SII: Quantitative Methods and Surveys - PowerPoint PPT Presentation

1 / 30
About This Presentation
Title:

SII: Quantitative Methods and Surveys

Description:

Involves analysis of responses to a standardized questionnaire, containing a ... which rebellions are more/less likely to develop into fully fledged revolutions ... – PowerPoint PPT presentation

Number of Views:46
Avg rating:3.0/5.0
Slides: 31
Provided by: www2War
Category:

less

Transcript and Presenter's Notes

Title: SII: Quantitative Methods and Surveys


1
SII Quantitative Methods and Surveys
  • Tuesday 22nd January

2
Outline
  • Introduction to Quantitative Methods
  • The Hypodeductive Method
  • Units of Analysis
  • Sampling
  • Variables (and questions)
  • Analysis
  • Univariate
  • Bivariate (and multivariate)
  • Strengths of Survey Research
  • Weaknesses of Survey Research

3
Defining Terms
  • Quantitative MethodsAre used to answer any
    counting related question How many? What
    proportion?
  • Survey ResearchInvolves analysis of responses to
    a standardized questionnaire, containing a
    battery of questions.
  • Primary (Data) AnalysisIs analysis conducted by
    the investigator(s) or institution that collected
    the data.
  • Secondary (Data) AnalysisIs any further analysis
    of an existing dataset that produces results or
    conclusions other than those produced as a result
    of the first report on the inquiry. Often carried
    out by different people than those that collected
    the data.

4
Where quantitative data comes from
  • Primary Sources
  • Surveys
  • Content analysis
  • Observation studies
  • Archival studies
  • Other
  • Secondary Sources
  • Official statistics (surveys and other material)
  • Archived academic surveys
  • Other archived datasets
  • A lot of secondary datasets are now available on
    the web and access is free for those in academic
    environments.
  • You can browse some data at UK Data Archive
    www.data-archive.ac.uk/
  • Economic and Social Data www.esds.ac.uk/
  • Office for National Statistics
    www.statistics.gov.uk/

5
The typical hypodeductive structure of
quantitative research
PHASES
PROCESSES
  • Theory
  • Deduction
  • Hypothesis
  • Operationalization(research design)
  • Data Collection
  • Data-organization
  • Data Analysis
  • Interpretation
  • Results
  • Induction

From Corbetta (2003 59)
6
From Theory to Hypotheses
  • Theory involves wide-ranging statements about the
    world. These are located at a high level of
    abstraction and generalization. They are often
    derived from empirical patterns and give rise to
    empirical forecasts.
  • Quantitative analysis is usually involved in
    empirically testing particular hypotheses that
    are derived from theory.
  • Hypotheses are general statements at a lower
    level of abstraction. They involve particular
    relationships (and directionality) between two
    (or more) concepts.
  • Sometimes different theories will give rise to
    competing hypotheses. These can be empirically
    arbitrated. For example
  • From gender role theory When married women earn
    more than their husbands they violate normal
    gender roles. They are therefore likely to
    increase the amount of housework that they do in
    order to compensate.
  • From dependency theory The person who earnsthe
    most will have the most power. Therefore when
    women earn more than their husbands they have
    more power. And they will reduce the amount of
    housework that they do.

7
Unit of Analysis
  • In order for any hypothesis to be tested
    empirically it needs to be located.
  • Units of analysis are the things that are to be
    compared or analysed.
  • Example If I want to investigate revolution I
    may use as my unit of analysis
  • Individuals investigating who is more or less
    likely to become involved in revolutionary
    ferment
  • Countries investigating what sort of society is
    more/less likely to become revolutionary
  • Rebellions investigating which rebellions are
    more/less likely to develop into fully fledged
    revolutions
  • Literature investigating which books are
    more/less likely to be published in revolutionary
    epochs
  • etc.
  • Corbetta (2003) lists the following types of unit
    of analysis the individual the aggregate of
    individuals the group-organization-institution
    the event and the cultural product.

8
A question of sampling
  • Sometimes we can study every example of the thing
    that we are interested in the whole population.
  • But most of the time this would be too difficult
    or time consuming.
  • So we usually study just a sample of the cases
    that we are interested in.
  • What is most important in selecting a sample is
    that it is representative of the population.
  • When a sample is representative we can make
    inferences about the population based on the
    sample.

9
What is a Representative Sample?
  • To be representative the sample should accurately
    reflect the range of possible responses/attitudes/
    behaviours of the whole population (n.b. this is
    not the population of the country, but the
    population of sociological interest).
  • Since we may not know what that range is, we
    cannot know how to select a sample that is
    representative.
  • Therefore the best that we can do is to ensure
    that every case (and so every attitude/behaviour)
    has an equal chance of being included into the
    sample.
  • This is the Equal Probability of Selection Method
    (EPSM). And the sample that results is known as a
    Probability Sample.
  • The central principle in a Probability Sample is
    random selection.

