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SAMPLING TECHNIQUES
Guide : Prof (Dr.) O.P. Panigrahi
Presenter: Dr. Adrija Roy
 To understand the terms Sample and sampling.
 To understand the need for taking a sample
 To be able to enumerate various uses of sampling.
 To understand different types and methods of sampling- its
advantages, disadvantages , uses and examples.
 To understand the basic types of sampling errors.
Seminar Objectives…….
To know whether the rice has been cooked
properly or not only a few grains are
enough…………..
What is Sampling?
Sampling is defined as the practice of
taking a small part of a large bulk to
represent the whole.
According to Non Lin, “sampling design is a subset of
cases from the population chosen to represent it. By using
the subset, we can infer the characteristics of the
population.”
“ A sampling method is a scientific and objective procedure
of selecting units from a population & providing a sample
that is expected to be representative of the population as a
whole.”
Sampling
Population is defined as The Entire Group under study.
Sometimes it is also called as the “Universe.”
Population
Target population
A set of elements larger than or different
from the population sampled and to which
the researcher would like to generalize
study findings.
Population versus Sample
 Population = Parameter (N-size, μ-mean, σ -SD)
 Sample = Statistic (n-size, x- Mean, s-SD)
 Statistic gives estimates about parameter.
Sample - characteristics
 True representative of population.
 Inference drawn refers only to defined population
 Have its statistic almost equal to population parameter
 Precision (sample size should be large)
 Unbiased in character
 Still difference will persist which may be due to the sampling error
Sampling Unit
 Smallest element of the population from which sample can be selected.
 Generally well defined and identifiable
 E.g.
a) To select persons,
sampling unit = individual person
b) To select families,
sampling unit = a family
Sampling frame
 A List of all the sampling units
from which sample is drawn.
 Example:
Telephone directory
 List of students in a college
SAMPLING BREAKDOWN
All universities in India
All universities in Odisha
List of all universities in odisha
Three universities in Odisha
Sampling scheme
 Method of selecting sampling units from sampling frame
Type of sampling
Probability sampling
Non-probability sampling
 To gather data about the population in order
to make an inference that can be generalized
to the population
The purpose of sampling…
Define the target population
Select a sampling frame
Conduct fieldwork
Determine if a probability or nonprobability
sampling method will be chosen
Plan procedure for selecting
sampling units
Determine sample size
Select actual sampling units
Stages in the
Selection
of a Sample
•Probability sampling – a method of sampling that uses random
selection so that all units/ cases in the population have an equal
probability of being chosen.
• Non-probability sampling – does not involve random selection and
methods are not based on the rationale of probability theory.
TYPES OF SAMPLING
Sampling
Techniques
Probability
Non-
Probability
Probability
Sampling
Simple random sampling
Systematic sampling
Stratified sampling
Cluster sampling
Multistage sampling
Multiphase sampling
Non-Probability
Sampling
Convenience sampling
Judgmental sampling
Purposive sampling
Quota sampling
Snowball sampling
PROBABILITY SAMPLING
Features of Probability Sampling
 Provides equal chance to every element of the population in
getting selected in the sample
 The results of probability sampling are more accurate and
reliable.
 It helps in the formulation of a true representative sample
by eliminating human biases
SIMPLE RANDOM SAMPLING
Basic , most commonly and easiest method
Principle – Laws of Chance
All subsets of the frame are given an equal probability. Each element of the frame thus has an
equal probability of selection.
Two approaches are used in drawing a sample:-
1. Lottery method
2. Use of random number table
Lottery method
Two types of lottery method :
1) Lottery method with replacement
- Possibility of selected twice or more
2) Lottery method without replacement
- More convenient and provide more precise sample
Lottery method
Suppose 30 patients are required to be put in trial out of 300 available patients
Note the serial number from 1 to 300 on a card & shuffle
Draw out one and note the number
reshuffle & draw the 2ndcard(Replace/or Don’t replace the card drawn)
Repeat the process till 30 numbers are drawn
Random number table
 Use of randomly generated number tables
 It provides use of random numbers specially designed for sampling
purposes
 Such type of random table are mostly found at the end of statistical
textbooks
Random number table
SIMPLE RANDOM SAMPLING
Every subset of a specified size n from the population
has an equal chance of being selected
Simple Random Sampling
Advantages:
 Sample is representative of the population
 No need of prior information about the population
 Equal and independent chance of selection of every element
Disadvantages :
 Not feasible in case of large population
 Requires a lot of resources
 More chances of misleading sample
SYSTEMATIC RANDOM SAMPLING
 Simple and convenient to adopt
 Equal sampling interval.
