Sampling Chapter 6.

Slides:



Advertisements
Similar presentations
MISUNDERSTOOD AND MISUSED
Advertisements

SAMPLING DESIGN AND PROCEDURE
Who and How And How to Mess It up
Beginning the Research Design
Sampling.
Sampling Prepared by Dr. Manal Moussa. Sampling Prepared by Dr. Manal Moussa.
Chapter 11 Sampling Design. Chapter 11 Sampling Design.
7-1 Chapter Seven SAMPLING DESIGN. 7-2 Sampling What is it? –Drawing a conclusion about the entire population from selection of limited elements in a.
CHAPTER 7, the logic of sampling
Chapter Outline  Populations and Sampling Frames  Types of Sampling Designs  Multistage Cluster Sampling  Probability Sampling in Review.
Sampling Moazzam Ali.
Sampling Designs and Sampling Procedures
McGraw-Hill/Irwin McGraw-Hill/Irwin Copyright © 2009 by The McGraw-Hill Companies, Inc. All rights reserved.
Sampling January 9, Cardinal Rule of Sampling Never sample on the dependent variable! –Example: if you are interested in studying factors that lead.
Sampling. Concerns 1)Representativeness of the Sample: Does the sample accurately portray the population from which it is drawn 2)Time and Change: Was.
CRIM 430 Sampling. Sampling is the process of selecting part of a population Target population represents everyone or everything that you are interested.
Sampling: Theory and Methods
Foundations of Sociological Inquiry The Logic of Sampling.
CHAPTER 12 – SAMPLING DESIGNS AND SAMPLING PROCEDURES Zikmund & Babin Essentials of Marketing Research – 5 th Edition © 2013 Cengage Learning. All Rights.
SAMPLING.
7-1 Chapter Seven SAMPLING DESIGN. 7-2 Selection of Elements Population Element the individual subject on which the measurement is taken; e.g., the population.
Basic Sampling & Review of Statistics. Basic Sampling What is a sample?  Selection of a subset of elements from a larger group of objects Why use a sample?
1 Hair, Babin, Money & Samouel, Essentials of Business Research, Wiley, Learning Objectives: 1.Understand the key principles in sampling. 2.Appreciate.
The Logic of Sampling. Methods of Sampling Nonprobability samplesNonprobability samples –Used often in Qualitative Research Probability or random samplesProbability.
© 2013 Cengage Learning. All Rights Reserved. May not be scanned, copied or duplicated, or posted to a publicly accessible website, in whole or in part.
Population and sample. Population: are complete sets of people or objects or events that posses some common characteristic of interest to the researcher.
DTC Quantitative Methods Survey Research Design/Sampling (Mostly a hangover from Week 1…) Thursday 17 th January 2013.
Chapter 7 The Logic Of Sampling. Observation and Sampling Polls and other forms of social research rest on observations. The task of researchers is.
Chapter 7 The Logic Of Sampling The History of Sampling Nonprobability Sampling The Theory and Logic of Probability Sampling Populations and Sampling Frames.
Chapter 6: 1 Sampling. Introduction Sampling - the process of selecting observations Often not possible to collect information from all persons or other.
Data Collection & Sampling Dr. Guerette. Gathering Data Three ways a researcher collects data: Three ways a researcher collects data: By asking questions.
LIS 570 Selecting a Sample.
7: The Logic of Sampling. Introduction Nobody can observe everything Critical to decide what to observe Sampling –Process of selecting observations Probability.
Chapter 7 The Logic Of Sampling.
Essentials of Marketing Research Chapter 12: Sampling Designs and Sampling Procedures.
Sampling technique  It is a procedure where we select a group of subjects (a sample) for study from a larger group (a population)
CHAPTER 7, THE LOGIC OF SAMPLING. Chapter Outline  A Brief History of Sampling  Nonprobability Sampling  The Theory and Logic of Probability Sampling.
Sampling. Census and Sample (defined) A census is based on every member of the population of interest in a research project A sample is a subset of the.
PRESENTED BY- MEENAL SANTANI (039) SWATI LUTHRA (054)
Sampling Design and Procedure
Institute of Professional Studies School of Research and Graduate Studies Selecting Samples and Negotiating Access Lecture Eight.
Lecture 5.  It is done to ensure the questions asked would generate the data that would answer the research questions n research objectives  The respondents.
Logic of Sampling Cornel Hart February 2007.
Module 9: Choosing the Sampling Strategy
Chapter 14 Sampling PowerPoint presentation developed by:
Types of Samples Dr. Sa’ed H. Zyoud.
Chapter 14 Sampling.
Sampling.
Logic of Sampling (Babbie, E. & Mouton, J The Practice of Social Research. Cape Town:Oxford). C Hart February 2007.
Essentials of Marketing Research William G. Zikmund
Part Two THE DESIGN OF RESEARCH
Sampling Designs and Sampling Procedures
Graduate School of Business Leadership
Population, Samples, and Sampling Descriptions
SAMPLING (Zikmund, Chapter 12.
4 Sampling.
Meeting-6 SAMPLING DESIGN
Sampling: Design and Procedures
Sampling: Theory and Methods
Sampling Design.
Sampling.
SAMPLING (Zikmund, Chapter 12).
Sampling Design Basic concept
Sampling Designs and Sampling Procedures
Sampling Methods.
BUSINESS MARKET RESEARCH
Chapter 8 SAMPLING and SAMPLING METHODS
CS639: Data Management for Data Science
Presentation transcript:

