Tuesday, 25 April 2017

Assignment #2



Assignment 2 (May 5)                       Derek Yu (UWC)                     Email: dyu@uwc.ac.za

1.            Introduction

I am currently lecturing ECO211 Basic Econometrics, ECO311 Intermediate Econometrics and ECO733 Honours Labour Economics at the Department of Economics, University of the Western Cape (UWC). In this assignment, I focus on ECO311.

2.            Reflection of my teaching practice of ECO311

Economics as a discipline used to be highly qualitative. However, the subject has evolved drastically in the past few decades, and now Economics becomes both highly qualitative and quantitative. Econometrics, Mathematical Economics and Statistics are involved to explain and solve economic problems. Also, the students are required to be proficient in various software packages (Excel, E-Views and Stata) to analyse the economic data, before the results of the empirical quantitative analysis are presented to anchor the qualitative arguments. In other words, Economics as a subject has evolved a lot that it is important the students are provided the essential teaching and learning support, to obtain the necessary qualitative and quantitative skills, in order to succeed as an economist when they enter the labour market one day. The ECO311 module that I focus on in this assignment is related to the essential quantitative skills the students would learn.

I would start off by using the constructivist theory by Cohen, Manion & Morrison (2012) and the ‘knowing-acting-being’ theory by Dall’Aba & Barnacle (2007) to explain the beliefs and values that underlie my teaching. The constructive theory regards learning as an active process, as the students are encouraged to participate in learning, instead of passively accepting the knowledge taught in class. Also, knowledge is constructed rather than received, and learning is continually developing. As a lecturer, I hope this active learning would take place successfully by the continuous and strong interaction between the students and me during the semester.

With regard to the ‘knowing-acting-being’ theory, an Economics lecturer is expected to possess expert knowledge in his/her area of specialisation (i.e. knowing or subject knowledge). However, it still does not lead to 100% certainty that I would be a good lecturer, as I must possess certain key attributes (i.e. being, or skills and personality). For instance, I must be hard-working, well-prepared for classes, be available for students after classes, be able to use various teaching methods in class, strongly motivate the students, and make students feel I am their buddy to accompany their learning journey. Finally, I must act as a good lecturer (i.e. doing) during classes; for example, in addition to the traditional PowerPoint-slides-oriented conventional teaching method, I apply other teaching techniques to make the lectures more interesting, interactive and versatile, such as group activities during classes, application of technology (e.g. IKamva, YouTube) so the students’ learning would continue even after lectures (i.e. flexible learning).

I also hope the following relationships would be developed to improve students’ learning:
·                Interpersonal relationship: between lecturer and students
-         Before lectures begin (e.g., having the PowerPoint slides of the whole module uploaded on IKamva in the first week; giving students in-class exercise questions before lectures)
-               During lectures (e.g., formal lectures; in-class group exercises)
-               After lectures (e.g., consultation hours, e-mails, IKamva, YouTube learning channel)
·                Interpersonal relationship: amongst the students (e.g., in-class activities; group assignments)
·                Intrapersonal relationship: the student communicates with himself/herself during the learning process

ECO211 is the pre-requisite of ECO311. In ECO211, students already learnt the following:
·                Recap of basic statistics
·                8-step methodology of Econometrics
·                12 main assumptions of the classical linear regression model (CLRM)
·                Difference between population regression function (PRF) and sample regression function (SRF)
·                Ordinary Least Squares (OLS) method to derive the sample regression parameters
·                Bivariate regressions versus multivariate regressions
·            Conducting various statistical tests on the bivariate regression parameters with the application of the t-distribution and F-distribution
·                Using an elementary software package (Excel) to conduct econometric analysis

For ECO211, quite a lot of topics involve “boring”, monotonous and qualitative theoretical content (e.g. 8-step methodology of Econometrics, assumptions of CLRM, difference between bivariate and multivariate regressions) – that is, declarative knowledge is taught with the transfer teaching approach, and it may be really the case that students adopt the surface approach to memorise the theories and describe how to run a regression (that is, relatively low level of engagement). Also, for these highly theoretical topics, the relative focus is on the first two levels of teaching, namely what the student is (information on the abovementioned theories are displayed to the student) and what the teacher does (transmitting various key econometric concepts to the students).