10
A Simple Random Sample
11
What is a Representative Sample?
  • Some random samples are more complex than this
    involving clustering or stratifying. However
    these are still based on probabilities and so we
    can mathematically estimate the probability that
    any one case/person be selected.
  • Not all samples are probability samples.
  • Types of Non-Probability Sample
  • Reliance on available subjects
  • Purposive or judgemental sampling
  • Snowball sampling
  • Quota sampling
  • Some of these samples may be relatively
    representative. However they are less likely to
    be representative of attitudes/characteristics
    that we did not foresee.
  • Additionally, since non-probability samples do
    not involve an EPSM findings cannot be used to
    make inferences about the whole population.

12
Variables
  • Quantitative Analysis involves the study of
    variables.
  • Variables are attributes that vary across cases,
    and/or within a case over time.
  • For example, gender, age, happiness, political
    association, occupation, number of students on a
    course
  • The process of going from a concept to a variable
    involves operationalisation of the research
    question.
  • When variables are produced in surveys they are
    often the product of closed questions.
  • Closed questions are questions in which possible
    answers are given and the respondent selects from
    these all of the questions in last-weeks survey
    were closed as you did not have the option to
    write your own answers.

13
Types of variable
  • Nominal (or categorical) i.e. ethnicity,
    religion, favourite colour, or
  • What is your gender?
  • ? Male
  • ? Female

14
Types of variable
Thinking back over your first term at Warwick
(from the time you arrived here until Christmas
break), what do you think was the longest period
that you went WITHOUT having an alcoholic drink?
? Less than a day (i.e. you drank every
day) ? One or two days ? Three to six days
? Between one and two weeks ? Between two weeks
and a month ? More than a month, but
less than the full term ? The whole term
(i.e. you did not have a single drink)
  • 2. Ordinal(categories are in order) i.e. social
    class, status, agreement/disagreement scale,
    or

15
Types of variable
  • 3. Interval/Ratiomathematical operations
    possible. i.e. age, income, hours of work, or

How many alcoholic drinks have you consumed in
the last 7 days? ____________
16
Problems with survey questions
  • Survey questions need to be
  • Exhaustive that everyone fits into one category
  • Exclusive so that everyone fits into only one
    category (unless specifically required to tick
    as many as apply).
  • Unambiguous so that they mean the same to
    everyone and all responses are comparable.
  • When one or more of these is violated, even if
    researchers are trying hard to be unbiased, the
    survey data will reflect not reality but the
    specific interpretations of each respondent, and
    since the researcher has no way of knowing what
    these are, she will have no way of knowing what
    she is analysing.
  • For example How did you calculate your answer to
    the following How many alcoholic drinks have you
    consumed in the last 7 days? How did you work out
    what counted as one drink? Could you remember
    how many youd had?

17
Statistical Analysis
  • Analysis can be
  • Univariate involving just one variable at a
    time
  • Bivariate involving two variables
  • Multivariate involving three or more variables.
  • Statistical Analysis can aim to
  • Describe called descriptive statistics
  • Make inferences from a sample to the population
    called inferential statistics
  • Analyse relationships between variables called
    analytic statistics

The choice of statistical technique depends on
both the aims of the researcher and the types of
variable to be analysed.
18
Univariate Analysis
  • We are interested in the form taken by the
    distribution of cases.
  • This analysis is usually descriptive (although
    sometimes it involves inference).
  • Where variables are categorical i.e. nominal or
    ordinal we use the mode and pictorial
    representations (such as pie-charts and
    bar-charts). We also give percentages of cases
    falling into each category.
  • With interval level data we can go beyond the
    pictorial (although we will often start by
    looking at a chart called a histogram to get a
    feel of the data).
  • We want to be able to summarise data as
    efficiently as possible so that we can see the
    wood for the trees.

19
Nominal or Ordinal variables can be represented
with pie-charts
The modal (most common) response was that
students went a maximum of 3 to 6 days without a
drink in their first term. Because this is an
ordinal variable we can add together the red and
light blue pieces of the pie and say that about
20 of you managed to go more than a whole
month.
20
Categorical Variables Dichotomous Variables.
When we are studying whether or not people have
done something there are only two possible
answers people have or have not done this thing
these are examples of dichotomous variables.
Describing dichotomous variables usually takes
the form of saying what proportion of people fall
into one of the two categories in this case,
those who have done the thing.
Sociology students (2007/8 and 2006/7) that had
ever consumed the following
21
A biased sample?
  • To be representative the sample should truly
    reflect the range of possible responses/attitudes/
    behaviours of the whole population. So
  • Question Since not every Warwick sociology
    student filled out a survey last week (as some
    were not in lecture), how representative do you
    think that the Survey of Warwick Sociology
    students was?
  • Specifically, given that it asked questions about
    drink and drugs, do you think that the people who
    were in lecture last Tuesday were representative
    of those who were not here as well?
  • One way of thinking about this is to ask whether
    there is likely to be differences between those
    people who do and who do not come to lecture in
    terms of how theyd have answered the questions.
  • ? It may be that there is a correlation between
    taking drugs/drinking more and non-attendance at
    lecture. Therefore the sample of students may be
    biased, especially in relation to this topic.

