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Quantitative Methods

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Quantitative Methods and Computer Applications in the Historical and Social Sciences Roman Studer Nuffield College roman.studer_at_nuffield.ox.ac.uk – PowerPoint PPT presentation

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Title: Quantitative Methods


1
  • Quantitative Methods
  • and Computer Applications in the
  • Historical and Social Sciences

Roman Studer Nuffield College roman.studer_at_nuffiel
d.ox.ac.uk
2
Aim of the Course
  • Provide an introduction to elementary
    quantitative methods and statistics, covering
    some of the techniques most widely used in
    research in the historical and social sciences
  • Introduce the statistical software package STATA
    and show how the relevant statistical
    applications can be performed with this software

3
Motivation of the Course
  • Understanding quantitative research
  • Quantitative methods are widely used both in
    History as well as in (other) Social Sciences
  • Being able to make use of quantitative research,
    but also being able to assess its limits
  • Using quantitative methods in your own research
  • How representative or reliable are observed
    patterns?
  • If many factors determine an outcome, the
    relative importance of the factors can be
    determined
  • Graphs and tables can be very persuasive tools,
    they can also give valuable hints and raise new
    questions
  • General usage
  • We live in a data world, hence being able to
    handle data and quantitative studies properly is
    a very useful qualification both in the job
    market as well as for everyday life

4
Lecture Plan
  • Week 1 Introduction
  • Week 2 Descriptive Statistics
  • Week 3 Correlation
  • Week 4 Simple Linear Regression
  • Week 5 Statistical Significance I
  • Week 6 Statistical Significance II
  • Week 7 Multiple Linear Regression
  • Week 8 Dummy Variables

5
Course Arrangements
  • Textbook
  • The principal text will be Feinstein, C. H. and
    M. Thomas (2002). Making History Count A Primer
    in Quantitative Methods for Historians.
    Cambridge Cambridge University Press.
  • Lectures/computer classes
  • Normally the first hour will consist of a lecture
    introducing one of the topics
  • The second hour will be devoted to a computer
    class where we look at applications of the new
    topics, using STATA
  • Weekly homework
  • Readings (relevant chapters in the textbook and
    articles containing applications of the topics
  • Problem sets ? To be handed in by noon on Mondays

6
Course Arrangements (II)
  • Mock exam
  • At the end of the course there will be a simple
    take-away examination to test your understanding
    of the various concepts and procedures covered
    during the course
  • All information is available on the courses
    website
  • http//www.nuff.ox.ac.uk/users/studer/teaching.htm
  • including slides, problem sets and data sets

7
Your Input
  • Any questions so far?
  • Any comments?
  • Short introduction of participants
  • Whats your background and how much do you know
    already about statistics and quantitative
    methods?
  • Why are you taking the course?
  • Are you planning to use quantitative methods in
    your research?
  • Is there anything specific you want to learn that
    is not on the program?

8
Lecture 1 Definitions Concepts
  • Cases, variables, and values
  • A data set consists of a series of cases each of
    which has one or more characteristics, known as
    variables. For each variable there is a sequence
    of varying observations, each with its own
    particular value
  • Cases are the basic unit of measurement, and they
    can be individuals, households, firms, towns,
    countries, etc.
  • Example English Poor Law data set
  • 311 English parishes Cases? Variables?
    Values?
  • Relief expenditure of each parish Cases? Variabl
    es? Values?
  • 20.4, 16.3 Cases? Variables? Values?

9
Cross-section and time-series variables
  • Time-series variables
  • A set of measurements that applies to a single
    case at different periods of time is referred to
    as a time series
  • Example Real wages in London, 1500-1800

Source RC Allen (2001), The Great Divergence
10
Cross-section and time-series variables (II)
  • Cross-section variables
  • A set of measurement that applies to different
    cases at a single point in time is referred to as
    a cross-section
  • Example Real wages across Europe in 1750

Source RC Allen (2001), The Great Divergence
11
Cross-section and time-series variables (III)
  • Panel data
  • Time series are used to study changes over time
    and cross-sections to study differences between
    cases
  • It is also possible to combine cross-section and
    time series data to create a panel or
    longitudinal data set
  • Example Real wages across Europe, 1500-1800

Source RC Allen (2001), The Great Divergence
12
Levels of Measurement
  • Nominal measurement
  • Each value defines a distinct category but gives
    no information other than the label or name
    (hence nominal level)
  • This is the lowest level of measurement
  • Example Cases Migrants
  • Variables Birthplace of migrants
  • Values London, Oxford, London
  • Ordinal measurement
  • This applies when it is possible to order or rank
    all the categories according to some criterion
    without being able to specify the exact size of
    the interval between any two categories
  • Example Cases Migrants
  • Variables Skill level of migrants
  • Values unskilled, unskilled, semi-skilled

13
Levels of Measurement
  • Interval or ratio measurement
  • These measurements have all the properties of an
    ordinal scale. In addition, it is now possible to
    measure the exact distance between any pair of
    values
  • This level of measurement is truly quantitative
    and any statistical procedure can be applied to
    values on an interval or ratio scale
  • Values are either continuous or discrete
  • Example 1 Cases Migrants
  • Variables Number of children
  • Values 0, 2, 7
  • ? Discrete variable! Values can take only a
    number of pre-determined values
  • Example 2 Cases Migrants
  • Variables Height of migrants
  • Values 1.55m, 1.62m, 1,58m
  • ? Continuous variable is measured in units
    that can (theoretically) be reduced in
    size to an infinite degree

14
Populations and Samples
  • The population
  • Refers to all possible observations. In the Poor
    Law example that would be all parishes in the
    whole country
  • The sample
  • Is a subset of the population, e.g. all the
    parishes starting with O, like Oxford.
  • Normally we only have samples, either because not
    all cases are available or because it would take
    far too much time to study all cases
  • This is not a big problem, as we have tools to
    make valid inferences from a sample
  • A crucial feature of any sample is whether it is
    random or not
  • In Social Science there are clear procedures how
    to construct and deal with samples
  • As historical data is a lot harder to obtain, you
    sometimes just have to use what you are able to
    get

15
Dummy variables
  • Variables that cannot be measured can still be
    used for quantitative work by assigning values
    (mostly 0 and 1) representing the (two or more)
    categories
  • Example 1 Cases Migrants
  • Variable Sex
  • Values 0 (man), 0, 1 (woman)

16
Homework
  • Readings
  • Feinstein Thomas, Ch. 1-2, Appendix A.1
    (describing the data set we use next time)
  • Get a textbook, if you still dont have one
  • Also, register with IT if you havent done so
    already
  • No problem set this week
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