 Only the first unit is picked randomly.
Steps for systematic random
sampling
 Number the units in the population from 1 to N
 Decide on the n (sample size)
 k = N/n = the interval size
 Randomly select first unit between 1 to k
 Take every kth unit
Every member ( for example: every 20th person) is
selected from a list of all population members.
SYSTEMATIC RANDOM SAMPLING
Advantages:
 The sample is evenly spread over
the entire population.
 The sample is easy to select
 Helps in organizing field work.
 Cost effective
Disadvantages:
 Difficult if population is heterogeneous.
 Pattern or periodicity
 Precision of estimate is less as compared to
SRS.
 Sample may be biased if hidden periodicity in
population coincides with that of selection.
 Each element does not get equal chance
 Ignorance of all in between elements
 The population is divided into two or more groups called strata,
according to some criterion, such as geographic location, grade level,
age, or income, and subsamples are randomly selected from each
strata.
Stratified Random Sampling
 When the population is not homogeneous
 Heterogeneous population is divided into homogeneous sections or strata
Stratified Random Sampling
 Samples are selected from each strata
 Simple random or systematic sampling
 Example:
Entire population can be divided into several
socioeconomic groups or strata
Stratified Random Sampling
Alcohol Consumption among a Population:
Stratified Random Sampling
20 - 30 years old
(homogeneous within)
(alike)
30 - 40 years old
(homogeneous within)
(alike)
40 - 50 years old
(homogeneous within)
(alike)
Heterogeneous
(different)
between
Heterogeneous
(different)
between
Stratified by Age
Advantages:
1. Every unit in the stratum has equal chance of being selected .
2. Characteristic of each stratum can be estimated and comparisons made.
Disadvantages:
1. Requires accurate information on proportions of each stratum
2. Stratified lists costly to prepare.
Stratified Random Sampling
Cluster Sampling
Used to cover large-spread area. The main reason for cluster sampling is
“cost efficiency” (economy and feasibility)
 Cluster :
 A group of population elements, constitutes the sampling unit, instead of a single
element of the population
 Villages , wards , blocks , factories worker
 Steps for cluster sampling
1) Divide population into clusters
2) Randomly sample clusters
Section 4
Section 5
Section 3
Section 2Section 1
Cluster Sampling
Advantages
Easier to apply to larger Geographical area
Saves time and cost of travelling
 Examples
WHO selected 30 Clusters for the study of national immunization
coverage under EPI.
Cluster Sampling
Disadvantages
 Requires cluster/group-level information.
 Higher sampling error than random sampling techniques (less
efficient)
 Advised to take large number of small clusters rather than small
number of large clusters.
 In School example take sections 11th A , 12th B as clusters instead of
Class 11th and 12th .
Cluster Sampling
STRATIFICATION Vs CLUSTERING
STRATIFICATION CLUSTERING
Divide population into groups different From
each others: Sexes, Race, ages
( Homogeneous)
Divide population into comparable groups
Cities , Villages ,Wards , slums
( Heterogeneous)
Sample randomly from each group Randomly sample some of the groups
Less error compared to simple random More error compared to simple random
More expensive to obtain stratification
information before sampling
Reduce costs to sample only some areas or
organization
Probability Proportional to Size sampling
 Each sampling unit has equal chance of getting included in probability or
random sampling
 This chance can be different for every sampling unit
 Bigger the size of sampling unit or cluster, higher is chance of being
included in the sample or highest number of samples from that cluster.
 Proportional to size of subgroups / clusters.
Example = Selection of Delhi hospitals using PPS
 Sampling interval is calculated = total population/sample size.
 Eg = 8300/10=830, if there are 10 clusters and total population is 8300
 A Random number ( 3 digits) between 1 and 830 is selected by SRS using
random number table.
 If the random no. selected is 677.
 The first cluster selected will be found from the cumulative population column
A.
Probability Proportional to Size sampling
 Next add on the sampling interval and look for its location in the
cumulative frequency
 677+830 = 1507 ,Hospital C, and so on till 10 clusters
 Depending upon the sample size, equal no. taken from each cluster.
For n = 400 take 40 from each.
Limitation :
 We need a sampling frame i.e. Listing of all the units of the
population.
