quantitative methods topic 1 research design. 2 subject aims data analysis methods appropriate for...
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Quantitative Methods
Topic 1 Research Design
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Subject Aims Data analysis methods appropriate
for investigating issues across a range of topics in education.
Conceptual understanding of statistics rather than formal mathematical derivations
Univariate and bivariate statistics.
Skills in questionnaire design
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Assessments
There will be 10 exercises (30%), and 1 project (4000 words) (70%)
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SPSS is required
SPSS (Statistical Package for the Social Sciences)
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Accessing materials online
www.edmeasurementsurveys.com/QM
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Reading materials for Topic 1
Module1.pdf:
Educational research: some basic concepts and terminology
T. Neville Postlethwaite
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Topic 1 outline
Types of educational research Planning educational research Research questions
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Issues/headlines in Education Australian students lag in maths,
science Funding splurge fails to improve
student results Best assessment practice Boys lag behind girls Accountability policies Use technology in the classrooms
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Types of Research Questions addressed by quantitative methods
Descriptive
Association/Correlational
Causal/Explanatory
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Descriptive Problems - 1 Which subject fields are more frequently chosen by Australian
Year 11 and 12 students?
Do girls choose different subject fields compared with boys? If
so, what are the subjects preferred by girls?
Are there differences in subject choice according to differences
in social status and ethnic family backgrounds?
What are the areas that Professional Development Program for
teachers should cover?
Are all primary school teachers qualified to teach?
What are the status of school building in a country?
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Descriptive Problems - 2 May not be as straightforward as the computation of
frequencies and averages. Break-in On the radio, an advertisement for an insurance
company ran as follows: “Every 10 minutes, a car is stolen in Zedland. Every 21 minutes, a house is broken into. Take up an insurance policy today.”
Using only the information given in the advertisement, can you conclude anything about the chance a car will be stolen in Zedland? that it is more likely to have a car theft than a house break-
in? Give reasons to support your answer.
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Association - 1
Are there any relationships between students’
reading achievement and their mathematics
achievement?
Is there an association between reading
achievement and the number of books in the
home ?
Association does not always lead to causal.
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Association - 2
In a town in Europe, the number of storks is positively correlated with the number of babies born.
Crime rate is positively correlated with ice cream sales.
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Causal relationships - 1
Does smaller class size increase student performance?
Do students’ performance improve if more homework is assigned?
Does parental attitude have an impact on student achievement?
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Causal relationships - 2
Causal relationship is very difficult to identify. Number of books at home is positively correlated with
student achievement. Can student achievement be improved by placing
more books in a home?
Mediating variables High parental expectations of achievement is
correlated with both number of books at home and student performance.
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Causal relationships - 3
Study design to establish casual relationships needs to be “confirmatory” than “exploratory”.
Confirmatory approach E.g., we hypothesise that increasing homework can
increase student performance. Carry out a study where some students are assigned
more homework and some are not. Exploratory approach
Obtain student performance data and other information including homework, school administration, hours of teaching, etc.
Find correlations between student performance and other variables.
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Research Stages
Stage 1: Research aims Stage 2: Literature Stage 3: Research design Stage 4: Instrumentation Stage 5: Piloting Stage 6: Data collection Stage 7: Data cleaning and Data analysis Stage 8: Research report
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Research aim(s)
Example: To identify factors influencing student withdrawal from school and explore the extent to which each factor contributes to student withdrawal from school
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Literature Review
Review the related literatureWhat have been done in the field? What are controversial debates? School of
thought? What are the “gaps”? (knowledge and
methods)What are the findings?
Develop a theoretical framework
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Research questions
What are the factors that influence students’ academic achievement?
Which method of instruction is most effective in teaching young children to read?
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Propositions
Gender, ethnicity, family economic status, parents’ education and occupation, parents’ and students’ attitudes, were important factors relating to students' academic achievement.
School effectiveness has an impact on student achievement
Teacher qualification has an impact on student achievement
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Research design
At this stage the following should be identified:
Source of informationWho is appropriate to provide the necessary
informationCharacteristics of the target population
Data collection methods
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Data collection methods
Cross-sectional vs longitudinal If longitudinal, how many times?
Sample vs cohort If sample, how many?
Questionnaire, test, interview, published statisticsHow many questions?
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Establishing the link between information needed, source of information and methods of data collection
Information needed/variables to be measured
Source of information
Methods of data collection
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Link between the information needed, sources and methods
Information needed Source Data collection
Student gender Students Questionnaire
Family characteristics parents Questionnaire
Parent attitudes Parents Questionnaire
Student attitudes Students Questionnaire
Student achievement Students tests
School characteristics School/Principal Questionnaire/interview
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QuestionnairesNeeded
Student questionnaire Parent questionnaire School questionnaire
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Instrumentation
Develop/validate and pilot instruments (test or questionnaires)
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Variables included in the Parent Questionnaire Family social status/wealth Mother Education Father Education Mother Occupation Father Occupation Family size Parent attitudes
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Variables included in the Student Questionnaire
Student gender Ethnicity Student attitudes Student academic achievement Student behaviour
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Data collection and data management Field work supervision Entering the data into data file Cleaning the data
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Data Analysis
Descriptive Correlational Causal Note that statistics can only provide
correlational information. Any causal interpretation is made by people.
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Writing up the reports and discussions Technical report Policy report General public
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A few examples to contemplateMargins of error in test scoresFor Year 5 numeracy, each child is tested on just
40 questions each year in a national test. If David obtained 25 out of 40 on the 2009 test, how much would we expect David’s scores to vary if tests similar to the 2009 test are administered?
For a 40-question test, David’s scores might vary by as much as 5 score points.
In percentage terms, if a student’s score is 70% on a test, we expect the range of this student’s scores on similar tests to be between 58% and 82%.
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Simpson’s paradox
Men Women
Arts 3 out of 4 (75%) 1 out of 1 (100%)
Sci 0 out of 1 (0%) 1 out of 4 (25%)
total
5 men and 5 women apply for university places (http://en.wikipedia.org/wiki/Simpson%27s_paradox)
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False positives Prevalence rate for a disease in a population is
1%. Test for this disease
-ve/-ve 95% +ve/-ve 5% (5% of those who do not have the disease show a +ve result)
+ve/+ve 95% -ve/+ve 5% (5% of those who have the disease show a -ve result)
Is this a good test? Suppose 10,000 people were tested. 600 had
+ve result. What is the proportion of the people with +ve result who actually have the disease?