In contrast, the remaining ECO211 topics are more quantitative and practical in nature (e.g. deriving the regression parameters using the OLS method; conducting statistical tests on the bivariate regressions; application of the Excel software) – that is, functioning knowledge is taught with the shaping teaching approach, and students are required to adopt the deep approach to engage the learning tasks appropriately to analyse and interpret the regression parameters and explain whether the regression results conform to economic theories. Also, for these topics, there is stronger focus on the third level of teaching, namely what the student does, for instance, they attend the practicals to learn how to use Excel to input the data and then run the bivariate regressions, before they are required to interpret the regression results, to ensure that they really understand the content, instead of merely memorising the theoretical content.

With regard to the main learning outcomes of ECO311, they are as follows:
·                Recap of OLS method and assumptions of classical linear regression model (CLRM)
·                Conduct multivariate regression analysis;
·           Conduct various statistical tests on the multivariate regression parameters with the application of the t-distribution and F-distribution;
·                Explain the regressions involving intercept dummy and slope dummy variables, and apply them to solve economic problems;
·       Explain the definition, consequences and remedies to various violations of the CLRM, namely multicollinearity, heteroscedasticity and autocorrelation;
·       Apply various statistical tests to detect the presence of multicollinearity, heteroscedasticity and autocorrelation in the sample regressions;
·             Use an advanced specialized software package (E-Views) to conduct time-series and cross-sectional statistical and econometric analysis to solve micro- and macro-economic problems;
·            Design a questionnaire to interview a sample of people to obtain data on numerous variables, before using E-Views to investigate the econometric relationship amongst these variables and using MS Word to write a research report

From the learning outcomes of ECO211, it is clear that the students already have some prior knowledge on the basics of econometrics (this is one of the principles of learning) up to bivariate regressions (Y is a function of one explanatory variable, X – for example, consumption is a function of income), but now for the ECO311 students, they need to go one step further to know how to run multivariate regressions (Y is a function of at least two explanatory variables – for example, consumption is a function of income, inflation rate and Rand/US$ exchange rate) and to conduct various statistical tests on the multivariate regressions. In other words, for ECO311, I as the lecturer need to prioritise the knowledge and skills that I need to focus on (this is one of the principles of teaching), namely multivariate econometric analysis.

Active learning (Bonwell 1991) is involved more in ECO311 when compared to ECO211, as students act as the main agent, actively involved in doing various things (e.g. group project – to be discussed later) and thinking about the things they are doing, to have a deeper understanding of econometrics:
·                Involvement of students: in terms of theoretical content, most of them have been covered in ECO211, so it means more time would be available to focus on the practical aspects of econometrics in ECO311 (e.g. using E-Views to derive multivariate regressions and interpreting the regression results), and it requires more active involvement of students;
·                Engagement of students: students are required to a group assignment by interviewing a sample of about 60 people to collect data relating to an economic topic (e.g. investigating the relationship between income and consumption), before they input the data on E-Views to run multivariate regressions and write up a research report to present and interpret the results;
·                Motivation of students: students’ motivation increases compared to ECO211, as the students are exposed to the more practical aspects of econometrics in ECO311;
·                Immediate feedback: although I usually give quick feedback to students in all the modules I teach, the feedback that ECO311 students receive on the group project is immediate. That is, once the students are given a topic for their group project, they are given one week to inform me the explanatory variables (Xs) they want to include for the multivariate regression, and I would give them constructive feedback on their proposed econometric model at the end of the week, before they proceed to interview people to collect data the following week;
·                Students’ involvement in higher-order thinking: for ECO311, as students no longer need to spend excessive time on the theoretical aspects of econometrics as in ECO211, they focus more on conducting econometric analysis, interpreting the regression results, and explaining whether the results conform to economic theories.

There is no strong indication of the presence of obstacles to active learning, because:
·                The volume of work covered in ECO311 is actually less (especially the theoretical knowledge) when compared to ECO211;
·                There is no indication of excessively long time on class preparation, other than the fact that some time is needed to record the “how to use E-Views” videos and upload them on YouTube;
·                The ECO311 class size is smaller than the ECO211 class size, because not everyone who passed ECO211 continues with Economics Level III. The small class size of ECO311 hence enables interactive, engaging group activities in class and in assessment tasks.
·                The E-Views software is purchased by the university, and the university has a big computer laboratory (with E-Views installed in all computers) for teaching purpose.
·                Although there could be student resistance to active learning (especially at the beginning of the semester), I am confident that the explicit guidelines I put in the in-class exercises, practicals and group assignment would eventually make students feel comfortable about it.

