Participant Selection in Research

undefined
SELECTING RESEARCH
PARTICIPANTS
 
Overview
Population and samples
Generalization
Sampling Methods
Probability
Simple random
Systematic
Stratified random
Proportionate random
Nonprobability
Convenience
Snowball
Quota
Cluster
Multi-stage
Choosing Participants
 
High school students’ attitudes towards unrestricted
searches
Who should take the survey?
All high school students in the nation?
All 5,000 students in a local school district?
Only high schools that have reported problems with drugs &
weapons?
 
Bottom line:
Not everyone can participate
Interpretation of data depends on who are participants are
and how they were selected
Populations & Samples
 
Population
Entire set of individuals of interest
Usually targeted, not everyone on the planet
 
Sample
Set of individuals selected from a population
Intended to represent the population
Sampling & Generalization
 
Generalization
Apply results from sample to population
Depends on how representative the sample is
 
Selection bias
Sampling method used that leads to biased sample
Sampling Methods
 
Probability sampling
Can determine probability that each member of
population will be selected for sample
Population known – to establish a sampling frame
 
Even through random selection, sample may not be
representative
Larger sample size increases the likelihood that sample
looks like population
Probability Sampling
 
Simple Random Sampling
Every member of population has an equal &
independent chance of being selected
 
Reduces systematic bias
Does not guarantee a representative sample
 
Can be difficult & time consuming, or even not possible
Sampling
Systematic Sampling
Every kth element is sampled
Probability Sampling
 
Stratified random
Population is divided into strata
Random sample drawn from each stratum
Increases chances of obtaining representative sample
But may underrepresent or overrepresent some strata
 
150 Accounting Majors
200 Biology Majors
100 Art Majors
250 Psychology Majors
Sample (
N
 = 50)
10 Accounting
10 Biology
10 Art
10 Psychology
10 Math
100 Math Majors
Probability Sampling
 
Proportionate random
Proportions of different groups in the population are reflected
sample strata
Even greater chance that sample is representative
150 Accounting Majors (19%)
200 Biology Majors (25%)
100 Art Majors (13%)
250 Psychology Majors (31%)
Sample (
N
 = 50)
10 Accounting (20%)
12 Biology (24%)
6 Art (12%)
16 Psychology (32%)
6 Math (12%)
100 Math Majors (13%)
Total Population = 800 Majors
Probability Sampling
 
Cluster
Used w/ large populations
Sampling is at group level rather than individual level
Groups are randomly sampled
School District 1
School District 2
School District 3
School District 4
Sample consists of everyone
from District 1 and 4
School District 5
Probability Sampling
 
Multistage sampling
First, identify clusters
Randomly sample
Next, sample individuals from clusters
 
Note: may be necessary to use more than 2 stages
Nonprobability Sampling
 
Convenience Sampling
Sampling individuals who are readily available
 
Advantages
Time, money
Might be the only method possible
Disadvantages
Assumes characteristics that make your sample
convenient are unrelated to variables of interest
Difficult to know if (or how) your sample is biased
Nonprobability Sampling
 
Snowball sampling
Identify some participant
Have them refer others
 
Quota
Mimics stratified, but not random
undefined
1.
Explain how stratified and proportionate sampling
are similar and how they are different.
2.
What sampling methods are likely to ensure the
greatest chance that our sample will represent the
population well? Why?
Mini-Review
Slide Note
Embed
Share

Exploring the intricate process of selecting research participants, this content covers topics such as sampling methods, population versus samples, choosing the right participants, and the importance of generalization in research. It delves into the significance of probability and nonprobability sampling techniques, the challenges of ensuring representativeness, and the impact of selection bias on study outcomes.

  • Research methods
  • Participant selection
  • Sampling techniques
  • Generalization
  • Probability sampling

Uploaded on Sep 30, 2024 | 0 Views


Download Presentation

Please find below an Image/Link to download the presentation.

The content on the website is provided AS IS for your information and personal use only. It may not be sold, licensed, or shared on other websites without obtaining consent from the author.If you encounter any issues during the download, it is possible that the publisher has removed the file from their server.

You are allowed to download the files provided on this website for personal or commercial use, subject to the condition that they are used lawfully. All files are the property of their respective owners.

The content on the website is provided AS IS for your information and personal use only. It may not be sold, licensed, or shared on other websites without obtaining consent from the author.

E N D

Presentation Transcript


  1. SELECTING RESEARCH PARTICIPANTS

  2. Overview Population and samples Generalization Sampling Methods Probability Simple random Systematic Stratified random Proportionate random Nonprobability Convenience Snowball Quota Cluster Multi-stage

  3. Choosing Participants High school students attitudes towards unrestricted searches Who should take the survey? All high school students in the nation? All 5,000 students in a local school district? Only high schools that have reported problems with drugs & weapons? Bottom line: Not everyone can participate Interpretation of data depends on who are participants are and how they were selected

  4. Populations & Samples Population Entire set of individuals of interest Usually targeted, not everyone on the planet Sample Set of individuals selected from a population Intended to represent the population

  5. Sampling & Generalization Generalization Apply results from sample to population Depends on how representative the sample is Selection bias Sampling method used that leads to biased sample

  6. Sampling Methods Probability sampling Can determine probability that each member of population will be selected for sample Population known to establish a sampling frame Even through random selection, sample may not be representative Larger sample size increases the likelihood that sample looks like population

  7. Probability Sampling Simple Random Sampling Every member of population has an equal & independent chance of being selected Reduces systematic bias Does not guarantee a representative sample Can be difficult & time consuming, or even not possible

  8. Sampling Systematic Sampling Every kth element is sampled

  9. Probability Sampling Stratified random Population is divided into strata Random sample drawn from each stratum Increases chances of obtaining representative sample But may underrepresent or overrepresent some strata 150 Accounting Majors Sample (N = 50) 10 Accounting 10 Biology 10 Art 10 Psychology 10 Math 200 Biology Majors 100 Art Majors 250 Psychology Majors 100 Math Majors

  10. Probability Sampling Proportionate random Proportions of different groups in the population are reflected sample strata Even greater chance that sample is representative Total Population = 800 Majors 150 Accounting Majors (19%) Sample (N = 50) 10 Accounting (20%) 12 Biology (24%) 6 Art (12%) 16 Psychology (32%) 6 Math (12%) 200 Biology Majors (25%) 100 Art Majors (13%) 250 Psychology Majors (31%) 100 Math Majors (13%)

  11. Probability Sampling Cluster Used w/ large populations Sampling is at group level rather than individual level Groups are randomly sampled School District 1 School District 2 Sample consists of everyone from District 1 and 4 School District 3 School District 4 School District 5

  12. Probability Sampling Multistage sampling First, identify clusters Randomly sample Next, sample individuals from clusters Note: may be necessary to use more than 2 stages

  13. Nonprobability Sampling Convenience Sampling Sampling individuals who are readily available Advantages Time, money Might be the only method possible Disadvantages Assumes characteristics that make your sample convenient are unrelated to variables of interest Difficult to know if (or how) your sample is biased

  14. Nonprobability Sampling Snowball sampling Identify some participant Have them refer others Quota Mimics stratified, but not random

  15. Mini-Review Explain how stratified and proportionate sampling are similar and how they are different. What sampling methods are likely to ensure the greatest chance that our sample will represent the population well? Why? 1. 2.

Related


More Related Content

giItT1WQy@!-/#giItT1WQy@!-/#giItT1WQy@!-/#giItT1WQy@!-/#