Probability Proportional to Size sampling
Hospital with large population, more than one cluster selected
Hospitals in Delhi Population of
female staff
Cumulative
population
Selected Clusters
A 700 700 1 677th location
B 450 1150
C 600 1750 2 677+830=1507
D 300 2050
E 1200 3250 3,4
F 100 3350
G 200 3550
H 1500 5050 5,6
I 500 5550
J 250 5800 7
K 2500 8300 8,9,10
Maximum
Clusters
selected
MULTI-STAGE SAMPLING
 Is selected in various stages but only last sample is studied .
• Employed in large country survey
• Different type of sampling methods may be used at different stage
Bhubaneswar
Zone
Wards
Slum
MULTI-STAGE SAMPLING
SRS- lottery
method
Simple random
sampling
Simple
random
sampling
Advantages:
 Good representative of population
 Improvement of other sampling method
Disadvantages:
 Difficult and complex method
MULTI-STAGE SAMPLING
MULTIPHASE SAMPLING
 Used when additional information for screening is not available and
resource limited.
 Collection of basic information from a larger sample..
 More specific information from successive sub samples.
 Sampling unit at each phase remains same structurally
E g:- In a tuberculosis survey(hypothetical):-
Phase 1:-Physical examination or Mantoux Test may be done in all cases of
the sample.
Phase 2 :-Chest x-ray may be done in Mantoux positive cases and in those
with clinical symptoms.
Phase 3 :- Sputum may be examined in x-ray positive cases only.
Hence it avoids the expenses.
MULTIPHASE SAMPLING
NON- PROBABILITY SAMPLING
NON-PROBABILITY SAMPLING
 Also called as judgment sampling.
 Units in the population do not have an equal chance or opportunity of
being selected in the sample.
 Believes in selecting the sample by choice and not by chance.
 Suffers defects , like personal bias and sampling error.
 Unscientific and less accurate method of sampling, hence it is only
occasionally used in research activities.
Types of Non-Probability Sampling
 Quota sampling
 Convenience Sampling
 Judgmental Sampling
 Purposive Sampling
 Quota Sampling
QUOTA SAMPLING
 The population is first segmented into mutually exclusive sub-
groups, similar to stratified sampling.
 Then judgment used to select subjects or units from each segment
based on a specified proportion till the specified no. of sampling
units have been achieved.
 For example, an interviewer may be told to sample 200 females and
300 males between the age of 45 and 60.
 It is this second step which makes the technique one of non-
probability sampling.
 In quota sampling the selection of the sample is non-random.
 Based on pre-specified quotas regarding demographics, attitudes,
behaviors, etc
 Advantages
 Contains specific subgroups in the proportions desired
 Does not require a sampling frame.
 Easy to manage, quick
 Disadvantages
 Dependent on subjective decisions
 Representativeness cannot be assured.
 only reflects population in terms of the quota, possibility of
bias in selection, no standard error
QUOTA SAMPLING
CONVENIENCE SAMPLING
 Sometimes known as grab or opportunity
sampling or accidental or haphazard sampling.
 Selection of whichever individuals are easiest to
reach
 It is done at the “convenience” of the researcher
 This type of sampling is most useful for pilot
testing.
Advantage: A sample selected for ease of access, immediately known
population group and good response rate.
Disadvantage: cannot generalise findings (do not know what population group
the sample is representative of) so cannot move beyond describing the sample.
•Problems of reliability
•Do respondents represent the
target population ? – is a question.
•Results are not generalizable
Use results that are easy to get
CONVENIENCE SAMPLING
JUDGMENTAL SAMPLING OR
PURPOSIVE SAMPLING
 - The researcher chooses the sample based on who they think would be
appropriate for the study. This is used primarily when there is a limited
number of people that have expertise in the area being researched
 Selected based on an experienced individual’s belief
 Advantages
 Based on the experienced person’s judgment
 Disadvantages
 Cannot measure the representativeness of the sample
 Useful when a population is hidden or difficult to gain access to. The contact with an
initial group is used to make contact with others.
 Respondents identify additional people to included in the study
 The defined target market is small and unique
 Compiling a list of sampling units is very difficult
 Advantages
 Identifying small, hard-to reach uniquely defined target population
 Useful in qualitative research
 access to difficult to reach populations (other methods may not yield any results).
 Disadvantages
 Bias can be present
 Limited generalizability
 not representative of the population and will result in a biased sample as it is self-
selecting.