In ECO211, the highly monotonous, theoretical content is unfortunately taught primarily with the transfer teaching approach (i.e. conveying information; imparting knowledge; notes of the teacher becomes notes of the students), and I have to mainly adopt the shaping teaching approach to do lots of in-class questions to ensure the students understand how to use the t-distribution and F-distribution to conduct various statistical tests on the bivariate regressions (i.e. students’ brains are shaped to a predetermined specification; exercises all have specific pre-determined outcomes; usual teaching strategy is that I demonstrate how to solve a problem on the whiteboard before the students use the same method to solve similar problems).

When students move on to enrol ECO311, they already established strong foundations on the theories and the application of the t-distribution and F-distribution on bivariate regressions, so the travelling teaching approach is adopted frequently in lectures, that is, I would no longer be the main agent to work out the solutions on the whiteboard, but I would rather play the leadership role to guide the students and provide suggestions on how to use the same statistical distributions to conduct various statistical tests on multivariate regressions. Regarding the E-Views software, unlike Excel, it is not a highly popular software package to the general public, so after the E-Views practicals, I upload the “how to use E-Views to conduct econometric analysis” videos on my YouTube learning channel and I would even upload the E-Views learning manual (freely provided by the software developer), with the hope that the students would not only strengthen their basic understanding of E-Views (that is, the topics covered in the practicals), but they would also be encouraged to do some self-learning on the advanced E-Views skills that are not covered in class. In other words, the growing approach is adopted.

Therefore, compared to ECO211, the focus of ECO311 is on what the student does by encouraging them to adopt the deep learning approach, as they are more actively engaged with in-class learning activities, practicals and group assignment. By involving in meaningful and worthwhile tasks, students not only produce extrinsic motivation (e.g. they could win the “best ECO311 student award” by working hard), social motivation (e.g. they make their parents happy by doing well in the module) and achievement motivation (e.g. outperforming fellow students), but also intrinsic motivation (e.g. feeling self-fulfilled to attain intellectual pleasure by conducting a practical project to examine and even solve an economic problem to learn functional knowledge), under the theory-Y climate – students are given a lot of freedom in their learning activities and tasks.

Finally, the group assignment is relevant to the SOLO taxonomy to deepen students’ thinking (I explain this with the aid of one of the research topics “factors determining the frequency of visiting Facebook per week”):
·        Pre-structural: students don’t understand econometrics at all (this happened until they enrolled ECO211)
·         Uni-structural: students have one idea – there are numerous factors influencing the frequency of someone visiting Facebook
·            Multi-structural: students have several areas – females could be more likely to visit Facebook; Younger people would visit Facebook more frequently; those having internet on their cellular phones would visit Facebook more frequently; whether the person has a Twitter account could have an impact on his/her frequency of visiting Facebook
·                Relational: Students use E-Views to run the multivariate regression to analyse the relationship between the four explanatory variables on the frequency of visiting Facebook, i.e. frequency of visiting Facebook = β1 + β2Female + β3Age + β4Internet Access + β5Having a Twitter account. It is expected that β2 is positive, β3 is negative, β4 is positive, but β5 could be either positive or negative, according to theory.
·                Extended abstract: students use the results of the multivariate regression to critique and reflect on the relationship between the various social media, e.g. if β5 is positive, it means Twitter and Facebook could be regarded as complements (i.e. people are likely to be active in both media) but if β5 is negative, it means Twitter and Facebook could be regarded as substitutes (i.e. if someone has a Twitter account, he would use Facebook less frequently, as he may find it annoying and time-consuming to use both social media).

Finally, for this highly practical group assignment, instead of using the norm-referenced measurement model (as adopted when marking module test and exam scripts), the criterion-referenced standards model is adopted to mark the assignments, with the marking grid focusing on the following four aspects: questionnaire design (used to interview people to collect data), computer literacy (evidence that students use E-Views to conduct econometric analysis), interpretation (of the multivariate regression results) and general presentation - see Appendix for more detail.

3.            Description of students

3.1          Who they are

My ECO311 students first need to pass both Statistics 1 (BUS132) and Economics 1 (ECO134), before they are eligible to enrol ECO211. Once they pass ECO211, they are eligible to enrol ECO311. As statistics are intensively covered in BUS132 and again reviewed in the first three weeks of ECO211, the ECO311 students are very proficient in understanding the basic statistics concepts and theories, probability distributions, and the application of various distributions (in particular t-distribution and F-distribution) to conduct various statistical tests on regressions, such as confidence intervals and hypothesis testing. In other words, students have decent level of basic statistical knowledge.

