introducing data to history students a. michelle edwards, ph.d. university of guelph
Post on 20-Dec-2015
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Introducing Data to History Students
A. Michelle Edwards, Ph.D.
University of Guelph
Setting the stage
Data traditionally used in Social Sciences:
PsychologySociologyAny department with quantitative methods
research
Setting the stage
Today we have new faculties coming online with the introduction of data via new quantitative or research method courses.
Examples include:History at University of GuelphThere may be more…
How do we introduce data?
On one side - students who may be very tentative, timid when it comes to numbers and may have little or no training.
On the other side - faculty who are also hesitant, may also be timid when it comes to working with numbers and may not know where to start.
How do we introduce data?
On one side - those faculty who see a benefit to teaching data to students….
On the other side – students who may fight it all the way with:
“I’m a history/english major I don’t need to understand data!”
“History by Numbers” at UG
New course offered by History (CoA) and Economics (CSAHS) departments.
Available to 4th year students
No Statistics background required
“History by Numbers” at UG
Course objective:“…This course introduces advanced students to the use of quantitative evidence in historical research and explores some of the ways in which quantitative information can illuminate or distort the past. Along the way we learn some basic statistical concepts even though the course itself is more concerned with critical thinking about their use. If the course is successful, you will improve your ability (i) to read critically literature that relies on quantitative evidence and (ii) to use such data in your own research”
“History by Numbers” at UG
“Although the course adopts a critical approach to data, it is not intended to explore the important epistemological debates surrounding method and source. We have the more immediate objective of improving our understanding of and ability to use quantitative evidence.”
“History by Numbers” at UG
Evaluation included assignments and a project.The course divides into three sections:
a survey/review of basic statistical concepts data exercises and discussion of case studies presentation and discussion of student work
“History by Numbers” at UG
“All students should keep in mind that while some familiarity with basic statistical concept and method is indispensable, an advanced knowledge of statistics is not needed for an appropriate and successful use of quantitative evidence”
“History by Numbers” at UG
DRC was looking for an oppurtunity to beta test our Nesstar implementation
So - we used our Nesstar service as the basis for the data assignmenteasy interface and intuitive.Want to see how a group of non-quantitative
users worked with service
Assignment Components
Students were asked to work with the 1871 Canadian Census file.
Start basic: “Determine and report the number of observations, mean and standard deviation of age, separately, for males and for females”
Assignment Components
Create a subset of individuals over the age of 30 years.
Create frequency distributions of marital status for males and females for each of 2 different religions.
Assignment Components
Straight forward calculations and subsetting
Students were provided with basic Excel training and a handout on how to use the Nesstar Webview.
Sample shot of Data - Gender
Sample shot of Data - Gender
Very straightforward
Variable called Sex
Two levels: male and female
NO confusion on the student’s part here
Sample shot of data - Religion
Sample shot of data - Religion
A bit more confusing…
2 Variables to choose from Religion – Census Var 12 Religion Code
Religion Code showed labels – students picked up on this
Student feedback
Overall navigation in Webview was great
There were some questions about variables: religion is an example – which do you
choose?Marital status – differentiation between widow
and widower
Student feedback
Creating and looking at frequencies – easy on Nesstar – a bit more challenging in Excel
Subsetting was a challenge for manyChallenge was learning how to accomplish
this in Nesstar rather than understanding the task at hand. File needed for Excel.
Results
“Expected results” or “Correct answers” – we retrieved and calculated on Nesstar
We had 1 student who matched ALL the answers – approximately 20 students
Majority came close – why???
Results - challenges
Subsetting – individuals who are older than 30 years...Number of students chose 30 and overNumber of students chose 31 and over
This caused the biggest difference in results.
Results - Challenges
Definition of the variables and value labels – also lead to confusion – This was an ‘older’ file with limited metadata.
Many found the assignment a bit challenging but seemed to enjoy it.
Conclusion
Very successful course assignment and we look forward to running it again.
Shows that an intuitive interface can make the introduction to data easier.
Conclusion
One of the greatest rewards was having a student at the beginning of the semester who asked “How do you calculate percentage?”, asking to have several datasets loaded onto Nesstar for their project at the end of the semester, because they understood how “quantitative information can illuminate”.
Acknowledgements
Kris Inwood – for including the Data Resource Centre in this course
Bo Wandschneider – for presenting this paper in my absence
Michelle Edwards