22
Describing Interval-Ratio Variables
Interval-ratio variables have meaningful
response-categories. Their central tendency can
be described with a mean. And the amount of
variation from (or spread around) the mean, can
be described with the standard deviation. Interval
-ratio variables can be graphed with a histogram.
23
Univariate Analysis summarising data
  • When we summarise data we look at
  • Measures of location (or central tendency)
  • Mean what people refer to as the arithmetical
    average
  • Mode the most common value (or peak)
  • Median if we place values in order, the middle
    one.
  • Measures of dispersion
  • The standard deviation based on the difference
    between (individual) data points and the
    (arithmetic) mean (actually the square root of
    the average of these).
  • The range as in the everyday sense the
    largest value minus the smallest (i.e. height of
    tallest person minus height of shortest)
  • The inter-quartile range one cuts off the
    highest and lowest 25 percent of data values and
    calculates difference between the new extremes
    (upper quartile minus lower quartile).

Note The standard deviation is the most commonly
used measure of dispersion because it provides
part of the solution to assessing sampling error
in random sample designs i.e. helps us to judge
how close our results (from a sample) are likely
to be to the underlying population
characteristics this is the essence of
statistical inference.
24
Bivariate and Multivariate Analysis
  • is used to examine and specify relationships
    between two or more different variables.
  • The relationships that are specified are
    probabilistic it is not that every man will do
    x and every women wont rather that men are
    more likely to do x.
  • Furthermore quantitative analysis cannot explain
    why relationships exist, it can just show that
    they appear to and help to specify the associated
    social factors.
  • Only things that can be measured and have been
    included in a statistical model can be found
    to be associated with one another.

25
Example of Bivariate Analysis Comparing Groups
Histograms showing responses to the question How
many alcoholic drinks have you consumed in the
last 7 days? by Gender
When you are comparing an interval-ratio variable
across groups you can compare their means and
medians
Male
Female
You can also look at differences in the shape of
the histograms here you can see that the female
histogram goes down much more steeply.
26
Example of Bivariate Analysis Comparing Groups
Bar chart showing EXPERIENCES AFTER DRINKING of
First Year Sociology students at Warwick, by
Gender (only students whove drunk alcohol since
at Warwick are included)
Where the two variables are both nominal we can
compare the proportion of cases (or people) who
fall into different groups. However just because
groups seem to differ, does not mean that there
is a relationship that would persist in the
population at large or one that is meaningful.
More statistical tests would be required to
evaluate this.
27
Example of Bivariate Analysis Comparing Groups
Comparison 2 Students from 2006/7 cohort and
from 2007/8 cohort.
Do you think that the two years are similar? Does
this give you more or less confidence that the
figures for this year are a true representation
of student life?
28
Juggling the numbers or doing research?
  • Researchers who conduct quantitative analysis
    are responsible for making clear to readers the
    basis they make any claims. This requires
    specifying, among other things
  • The number of cases in any category, or in any
    analysis
  • Their sampling process
  • The way in which questions and categories were
    constructed.

29
Strengths of Survey Research
  • Useful in describing the characteristics of a
    large population.
  • Make large samples feasible often relatively
    quick (and telephone/postal surveys can be
    conducted at a distance).
  • Flexible many questions can be asked on a given
    topic.
  • Relatively impersonal form of research can be
    good for asking sensitive questions that people
    are uncomfortable talking about.
  • Easy to standardize interactions.
  • Reliable (and replicable).
  • Therefore relatively transparent methodology.

30
Weaknesses of Survey Research
  • Can seldom deal with the context of social life.
  • Inflexible - in that it requires that the
    researcher knows what to ask about before
    starting (and therefore poor for exploratory
    research).
  • Subject to artificiality the product of
    respondents consciousness that they are being
    studied. This can be exacerbated where there is a
    power-relationship between the person studying
    and the person being studied.
  • Weak on validity.
  • Poor at answering questions where individual is
    not the unit of analysis.
  • Usually inappropriate for historical research.
  • Particularly weak at gathering at certain sorts
    of information
  • Highly complex or expert knowledge
  • Peoples past attitudes or behaviour
  • Subconscious (especially macro-social) influences
  • Attitudes (or at least embodied attitudes)
  • Shameful or stigmatized behavior or attitudes
    (especially in face-to-face interview better in
    self-completion surveys)
  • We will develop these criticisms more next week.
Write a Comment
User Comments (0)
About PowerShow.com