Sampling Chapter 6

Introduction Sampling - the process of selecting observations Often not possible to collect information from all persons or other units you wish to study Often not necessary to collect data from everyone out there Allows researcher to make a small subset of observations and then generalize to the rest of the population

The Logic of Probability Sampling Enables us to generalize findings from observing cases to a larger unobserved population Representative - each member of the population has a known and equal chance of being selected into the sample Since we are not completely homogeneous, our sample must reflect – and be representative of – the variations that exist among us

Conscious and Unconscious Sampling Bias Be conscious of bias – when sample is not fully representative of the larger population from which it was selected A sample is representative if its aggregate characteristics closely match the population’s aggregate characteristics; EPSEM; random sampling

Sampling Terminology 1 Sample Element – who or what are we studying (student) Population – whole group (college freshmen) Study population – where the sample is selected (our school’s freshmen) Sampling unit – element selected for studying (individual students) Sampling frame – actual list of units to be selected (our school’s enrollment list)

Sampling Terminology 2 Observation Unit – element or aggregation of elements from which information is collected Variable – A set of mutually exclusive attributes – gender, age, employment status, year of studies, etc. Population Parameter – summary description of a given variable in a population Sample Statistic – summary description of a given variable in a sample; we use sample statistics to make estimates or inferences of population parameters

Sampling Terminology 3 Sampling error – since sample is not an exact representation of the population, error results; we can estimate the degree to be expected Confidence Levels and Confidence Intervals Two key components of sampling error We express the accuracy of our sample statistics in terms of a level of confidence that the statistics fall within a specified interval from the parameter

Sampling Designs 1 Simple Random Sampling - each element in a sampling frame is assigned a number, choices are then made through random number generation as to which elements will be included in your sample Systematic Sampling – elements in the total list are chosen (systematically) for inclusion in the sample list of 10,000 elements, we want a sample of 1,000, select every tenth element choose first element randomly

Sampling Designs 2 Stratified sampling – ensures that appropriate numbers are drawn from homogeneous subsets of that population Disproportionate stratified sampling – way of obtaining sufficient # of rare cases by selecting a disproportionate # Multistage cluster sampling – compile a stratified group (cluster), sample it, then subsample that set...

National Crime Victimization Survey Seeks to represent the nationwide population of persons 12+ living in households (≈ 42K units, 74K occupants in 2004) First defined are primary sampling units (PSUs) Largest are automatically included, smaller ones are stratified by size, population density, reported crimes, and other variables into about 150 strata Census enumeration districts are selected (CED) Clusters of 4 housing units from each CED are selected

British Crime Survey First stage – 289 Parliamentary constituencies, stratified by geographic area and population density Two sample points were selected, which were divided into four segments with equal #’s of delivery addresses One of these four segments was selected at random, then disproportionate sampling was conducted to obtain a greater number of inner- city respondents Household residents aged 16+ were listed, and one was randomly selected by interviewers (n=37,213 in 2004)

Nonprobability Sampling Purposive sampling - selecting a sample on the basis of your judgment and the purpose of the study Quota sampling - units are selected so that total sample has the same distribution of characteristics as are assumed to exist in the population being studied Reliance on available subjects - stopping people at a street corner or some other location Snowball sampling - You interview some individuals, and then ask them to identify others who will participate in the study, who ask others…etc., etc.

Example: Snowball Sampling To study cannabis users, Hammersley and Leon (2006) gathered a snowball sample of 176 University students who had used marijuana at least once. Extensive interviews were then conducted with the University students in the sample. Their results showed that there were two types of users—those who used cannabis on a regular basis and those who used cannabis on occasion. The results also showed that users experienced both positive and negative effects from using marijuana and the patterns of use were more similar to patterns of alcohol and tobacco use than to patterns of controlled substance use. Hammersley, R. & Leon, V. (2006). Patterns of cannabis use and positive and negative experiences of use amongst university students. Addiction Research and Theory, 14(2), 189- 205.