Title: Another poll ruins Federal Election suspense
1Another poll ruins Federal Election suspense.
- On January 22, 2006 the research firm SES
sampled 1,200 Canadians on their voting
intentions in the upcoming Federal election.
These were the results of the poll - Conservative 36.4
- Liberal 30.1
- NDP 17.4
- Bloc Quebecois 10.6
- Green/Other 5.6
- The company claimed these estimates accurate to
within /- 3 percentage points 19 times out of
20.
2The next day (January 23, 2006) several million
Canadian voters cast their votes as follows.
- Conservative 36.3
- Liberal 30.2
- NDP 17.5
- Bloc Quebecois 10.5
- Green/Other 5.5
- Q. How could SES Research, with a tiny sample of
1200 predict with amazing accuracy the voting
behavior of several million Canadiansand ruin
much of the suspense on election night? - A. With careful sampling techniques!!!
3And a more recent poll ruins Provincial Election
suspense.
- On October 8, 2007 the research firm SES sampled
800 Ontarians on their voting intentions in the
upcoming Provincial election. The results of the
poll are below (actual election results on
October 10 in brackets) - Conservative 30.5 (31.4)
- Liberal 42.6 (42.1)
- NDP 17.5 (17.1)
- Green/Other 9.4 (8.1)
- The company claimed that these estimates were
accurate to within /- 5 percentage points 19
times out of 20.and they were correct!!!
4A short and painless history of sampling
- Sampling has developed in step with political
polling elections allow researchers to test
sampling designs. - The infamous Literary Digest Presidential poll (a
huge sample that was embarrassingly wrong in its
Presidential prediction). - Gallup from quota to probability sampling.
- Probability Sampling A sample will be
representative of the population from which it is
drawn if all members have a known (to the
researcher), non-zero chance of selection.
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7- In addition to problems with sampling people who
are convenient to the researcher, a
researchers personal biases (conscious
unconscious) may affect selection in ways that
make the sample unrepresentative of the
population. - Sampling bias means those selected into the
sample are NOT typical or representative of the
larger population from which they have been
chosenand usually the population that the
researcher wants to generalize results to!
8Basic Principles Concepts in Sampling.
- A sample is representative if sample
characteristics closely resemble population
characteristics. - This can only happen if ALL members of the
population have a known, non-zero chance of being
selected into the sample (probability samples). - EPSEM samples ensure that all members of the
population have an equal-chance of being
selected. - Probability samples are always more
representative than non-probability samples and
allow researchers to estimate the margin of error
(e.g. / - 3 percentage points 19 times out of
20).
9Concepts in Sampling.
- Element Sampling unit about which information
is to be collected analyzed (unit of analysis). - Population Set of all elements that exist at
the time of study (spatially temporally
defined). - Sampling Unit An entity of entities considered
for selection at some stage of the design. In
single sampling designs the unit element are
identical. In complex designs, there can be
different units (e.g., 1st stage cities 2nd
stage blocks 3rd stage household 4th
stage adults in households). - Sampling Frame The list(s) of sampling units
from which a sample is to be selected.
Multi-staged sampling designs will have multiple
sampling frames.
10Simple Random Sampling (SRS)
- Simple random sampling (SRS) is the basic
probability design and is incorporated at some
stage in ALL probability sampling designs. - Each unit has an n / N chance or probability
of being selected into the sample.where n
the size of the sample and N the size of the
population. (e.g., n 500 N 300,000
chance of being selected is 500 / 300,000
.0016) - With SRS, you need an accurate and complete
sampling frame.each element in the population of
interest is listed once and only once!
11Summary of Probability Sample Designs.
- Simple Random Sampling Assign a unique number
to each sampling unit select sampling unit
numbers using a random number table or generator. - Systematic Random Sampling Determine the
sampling interval select the first unit
randomly, select remaining units using interval
increments. - Stratified Random Sampling Determine strata
select from each stratum a random sample
proportionate (or disproportionate) to the size
of the stratum in the population of interest. - Multi-stage Area Sampling Determine the number
of levels or areas and from each level or area
select randomly.
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13Systematic Sampling.
- The researcher selects every k element from the
sampling frame after a random start. (e.g., you
want to select a sample of 100 persons from a
population of 10,000. After a random start
between 1 and 100, you will select every one
hundredth individual..(k N / n 10,000 / 100
100).where k is the sampling interval N
is the size of the population and n is the
size of the sample. - If your random starting number was 14, you will
pick the 14th person on your list, followed by
the 114th person, followed by the 214th person,
and so on until you have drawn your sample of 100
people.
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15Stratified Sampling.
- Stratified sampling can improve the
representativeness of our sample by ensuring
that different groups in the population are
adequately represented in the sample. - You draw a specified number / percentage of
elements from subgroups in the populationknown
as strata. - Common strata age groups, education levels,
ethnic groups, language groups, political
affiliation, gender, occupational groups. - Randomly select your sample within strata.
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17More on Stratified Sampling..
- For example, the student population of a college
is 1000. Of these, 700 (70) are from Ontario,
200 (20) are from other provinces, and 100
(10)are from outside Canada. - With stratified sampling we could ensure that in
a sample of 100 students, we obtain 70 (70) from
Ontario, 20 (20) from other provinces, and 10
(10) from outside Canada by randomly selecting
within these three strata. - This is known as proportionate stratified
sampling.
18And even more on Stratified Sampling.
- For example, if a population of executives in a
major company were 10,000, and 7000 were male and
3000 were femalewe could divide the population
into two strata listing all male and female
executives. - And then use proportionate or disproportionate
stratified sampling to construct our sample.
