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Sampling UAPP 702 Research Methods for Urban & Public Policy Based on notes by Steven W. Peuquet, Ph.D.
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Sampling

Feb 23, 2016

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Sampling. UAPP 702 Research Methods for Urban & Public Policy Based on notes by Steven W. Peuquet, Ph.D. Why do sampling?. To learn about the characteristics of a group of people or objects without having to collect information about all of the people or objects of interest. - PowerPoint PPT Presentation
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Page 1: Sampling

Sampling

UAPP 702Research Methods for Urban & Public PolicyBased on notes by Steven W. Peuquet, Ph.D.

Page 2: Sampling

Why do sampling? To learn about the characteristics of a group of

people or objects without having to collect information about all of the people or objects of interest.

To save money and time.

To increase internal validity. Use of multiple data collectors or the passage of large amounts of time can negatively impact internal validity (and there is no way of determining how much of a problem this creates). Well conducted samples can actually be more accurate than collecting the desired data from all of the people or objects of interest.

Page 3: Sampling

In Class Exercise

This exercise will demonstrate the power of random sampling. It involves the following steps:

A survey question will be distributed to everyone in class asking for your position on an important current issue.

All the responses will be tabulated. A random sample of the responses will be drawn. The results of the sample will be compared to the

results from the universe of people in class.

Page 4: Sampling

In Class ExerciseSurvey Question:

Right now, how are you feeling about your chances of obtaining the kind of job you would like after you graduate?

I’m feeling more positive than negative.

I’m feeling more negative than positive.

ID Number ____

Page 5: Sampling

Obtaining Random Numbers and Tallying the

Results

Check out “Random.org”

Go here for “Vote Tally Sheet”

Page 6: Sampling

Types of Sampling

The following three types of samples are based on the use of probability theory. These types of samples increase external validity (i.e., they produce results which can to some extent be generalized to a broader group).

Simple random sample Stratified random sample Cluster samples

Page 7: Sampling

Non-Probability Samples

Other types of samples are not based on probability theory, do not produce external validity, and hence are very risky to use: quota, purposive, snowball, and haphazard.

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Two ways of making a probability sample more representative of the population being studied:

Make sure that every unit picked for the sample has the same chance of being picked as any other unit (randomness).

Increase the sample size (less important that (1) above).

Page 9: Sampling

Proper Size of the SampleFactors that affect what the size of the sample

needs to be: The heterogeneity of the population (or strata or

clusters) from which the units are chosen. How many population subgroups (strata) you will deal

with simultaneously in the analysis. How accurate you want your sample statistics

(parameter estimates) to be. How common or rare is the phenomenon you are

trying to detect. How much money and time you have.

Page 10: Sampling

Calculating Sample Size X2NP(1-P)

n = ________________

C2(N-1)+X2P(1-P)Where:

n = the required sample sizeX2 = is the chi-square value for 1 degree of freedom at some

desired probability levelN = is the size of the population universe (which gets more

important as N gets smaller)P = is the population parameter of the variable (set=.5 which is the worst case scenario, meaning maximally

heterogeneous for a dichotomous variable)C = the chosen confidence interval

Important note: This formula is good for dichotomous variable (yes/no type variable), not more complex variables.

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1 2 3 4 5Confindence X 2 value for Population Population RequiredInterval (+/-) 95% Level of Size Parameter Sample Size

C Significance N P n5% 3.841 50 0.5 445% 3.841 100 0.5 805% 3.841 150 0.5 1085% 3.841 200 0.5 1325% 3.841 250 0.5 1525% 3.841 300 0.5 1695% 3.841 400 0.5 1965% 3.841 500 0.5 2175% 3.841 800 0.5 2605% 3.841 1,000 0.5 2785% 3.841 1,500 0.5 3065% 3.841 2,000 0.5 3225% 3.841 3,000 0.5 3415% 3.841 4,000 0.5 3515% 3.841 5,000 0.5 3575% 3.841 10,000 0.5 3705% 3.841 50,000 0.5 3815% 3.841 1,000,000 0.5 3845% 3.841 50,000,000 0.5 3845% 3.841 100,000,000 0.5 3845% 3.841 300,000,000 0.5 384

For Simple Dichotimous Choice

Sample Size Required for Various Populations Sizesat 5% Confidence Interval

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Example: Perception of Low and Moderate Income People About Welfare ReformWhat is the sample size (n) necessary to determine with 95% confidence what proportion of low- and moderate-income people in Delaware feel that welfare reform is a good thing, with a confidence interval (measurement error) of plus or minus 3%?

Page 13: Sampling

Using the formula previously described:

Where:X2 = 3.841N = 148,429P = .5(1-P) = .5C = .03

Plugging these values into the formula produces a required sample size (n) of 1,059. For this example go here to see a table showing the calculated required sample sizes (n) under different scenarios.

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Stratified SamplingIs done whenever it is likely than an important subpopulation will be under represented in a simple random sample.

Must know independent variables upon which to stratify

Must know the sizes of the strata subpopulations Is complex and more costly Each strata has it's own sampling error. But the

aggregate sampling error of the total population is reduced.

There is proportionate and disproportionate random sampling

Page 15: Sampling

Cluster Sampling

Is a way to sample a population when there is no convenient lists or frames (e.g., homeless in shelters or soup kitchens).

Page 16: Sampling

Self-Selection Bias Is caused by the unit of observation (e.g.,

person) choosing whether or not to be a respondent in a survey.

If the self-selection process itself is random, it will not compromise the randomness of the selection process.

If the self-selection process is not random (is systematic), it will compromise the randomness of the selection process.

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Using Sampling to CreateControl & Experimental Groups

As we’ve previously discussed in this course, sampling is a very important tool for creating control groups and experimental groups in experimental research designs.

To create two groups, you would simply draw two separate samples from the same universe, using a sample size that is adequate to produce the level of comparability (precision) desired.

Page 18: Sampling

Using Sampling to CreateControl & Experimental Groups

If you have a “before/after” research design, the control group consists of units of observation randomly selected before a new program or policy was implemented (i.e., the “treatment’), and the experimental group consists of units of observation randomly selected after the new program or policy was implemented. Example: Affect of the switch from the use of coupons to the use of debit cards in the Food Stamp Program on stigma.

Page 19: Sampling

Using Sampling to CreateControl & Experimental Groups

Important Points!If:

A = the universe of units of observation you are studying;B = a properly drawn random sample of the universe A;then: B will be comparable (representative) of A.

Further, if:

C = another properly drawn random sample of the universe A; then: C will be comparable to (representative of) A, and C will also be comparable (representative of) B. The two samples (one a control group and one an experimental group) are comparable!