Title: Advantage of sampling
1Advantage of sampling
- Reduced cost
- Faster
- Greater scope
- Greater accuracy
2- Target population
- Sample frame
- Inferential population
3Principal steps in sampling
- Purpose of investigation
- Define the population from which the samples will
be drawntarget population - Decide which data should be sampled
- Determine degree of desired precision
- Method of measurement
- Describe sampling procedure (including
organization of field work and so on) - Sampling (may be preceded by a pretest)
- Data processing
- Summary and analysis of the data
4Why is it important to identify the most
appropriate sampling method?
- To get the a good estimate of the
- parameter(s) of interest.
- Goodunbiased, small variance and cost
- effective
5Common sampling methods
- Simple Random
- Stratified Random
- Systematic
- Multistage
- Multiphase
- Cluster
- Sequential
- Adaptive
6SIMPLE RANDOM SAMPLE (SRS)
- Random selection of n units out of population
- with N such that every set of n samples has
- the same probability of being drawn.
- In practice a simple random sample is drawn
- unit by unit, and each unit in the population
- has the same chance being included in the sample.
7SIMPLE RANDOM SAMPLE (SRS)
- Advantages
- Easy to obtain
- Easy to explain
- Easy to analyze
- Disadvantages
- May not lead to adequate sample sizes to analyze
subpopulations - May not be impossible to do
- May for a given cost not lead to the most
efficient estimates
8SIMPLE RANDOM SAMPLE (SRS)
- Can be used when
- Sample frame lists all possible sampling units in
target population - Sample units are identified by random numbers or
random location
9SIMPLE RANDOM SAMPLE (SRS)
- Assumptions
- All sample units have the same chance of being
samples - Units are selected independent of each other
- Sampling of units is done in one stage
10Stratified sampling
- The population of N individuals is first divided
into - subpopulations strata
- These strata are non-overlapping and together
they - comprise the whole population
- A sample is then drawn independently from each
- strata
11Stratified random sampling
- A simple random sample is drawn from each
- strata
12When is random stratified sampling most
appropriate?
- For heterogeneous populations which can be
subdivided into homogeneous strata
13 The density of trees varies among different areas
of a natural pine forest
14Advantages of stratified sampling
- 1. Ensures that each strata (subpopulation) is
- well estimated
2. Can result in estimates with smaller standard
errors if sampling is well allocated
3. Different samples can be sampled with
different sampling strategies
15Disadvantages of stratified sampling
- 1. More complicated than SRS
2. Need to identify strata ahead of time. Hence,
more information needed prior to sampling than
than for SRS
16Systematic sampling
- Suppose that the units of the population are
numbered from 1 to N in some order. - To select a sample of n units, we take a unit at
- random from the k units and every kth unit
- thereafter.
- For example if k is 15 and if the first unit
drawn is - 13 then the subsequent units drawn are 28, 43, 58
- and so on.
17Advantages of systematic sampling
- 1. Very easy to conduct the sampling if the units
can be numbered
2. If you use area sampling you may construct a
spatial distribution map at the same time
18Disadvantages of systematic sampling
- Can result in biased parameter estimates
- for populations with periodic variation and
- autocorrelation
2. Need to have substantial knowledge of the
population prior to sampling
19When to use systematic sampling
20Stratified systematic sampling
- In sampling an area, the simplest extension of
- the one-dimensional systematic is a square
- grid pattern. A sample is then taken at the
- same position for each grid. A version
- of this is unaligned sampling in the grid
- system.
21Cluster sampling (single stage)
- Assume that the individuals of a population
- naturally occur in clusters. Then randomly
- sample clusters. Each individual of the
- sampled clusters is then assessed or measured.
