Title: Sampling and Sampling Designs
1???????
2Population ??
Sample ??
Sampling ??
? s2
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Generalization ??
Parameter ??
Statistic ???
3Why sample?
- Lower cost
- Greater accuracy of results
- Greater speed of data collection
- Availability of population elements
- Sample vs. Census
4What is a good sample
- Accuracy
- Systematic variance ????
- The variation in measures due to some known or
unknown influences that cause the scores
(results) to lean in one direction more than
another - Precision
- Sampling error ????
- the degree to which a given sample differs from
the underlying population - sampling error tends to be high with small sample
sizes and will decrease as sample size increases
5??
- Differences between parameters and
statisticserror - sampling error ????
- Systematic error ???? (also called measurement
error)
6Target Population
- group to which you wish to generalize the results
of the study - should be defined as specifically as possible
7- Sampling frame ????
- the list of elements from which the sample is
actually drawn
8Steps in sampling design
- What is the population?
- What are the parameters of interest?
- What is the sampling frame?
- What is the type of sample?
- What size sample is needed?
- How much will it cost?
9What is the population
- Clearly define your population of interest
- Population vs. research subjects
10What are the parameters of Interest?
- Summary of descriptors (mean, variance) of
variables in the population - Issue of the scale of measurement
11What is the sampling frame?
- the list of elements from which the sample is
actually drawn
12What is the type of sample?
- Probability sample vs. nonprobability sample
13What size sample is needed?
14Sampling Techniques
- Probability Sampling (random sampling) ????
- Nonprobability Sampling (nonrandom sampling)
?????
15Probability Sampling
- sample should represent the population
- using random selection methods
- members of the population have a known and
non-zero chance of being selected (EPSEM Equal
Probability of SElection Method)
16Types of Probability Sampling
- Simple random sampling??????
- Systematic sampling?????
- Stratified sampling ??????
- Cluster sampling ????
- Double sampling ????
17Simple Random Sampling
- every unit in the population has an equal and
known probability of being selected as part of
the sample (??)
18Random Numbers Table ???
- a table of random digits arranged in rows and
columns - after assigning an identification number to each
member of the population, numbers in the random
numbers table are used to select those who will
be in the sample
19???
1 2 3 4 5 6 7 8 9 10
1 49486 93775 88744 80091 92732 38532 41506 54131 44804 43637
2 94860 36746 04571 13150 65383 44616 97170 25057 02212 41930
3 10169 95685 47585 53247 60900 20097 97962 04267 29283 07550
4 12018 45351 15671 23026 55344 54654 73717 97666 00730 89083
5 45611 71585 61487 87434 07498 60596 36255 82880 84381 30433
6 89137 30984 18842 69619 53872 95200 76474 67528 14870 59628
7 94541 12057 30771 19598 96069 10399 50649 41909 09994 75322
8 89920 28843 87599 30181 26839 02162 56676 39342 95045 60146
9 32472 32796 15255 39636 90819 54150 24064 50514 15194 41450
10 63958 47944 82888 66709 66525 67616 75709 56879 29649 07325
20Characteristics of simple random sampling
- Unbiased ???????????????
- Independence ?????????????????????????
21Limitations of simple random samples
- not practical for large populations
- Simple random sampling becomes difficult when we
dont have a list of the population
22Systematic Sampling?????
- a type of probability sampling in which every kth
member of the population is selected - kN/n
- N size of the population
- n sample size
23For example You want to obtain a sample of 100
from a population of 1,000. You would select
every 10th (or kth) person from the list. k
1000/10010
24Advantages/disadvantages of systematic sampling
- Assuming availability of a list of population
members - Randomness of the sample depends on randomness of
the list - periodicity bias ??????????????????, systematic
sampling ???????(periodicity bias)
25Stratified Random Sample??????
- Prior to random sampling, the population is
divided into subgroups, called strata, e.g.,
gender, ethnic groups, professions,
etc.??????????(Strata) ???????? - Subjects are then randomly selected from each
strata????????????(using simple random sampling)
26???
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. . . . .
?K?
Sample
27- Homogeneity is very high within the strata.
- Heterogeneity is very high between the stratas
28Why use stratified samples?
- permits examination of subgroups by ensuring
sufficient numbers of subjects within subgroups
??????????????????,???????? - generally more convenient than a simple random
sample
29Potential disadvantages
- Sometimes the exact composition of the population
is often unknown - with multiple stratifying variables, sampling
designs can become quite complex
30Types of Stratified Sampling
- Proportionate Stratified Random Sampling ????????
- Disproportionate Stratified Random
Sampling?????????
31Proportionate Sampling
- strata sample sizes are proportional to
population subgroup sizes????????? - e.g., if a group represents 15 of the
population, the stratum representing that group
will comprise 15 of the sample
32Disproportionate Sampling
- strata sample sizes are not proportional to
population subgroup sizes????????????????????? - may be used to achieve equal sample sizes across
strata
33For example Suppose a researcher plans to
conduct a survey regarding various attitudes of
Agricultural College Students at Tunghai U. He
wishes to compare perceptions across 4 major
groups but finds some of the groups are quite
small relative to the overall student population.
As a result, he decides to over-sample minority
students. For example, although Hospitality
students only represent 10 of the Agricultural
student population, he uses a disproportional
stratified sample so that Hospitality students
will comprise 25 of his sample.
34Cluster Sampling????
- used when subjects are randomly sampled from
within a unit or group (e.g., classroom,
school, country, etc) - ????????? (cluster),?????????????????????????????
35??
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k ?
Population
Sample
36Example
- ???????????????
- ??????????????
- ????3??????3????????????
- Compare using cluster sampling technique and
simple sampling technique
37Why use cluster samples?
- They're easier to obtain than a simple random or
systematic sample of the same size
38Disadvantages of Cluster Sampling
- Less accurate than other sampling techniques
(?selection stages, ?accuracy) - Generally leads to violation of an assumption
that subjects are independent
39Double sampling ?????
- ???????????????
- Systematic sample cluster/stratified sample
40Nonprobability sampling
- Convenience sampling ?????
- getting people who are most conveniently
available - fast low cost
- Purposive sampling ?????
- Judgment sampling
- Quota sampling
- Snowball sampling ??????
41Characteristics of nonprobability samples
- members of the population do not have a known
chance of being selected - do not represent any known population
- results cannot be generalized beyond the group
being tested