SNOWBALL SAMPLING
Sequential Sampling
 Used in clinical trials for rare cases or costly drug.
 Sample size in not fixed.
Double Sampling
 Used for a costly research
 To reduce cost another variable is used.(closely related & cheap to study)
INTERPENETRATING
SUBSAMPLING(REPLICATED SAMPLING)
 Used by The National Sample Survey Organization(NSSO)
 Independent subsamples are drawn from the population by simple
random sampling without replacement.
 Distinct sampling unit should provide the required sample size
 A researcher has 10 research assistants each with his/her own equipment that they
use to measure time it takes for people to respond to a command
 A simple random sample of 80 people are taken
 Since the researcher believes the assistants will produce slightly biased measurements,
He divides 80 people into 10 subsamples of 8 people each.
 Each of the 10 assistant is assigned to one subsample
For example:
Advantages:
 Reduces work load
Disadvantages :
 Rarely used in clinical studies.
 Inter observer variation.
INTERPENETRATING
SUBSAMPLING(REPLICATED SAMPLING)
Consecutive sampling
Random digit dialling
Sampling by computer
Lot Quality Assurance Sampling
Sampling Error
 The error arises as a result of taking a sample from a population rather than
using the whole population
Example: Healthy population Hb level- 14.5g%
Estimated sample value – 13.5g%
 Factors :-
1.Sample size (inadequate)
2.Natural variability of individual readings (chance)
Unavoidable in sample study, can be minimized.
Type 1 error
 The probability of finding a difference with our sample
compared to population, and there really isn’t one….
 Known as the alpha error (or “type 1 error”)
Type 2 error
 The probability of not finding a difference that
actually exists between our sample compared to the
population…
 Known as the beta error (or “type 2 error”)
SUMMARY
 Sampling is used in all kinds of survey and research everywhere in the world .
 Because of lack of resources and feasibility the investigator is forced to collect
information from a sample rather than the entire population.
 Better sampling technique gives the best and appropriate result .
References
 Principles and Practice of Biostatistics- by Dr. J.V. Dixit (6th edition)
 Medical statistics – Principles and Methods – by K.R. Sundaram, S.N. Dwivedi, V.
Sreenivas. ( 2009)
 Methods in Biostatistics – by Dr. K.S. Negi (2nd edition)
 Park’s Textbook of Preventive and Social Medicine- by K. Park. (23rd Edition)
Thank you !

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Sampling techniques

  • 1. SAMPLING TECHNIQUES Guide : Prof (Dr.) O.P. Panigrahi Presenter: Dr. Adrija Roy
  • 2.  To understand the terms Sample and sampling.  To understand the need for taking a sample  To be able to enumerate various uses of sampling.  To understand different types and methods of sampling- its advantages, disadvantages , uses and examples.  To understand the basic types of sampling errors. Seminar Objectives…….
  • 3. To know whether the rice has been cooked properly or not only a few grains are enough…………..
  • 4. What is Sampling? Sampling is defined as the practice of taking a small part of a large bulk to represent the whole. According to Non Lin, “sampling design is a subset of cases from the population chosen to represent it. By using the subset, we can infer the characteristics of the population.”
  • 5. “ A sampling method is a scientific and objective procedure of selecting units from a population & providing a sample that is expected to be representative of the population as a whole.” Sampling
  • 6. Population is defined as The Entire Group under study. Sometimes it is also called as the “Universe.” Population Target population A set of elements larger than or different from the population sampled and to which the researcher would like to generalize study findings.
  • 7. Population versus Sample  Population = Parameter (N-size, μ-mean, σ -SD)  Sample = Statistic (n-size, x- Mean, s-SD)  Statistic gives estimates about parameter.