22Two stage sampling
- Subsampling with units of equal size
- Subsampling with units of unequal size
23Multi-stage sampling
- Cluster sampling subsequent sampling within
- the cluster (for example SRS)
24Complex sampling
- Combines multiple design components
- It may for example combine stratified
- sampling, cluster sampling and unequal
- probability sampling
25Double sampling (two phase sampling)
- Use a more precise (and more costly)method for a
small sample in the population. - Use a less precise (and less expensive) method to
measure a larger (or all) individuals in the
population. - Then, the mean of the less precise measurements
on - all individuals in the study are adjusted using
the - (linear) relationship between the more precise
and - less precise measurements taken on the smaller
- sample.
26Double sampling (two phase sampling)
- The effectiveness of double sampling is
- dependent on how strong the correlation is
- between the two measurement methods.
- And also if relationship really is linear
27Adaptive sampling
- Adaptive sampling refers to sampling designs
- in which the procedure for selecting sites or
- units to be included in the sample may depend
- on values of the variables of interest observed
- during the survey
28Sequential sampling
- Sample first a specific number of units from the
- population, determine the mean and variance for
the - parameter. If satisfied, stop sampling. If not,
sample - another set of units and determine the mean and
- variance for all sampled units. If satisfactory,
stop - sampling. If not, repeat procedure until
satisfactory - results obtained.
29How large should the sample size be?
- -Depends on the analysis you plan to do
- -The accuracy (the power) you require
- -Your budget
- -Your sampling design
30How large should the sample size be?
- Review relevant articles
- Conduct a small pilot study to get an idea of
- the variability (maybe even the power)
- Interview experienced researcher(s) studying
- similar populations and questions
31Design effectDeff
- DeffVariance of the sampling design in question
divided by the variance of SRS - This assumes equal sample sizes and equal costs
of the two sample designs
32Surveys involving the forms or phone interview
- Ex.
- 200 questionnaires were sent out but only 80
questionnaires - returned.
- Of those 60 are A1 individuals while 20 are A2
individuals - So 60/8075 of those who answered are A1
individuals - How many are A1 individuals in the original
sample of 200?
33Surveys involving the forms or phone interview
- To be able to put some limits on proportion A
individuals - among the original 200 sampled individuals you
assume - all the people who did not answer are
A1-individuals - none of the people who did not reply are
A-individuals - Pupper_limit(60120)/2000.9 or 90
- Plower_limit600/2000.3 or 30
- So the proportion A-individuals in the original
sample is - somewhere between 30 and 90.
34Surveys involving the forms or phone interview
- There is no simple method for how to account for
the - people who did not answer. The best one can do is
to - try to approach the person again sending out the
same - form. (CSN and no-job)
35Quadrat sampling
- A quadrat (plot) is a square, rectangle, circle
or - other shape area used as a sample unit.
- Items of interest within the quadrat are counted,
- collected, weighed, etc., and recorded for the
entire - quadrat.
- In quadrat sampling, one must choose the
- dimensions, shape and number of the quadrats
prior - to implementation.
36Quadrats are used to sample
- Vegetation and trees,
- Slow moving animals,
- Animal burrows, nests, hills,
- Benthic fauna,
- Soil, fauna, and other characteristics.
- Aquatic plants, and many more.
37Quadrats are used when
- The individuals of interest are too numerous to
be considered separately as sample units. - It is impossible to create a sampling frame of
individuals prior to unit selection. - The parameter of interest relates to area
coverage or density.
38Capture-recapture to estimate animal abundance
- A set of randomly selected (captured) individuals
are marked then released back into their original
population (environment). - These marked individuals are assumed to mix
freely with unmarked individuals of the
population - One or more follow-up samples of randomly chosen
individuals are selected and examined. - The ratio of marked to unmarked individuals in
the sample is used to estimate abundance.
39Assumptions for capture-recapture
- The population under study should be both
geographically closed and demographically closed.
- Each member of the population has the same
probability of being captured, and this capture
probability does not change over time. - The fact that an individual has been captured
once does not change its probability of being
captured in future samples. - Marked and unmarked individuals mix randomly
between samples. - Marks are permanent and always recognizable.