With the exception of few students coming from the part-time group (they prefer me to provide them the solutions of the in-class exercises), the ECO311 students generally are not the type who want to be spoon-fed. In fact, it is simply impossible to spoon-feed them: as long as they struggle to build a strong foundation on statistics (i.e. the BUS132 knowledge) and basic econometrics up to bivariate regressions (i.e. the ECO211 knowledge), they simply would not be able to understand the ECO311 intermediate econometrics content that starts from multivariate regressions.

With regard to the demographic profile of the students, UWC is a historically black university, and for my ECO311, about 70% of them are Africans and the remaining 30% are Coloureds or Indians. Interestingly, in the earlier days I taught this module (in the late 2000s), male students accounted for the majority of the class, but this no longer happens, as currently half of the students are females. This is not surprising, as Econometrics has evolved to become the one of the three core modules (along with Microeconomics and Macroeconomics) of the Economics curriculum.

3.2          What their needs are

By the time the ECO211      students enrol ECO311 the following year, one thing I immediately notice is that they no longer clearly remember the OLS methodology to derive regression parameters and the assumptions of CLRM they learnt in ECO211. This is why the first learning outcome of ECO311 (as shown in Section 2) is “Recap of OLS method and assumptions of classical linear regression model (CLRM)”. However, instead of passively giving a monotonous repeat lecture to refresh their memory, I rather adopt the travelling teaching approach to lead the students to recall these ECO211 knowledge by means of the following activities: (1) I spend the first 30 minutes of the lecture to give them an in-class quiz by asking them to do two questions they already did in ECO211 that they are required to apply the OLS method to derive regression parameters; (2) I spend the remaining 30 minutes to give them a second in-class quiz, by dividing students into groups (a maximum of three students in each group) to complete a 1-page sheet to explain the 12 assumptions of the CLRM.

In ECO211, for all the regressions discussed in the prescribed chapters, the independent variables are quantitative variables (e.g. using study hours and lecture attendance frequency to explain variation in students’ academic performance). However, in ECO311, students run across dummy-variable regressions for the first time (the fourth learning outcome of ECO311); dummy-variable regressions are associated with qualitative, categorical variables (e.g. gender, race, province of residence) as explanatory variables, and from my experience all these years, students initially get very confused about the difference between qualitative and quantitative independent variables as well as how dummy variables are derived from the qualitative variables. I have noticed that with the aid of the Excel and E-Views software packages as well as YouTube learning channel, students would understand the chapter content much better – this would be explained later.

Talking about E-Views, this is not as highly popular and commonly known software as Excel. Instead, it is a specialised software package for conducting intermediate-level statistical and econometric analysis. Even though there are four E-Views practicals (tutors’ assistance is involved) taking place during the semester, a lot of students tend to quickly forget about the E-Views knowledge they learnt in the practicals after one or two weeks. This motivated me to introduce blended learning since 2014, so that students can learn how to use E-Views at any time and at place they like (Bates 2016: 214), with the introduction of the YouTube learning channel.

Finally, just like what happened in ECO211, the ECO311 students prefer to actively do the mathematical and statistical calculations during lectures (instead of passively waiting for this to happen only in tutorials). For instance, assuming I have 5 questions in connection with the chapter on multivariate regressions, I leave 3 questions for the tutors to do in the tutorials, but for the remaining 2 questions, they are covered in lectures; I probably would do the first question as an example, but would ask students to work in groups to do the second question. Of course this approach would mean I need to have better time management in my lectures, because this means I allocate about 15 minutes on average in each lecture to cover some tutorial questions. I believe this approach is necessary, because Econometrics is a highly quantitative subject (unlike the conventional highly qualitative, theoretical Economics modules such as Public Economics and Labour Economics) involving a lot of calculations, so it is important for students to actively do these practical, mathematical questions during lectures, instead of passively folding their arms to listen to me talking for an hour and doing the mathematical questions on the whiteboard all by myself.

To conclude, the four key learning needs of the ECO311 students are:
·                They would need one revision lecture right at the beginning of ECO311 to recap on the OLS method and assumptions of CLRM;
·                Excel and E-Views software packages are required before students can understand the content of the dummy-variable regressions chapter better;
·                Blended learning is needed to consolidate students’ understanding of the specialised E-Views software package for econometric analysis;
·                Students have a strong demand on frequent in-class practical questions, instead of passively sitting in the lecture venue for an hour to listen to my lectures and watch me doing all calculations. In other words, students prefer to have the conventional lectures and tutorial questions being ‘combined’ together as the two key components of each 1-hour lecturing period during the semester.