  • 8. Sample - characteristics  True representative of population.  Inference drawn refers only to defined population  Have its statistic almost equal to population parameter  Precision (sample size should be large)  Unbiased in character  Still difference will persist which may be due to the sampling error
  • 9. Sampling Unit  Smallest element of the population from which sample can be selected.  Generally well defined and identifiable  E.g. a) To select persons, sampling unit = individual person b) To select families, sampling unit = a family
  • 10. Sampling frame  A List of all the sampling units from which sample is drawn.  Example: Telephone directory  List of students in a college
  • 11. SAMPLING BREAKDOWN All universities in India All universities in Odisha List of all universities in odisha Three universities in Odisha
  • 12. Sampling scheme  Method of selecting sampling units from sampling frame Type of sampling Probability sampling Non-probability sampling
  • 13.  To gather data about the population in order to make an inference that can be generalized to the population The purpose of sampling…
  • 14. Define the target population Select a sampling frame Conduct fieldwork Determine if a probability or nonprobability sampling method will be chosen Plan procedure for selecting sampling units Determine sample size Select actual sampling units Stages in the Selection of a Sample
  • 15. •Probability sampling – a method of sampling that uses random selection so that all units/ cases in the population have an equal probability of being chosen. • Non-probability sampling – does not involve random selection and methods are not based on the rationale of probability theory. TYPES OF SAMPLING Sampling Techniques Probability Non- Probability
  • 16. Probability Sampling Simple random sampling Systematic sampling Stratified sampling Cluster sampling Multistage sampling Multiphase sampling Non-Probability Sampling Convenience sampling Judgmental sampling Purposive sampling Quota sampling Snowball sampling
  • 17.
  • 19. Features of Probability Sampling  Provides equal chance to every element of the population in getting selected in the sample  The results of probability sampling are more accurate and reliable.  It helps in the formulation of a true representative sample by eliminating human biases
  • 20. SIMPLE RANDOM SAMPLING Basic , most commonly and easiest method Principle – Laws of Chance All subsets of the frame are given an equal probability. Each element of the frame thus has an equal probability of selection. Two approaches are used in drawing a sample:- 1. Lottery method 2. Use of random number table
  • 21. Lottery method Two types of lottery method : 1) Lottery method with replacement - Possibility of selected twice or more 2) Lottery method without replacement - More convenient and provide more precise sample
  • 22. Lottery method Suppose 30 patients are required to be put in trial out of 300 available patients Note the serial number from 1 to 300 on a card & shuffle Draw out one and note the number reshuffle & draw the 2ndcard(Replace/or Don’t replace the card drawn) Repeat the process till 30 numbers are drawn
  • 23. Random number table  Use of randomly generated number tables  It provides use of random numbers specially designed for sampling purposes  Such type of random table are mostly found at the end of statistical textbooks
  • 25. SIMPLE RANDOM SAMPLING Every subset of a specified size n from the population has an equal chance of being selected
  • 26. Simple Random Sampling Advantages:  Sample is representative of the population  No need of prior information about the population  Equal and independent chance of selection of every element Disadvantages :  Not feasible in case of large population  Requires a lot of resources  More chances of misleading sample
  • 27. SYSTEMATIC RANDOM SAMPLING  Simple and convenient to adopt  Equal sampling interval.  Only the first unit is picked randomly.
  • 28. Steps for systematic random sampling  Number the units in the population from 1 to N  Decide on the n (sample size)  k = N/n = the interval size  Randomly select first unit between 1 to k  Take every kth unit
  • 29. Every member ( for example: every 20th person) is selected from a list of all population members. SYSTEMATIC RANDOM SAMPLING
  • 30. Advantages:  The sample is evenly spread over the entire population.  The sample is easy to select  Helps in organizing field work.  Cost effective Disadvantages:  Difficult if population is heterogeneous.  Pattern or periodicity  Precision of estimate is less as compared to SRS.  Sample may be biased if hidden periodicity in population coincides with that of selection.  Each element does not get equal chance  Ignorance of all in between elements
  • 31.  The population is divided into two or more groups called strata, according to some criterion, such as geographic location, grade level, age, or income, and subsamples are randomly selected from each strata. Stratified Random Sampling
  • 32.  When the population is not homogeneous  Heterogeneous population is divided into homogeneous sections or strata Stratified Random Sampling
  • 33.  Samples are selected from each strata  Simple random or systematic sampling  Example: Entire population can be divided into several socioeconomic groups or strata Stratified Random Sampling
  • 34. Alcohol Consumption among a Population: Stratified Random Sampling 20 - 30 years old (homogeneous within) (alike) 30 - 40 years old (homogeneous within) (alike) 40 - 50 years old (homogeneous within) (alike) Heterogeneous (different) between Heterogeneous (different) between Stratified by Age
  • 35. Advantages: 1. Every unit in the stratum has equal chance of being selected . 2. Characteristic of each stratum can be estimated and comparisons made. Disadvantages: 1. Requires accurate information on proportions of each stratum 2. Stratified lists costly to prepare. Stratified Random Sampling
  • 36. Cluster Sampling Used to cover large-spread area. The main reason for cluster sampling is “cost efficiency” (economy and feasibility)  Cluster :  A group of population elements, constitutes the sampling unit, instead of a single element of the population  Villages , wards , blocks , factories worker  Steps for cluster sampling 1) Divide population into clusters 2) Randomly sample clusters
  • 37. Section 4 Section 5 Section 3 Section 2Section 1 Cluster Sampling
  • 38. Advantages Easier to apply to larger Geographical area Saves time and cost of travelling  Examples WHO selected 30 Clusters for the study of national immunization coverage under EPI. Cluster Sampling
  • 39. Disadvantages  Requires cluster/group-level information.  Higher sampling error than random sampling techniques (less efficient)  Advised to take large number of small clusters rather than small number of large clusters.  In School example take sections 11th A , 12th B as clusters instead of Class 11th and 12th . Cluster Sampling
  • 40. STRATIFICATION Vs CLUSTERING STRATIFICATION CLUSTERING Divide population into groups different From each others: Sexes, Race, ages ( Homogeneous) Divide population into comparable groups Cities , Villages ,Wards , slums ( Heterogeneous) Sample randomly from each group Randomly sample some of the groups Less error compared to simple random More error compared to simple random More expensive to obtain stratification information before sampling Reduce costs to sample only some areas or organization
  • 41.