With proportionate stratified sampling our sample
would be 70 male and 30 female with
disproportionate stratified sampling our sample
could be 50 male and 50 female.
19Multi-stage or cluster sampling.
- This design assumes that any population can be
regarded as comprising a hierarchy of sampling
units (e.g., a university can be broken down into
faculties, departments, sections and classes
Canada can be broken down into provinces,
counties or regions, cities, city blocks, and
households). - With cluster sampling we randomly sample down the
hierarchy of sampling units in a population of
interest.
20More on multi-stage or cluster sampling.
- Compile a list of all cities in Ontario and
randomly select cities from this list. - Within each of the selected cities, compile a
list of all residential city blocks and randomly
select a number of residential city blocks. - Within each of the selected residential city
blocks, compile a list of all households and
randomly select our sample of households.
21And more on multi-stage or cluster sampling.
- Can save you a lot of money!
- Especially useful when it is difficult to put
together an adequate sampling frame. - Mechanics of cluster sampling are
straightforward. - On the downside, the selection of clusters
depends on the goals of the study, population
distribution, and elements to be studied. - Generally produces the least representative of
the probability designs..and hence the least
accurate sample estimates.
22Non-Probability Sample Designs.
- Chance of population element being selected into
sample is unknownas is the representativeness. - Cheaper, easier to implement designs, suited to
preliminary studies of small populations. - Purposive sampling sample is drawn based on the
experience judgement of researcher(s).
- Quota sampling a non-probability analogue to
stratified samplingresearcher selects a quota of
respondents for the sample in a non-random way. - Convenience sampling accidental samplingit is
anything but random.avoid accidents. - Snowball (Referral) sampling initial members of
the sample used as informants to find other
elements.
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25Measurement and Questionnaire Design
- A common challenge for all social research
methods is accurate measurement. - Questionnaires are the most common measurement
instrument in the social sciences.not only in
survey research but in experimental designs,
focus groups, and participant observation. - Conceptual definitions are linguistic or verbal
definitions of concepts Operational definitions
are the set of procedures, activities or
questions that researchers develop to empirically
measure concepts.
26Conceptual Dimensions of Alienation
- Powerlessness Behaviors cannot determine
outcomes. - Meaninglessness Minimal standards for clarity
in thinking are lacking. - Normlessness Socially unapproved behaviors are
required to get socially approved goals. - Isolation Devaluing of goals beliefs that are
highly valued. - Self-estrangement Behaviors inherently
unrewarding to you, and unrelated to self-image
and/or self-development.
27Operationalizing Alienation
- Seeman developed survey questions that measured
the 5 conceptual dimensions of alienation. A
series of questions were designed to measure
powerlessness, meaninglessness, isolation,
normlessness, and self-estrangement. - Example To measure powerlessness, Seeman asked
the following question Suppose your city was
considering a bylaw that you believed to be
unjust or harmful. What do you think you could
do?
28More on operationalizing alienation
- If you made an effort to change this bylaw, how
likely is it that you would succeed? - If such a case arose, how likely is it that you
would try to do something else about the bylaw. - Would you try to influence a politician?
29Still more on operationalization
- Survey questions operationalize our
concepts.transform abstract concepts into
observations. - Operationalization enables us to test hypotheses.
- Operationalization brings theoretical concepts
into the real world where we can measure it,
discover causes effects, test ideas
hypotheses.
30Measurement
- Measurement is the process where we map
phenomena using numbers or values. - Questionnaires, map social phenomena using
numbers that correspond with responses to (the
values and value labels in SPSS) - What is your current religious affiliation?
- 1. Protestant
- 2. Catholic
- 3. Jewish
- 4. Muslim
- 5. Other
31Types of Measurement
- Nominal Measurement Assign numbers to social
categories.no special order -
- 1 5 3 2 4
(Range) -
(Phenomenon) - What religion are you? 1. Catholic
-
2. Protestant -
3. Jewish -
4. Muslim -
5. Other
32Types of Measurement
- Ordinal Measurement Measures social phenomenon
that can be rank-ordered or sequenced in terms of
more or less of the phenomenon being measured. -
- 1 2 3 4 5
(Range) -
(Phenomenon) - How often do you attend religious services?
- 1. Never
- 2. A few times a year
- 3. Once a month
- 4. Once a week
- 5. More than once a week
33Types of Measurement
- Interval Measurement Measures social phenomenon
on the basis of equal underlying intervals on the
measurement scale. -
- 0 1 2 3 4
5 (Range) -
(Phenomenon) - Please indicate your overall level of
approval for the government of Ontario.
- 0 -------- 1 -------- 2 -------- 3
-------- 4 -------- 5 - Do not approve
Total Approval - .where the meaning of 0 is arbitrary or
created by the researcher.
34Types of Measurement
- Ratio Measurement Measures social phenomenon on
the basis of equal underlying intervals on the
measurement scale with a non-arbitrary zero
point. -
- 0 1 2 3 4
(Range) -
(Phenomenon) - How many siblings do you have?
- ____
Number of siblings
35More on Measurement.
- Ratio-level variables contain the most
information . So can always measure down from
ratio to interval, ordinal, or nominal through
recoding variables in SPSS. - Nominal ordinal measures have less information
so we cannot recode nominal or ordinal variables
up to the interval or ratio level. However, by
summing nominal or ordinal values from 2
variables, you can create an index that
increases the level of measurement for the
variable measured by the index.