
selecting elements that are readily accessible to
the researcher - Sometimes called an available-subjects sample
51Choosing a Sampling Technique
- Is it desirable to sample at all or can the whole
population be used? - Is it important to generalize to a larger
population? - Political preference polls
- Do you have the access and ability to perform
probability sampling? - Major considerations
- Methods
- Theory
- Practicality
- Ethics
52Summary
- Sampling is a means to an end.
- We sample because studying every element in our
population is frequently beyond our means or
would jeopardize the quality of our. - On the other hand, we dont need to sample when
studying every member of our population is
feasible.