  • 42. Probability Proportional to Size sampling  Each sampling unit has equal chance of getting included in probability or random sampling  This chance can be different for every sampling unit  Bigger the size of sampling unit or cluster, higher is chance of being included in the sample or highest number of samples from that cluster.  Proportional to size of subgroups / clusters.
  • 43. Example = Selection of Delhi hospitals using PPS  Sampling interval is calculated = total population/sample size.  Eg = 8300/10=830, if there are 10 clusters and total population is 8300  A Random number ( 3 digits) between 1 and 830 is selected by SRS using random number table.  If the random no. selected is 677.  The first cluster selected will be found from the cumulative population column A. Probability Proportional to Size sampling
  • 44.  Next add on the sampling interval and look for its location in the cumulative frequency  677+830 = 1507 ,Hospital C, and so on till 10 clusters  Depending upon the sample size, equal no. taken from each cluster. For n = 400 take 40 from each. Limitation :  We need a sampling frame i.e. Listing of all the units of the population. Probability Proportional to Size sampling
  • 45. Hospital with large population, more than one cluster selected Hospitals in Delhi Population of female staff Cumulative population Selected Clusters A 700 700 1 677th location B 450 1150 C 600 1750 2 677+830=1507 D 300 2050 E 1200 3250 3,4 F 100 3350 G 200 3550 H 1500 5050 5,6 I 500 5550 J 250 5800 7 K 2500 8300 8,9,10 Maximum Clusters selected
  • 46. MULTI-STAGE SAMPLING  Is selected in various stages but only last sample is studied . • Employed in large country survey • Different type of sampling methods may be used at different stage
  • 48. Advantages:  Good representative of population  Improvement of other sampling method Disadvantages:  Difficult and complex method MULTI-STAGE SAMPLING
  • 49. MULTIPHASE SAMPLING  Used when additional information for screening is not available and resource limited.  Collection of basic information from a larger sample..  More specific information from successive sub samples.  Sampling unit at each phase remains same structurally
  • 50. E g:- In a tuberculosis survey(hypothetical):- Phase 1:-Physical examination or Mantoux Test may be done in all cases of the sample. Phase 2 :-Chest x-ray may be done in Mantoux positive cases and in those with clinical symptoms. Phase 3 :- Sputum may be examined in x-ray positive cases only. Hence it avoids the expenses. MULTIPHASE SAMPLING
  • 52. NON-PROBABILITY SAMPLING  Also called as judgment sampling.  Units in the population do not have an equal chance or opportunity of being selected in the sample.  Believes in selecting the sample by choice and not by chance.  Suffers defects , like personal bias and sampling error.  Unscientific and less accurate method of sampling, hence it is only occasionally used in research activities.
  • 53. Types of Non-Probability Sampling  Quota sampling  Convenience Sampling  Judgmental Sampling  Purposive Sampling  Quota Sampling
  • 54. QUOTA SAMPLING  The population is first segmented into mutually exclusive sub- groups, similar to stratified sampling.  Then judgment used to select subjects or units from each segment based on a specified proportion till the specified no. of sampling units have been achieved.  For example, an interviewer may be told to sample 200 females and 300 males between the age of 45 and 60.  It is this second step which makes the technique one of non- probability sampling.  In quota sampling the selection of the sample is non-random.  Based on pre-specified quotas regarding demographics, attitudes, behaviors, etc
  • 55.  Advantages  Contains specific subgroups in the proportions desired  Does not require a sampling frame.  Easy to manage, quick  Disadvantages  Dependent on subjective decisions  Representativeness cannot be assured.  only reflects population in terms of the quota, possibility of bias in selection, no standard error QUOTA SAMPLING
  • 56. CONVENIENCE SAMPLING  Sometimes known as grab or opportunity sampling or accidental or haphazard sampling.  Selection of whichever individuals are easiest to reach  It is done at the “convenience” of the researcher  This type of sampling is most useful for pilot testing.
  • 57. Advantage: A sample selected for ease of access, immediately known population group and good response rate. Disadvantage: cannot generalise findings (do not know what population group the sample is representative of) so cannot move beyond describing the sample. •Problems of reliability •Do respondents represent the target population ? – is a question. •Results are not generalizable Use results that are easy to get CONVENIENCE SAMPLING
  • 58. JUDGMENTAL SAMPLING OR PURPOSIVE SAMPLING  - The researcher chooses the sample based on who they think would be appropriate for the study. This is used primarily when there is a limited number of people that have expertise in the area being researched  Selected based on an experienced individual’s belief  Advantages  Based on the experienced person’s judgment  Disadvantages  Cannot measure the representativeness of the sample
  • 59.  Useful when a population is hidden or difficult to gain access to. The contact with an initial group is used to make contact with others.  Respondents identify additional people to included in the study  The defined target market is small and unique  Compiling a list of sampling units is very difficult  Advantages  Identifying small, hard-to reach uniquely defined target population  Useful in qualitative research  access to difficult to reach populations (other methods may not yield any results).  Disadvantages  Bias can be present  Limited generalizability  not representative of the population and will result in a biased sample as it is self- selecting. SNOWBALL SAMPLING
  • 60. Sequential Sampling  Used in clinical trials for rare cases or costly drug.  Sample size in not fixed. Double Sampling  Used for a costly research  To reduce cost another variable is used.(closely related & cheap to study)
  • 61. INTERPENETRATING SUBSAMPLING(REPLICATED SAMPLING)  Used by The National Sample Survey Organization(NSSO)  Independent subsamples are drawn from the population by simple random sampling without replacement.  Distinct sampling unit should provide the required sample size
  • 62.  A researcher has 10 research assistants each with his/her own equipment that they use to measure time it takes for people to respond to a command  A simple random sample of 80 people are taken  Since the researcher believes the assistants will produce slightly biased measurements, He divides 80 people into 10 subsamples of 8 people each.  Each of the 10 assistant is assigned to one subsample For example:
  • 63. Advantages:  Reduces work load Disadvantages :  Rarely used in clinical studies.  Inter observer variation. INTERPENETRATING SUBSAMPLING(REPLICATED SAMPLING)
  • 64. Consecutive sampling Random digit dialling Sampling by computer Lot Quality Assurance Sampling
  • 65. Sampling Error  The error arises as a result of taking a sample from a population rather than using the whole population Example: Healthy population Hb level- 14.5g% Estimated sample value – 13.5g%  Factors :- 1.Sample size (inadequate) 2.Natural variability of individual readings (chance) Unavoidable in sample study, can be minimized.
  • 66. Type 1 error  The probability of finding a difference with our sample compared to population, and there really isn’t one….  Known as the alpha error (or “type 1 error”)
  • 67. Type 2 error  The probability of not finding a difference that actually exists between our sample compared to the population…  Known as the beta error (or “type 2 error”)
  • 68. SUMMARY  Sampling is used in all kinds of survey and research everywhere in the world .  Because of lack of resources and feasibility the investigator is forced to collect information from a sample rather than the entire population.  Better sampling technique gives the best and appropriate result .
  • 69. References  Principles and Practice of Biostatistics- by Dr. J.V. Dixit (6th edition)  Medical statistics – Principles and Methods – by K.R. Sundaram, S.N. Dwivedi, V. Sreenivas. ( 2009)  Methods in Biostatistics – by Dr. K.S. Negi (2nd edition)  Park’s Textbook of Preventive and Social Medicine- by K. Park. (23rd Edition)