4.            Departmental, institutional, and socio-economic context

4.1          Departmental context

Until 2013, the Department of Economics only offered one undergraduate Econometrics module, namely ECO311. However, this “old” ECO311 module was associated with a very fast and hectic teaching schedule, covering 13 chapters of the prescribed textbook (Gujarati 2009: Basic Econometrics). In particular, it was not possible for me to cover the chapters on violations of CLRM (refer to the fifth and sixth learning outcomes in Section 2) in big detail at that time.

It was only from 2014 that the Department decided to split the “old” ECO311 into two modules, namely ECO211 and the current “new” ECO311. As mentioned earlier, the easier topics are covered in ECO211 while the intermediate-level topics are rather covered in the current “new” ECO311. The pass rates of both modules have been very high at above 90%, with positive feedback received from the students in the annual evaluation of the two modules.

4.2          Institutional context

Due to the increasing importance of Econometrics, it was approved by the university at the end of 2013 that, from 2014, the BCom and BAdmin curricula are revised so that ECO211 has become a new Economics elective module at Level 2, along with Labour Economics (ECO233), Public Economics (ECO234) and Mathematical Economics (ECO235). At this level, students who want to continue with Economics are required to enrol four Economics modules – Microeconomics (ECO231) and Macroeconomics (ECO232) are compulsory, and students need to choose any two of ECO211, ECO233, ECO234 and ECO235.

The Economics Department later found that it may not be wise to have ECO211 and ECO235 as electives, as it may indirectly lead to a situation that some students who have personal rejection against quantitative economics would avoid enrolling ECO211 and ECO235 (but rather opt to enrol ECO233 and ECO234). Therefore, from 2018, a new BCom program would be offered, and at Level 2, ECO231, ECO232, ECO211 and ECO235 would become the four compulsory Economics modules. Labour Economics and Public Economics would rather move upwards to become Level 3 modules.

4.3          Socio-economic context

It was already mentioned earlier that it is now typical for economists in the real world of work to be asked to analyse economic data (e.g. from South African Reserve Bank and Statistics South Africa), so it is now extremely important for students to have done some courses in Econometrics. In fact, UWC Economics Department has a comparative advantage in this regard, as it is the only Economics Department in South Africa offering two undergraduate Econometrics courses. In other words, our undergraduate students learnt more Econometrics knowledge than any other students from institutions other than UWC.

5.            Constructive alignment of module framework

I believe constructive alignment of the ECO311 framework should show strong connection between the following key components, namely learning outcomes, course content, teaching and learning (T&L) activities, assessment tasks, graduate attributes, regular feedback from the lecturer and feedback from students. Each component is explained clearly below.













·                Learning outcomes: they need to be clearly stated in the course outline and module descriptor (refer to the eight learning outcomes of ECO311 in Section 2). As the lecturer, I need to ensure that all learning outcomes are achieved, regardless of whether the students eventually pass the module at the end.
·                Course content (Topics): if I waste excessive time to recap the easier chapters that were already covered in ECO211 and/or omit the essential intermediate-level chapters, it would not be possible to enrich students’ econometrics knowledge as the course would not be up to standard, not to say the achievement of learning outcomes.
·                Teaching and learning activities: in addition to lectures and tutorials, I need to adopt various approaches to cater for the highly quantitative nature of this module, e.g. blended learning (using YouTube learning channel), students working in groups to solve econometric problems in class, case studies (e.g. using economic data from Statistics South Africa and South African Reserve Bank to explain real-life econometric relationship between independent and dependent variables).
·                Assessment tasks: other than giving class tests, module test and final exams (that focus on testing students’ understanding of the advanced chapters on the violations of the CLRM and dummy-variable regressions, as well as the mathematical calculations involving t-distribution and F-distribution) to students, they are required to do a group assignment to interview a sample of people, before compiling data to use E-Views to analyse the data to write a report to explain real-life economic problems. This assignment is crucial to make sure students are able to conduct a practical, econometrics project, upon passing the ECO311 module, as they would be expected to do a similar project when they work as economists one day.
·                Graduate attributes: in addition to learn the essential econometrics knowledge from the prescribed textbook, the other graduate attributes I would like students to get upon finishing the ECO311 module are: (1) be able to work independently (e.g. tests and exams) and with others as a group (e.g. group assignment); (2) engaging people from different backgrounds (e.g. group assignment by working with students from other gender and population groups; interacting people who are not students when interviewing a sample of people to collect data for the assignment); (3) be skilled communicators (using E-Views and MS Word to conduct a highly-practical econometrics project); (4) ethically, environmentally and socially aware and active (e.g. students should know it is wrong to dishonestly commit plagiarism or fabricate the data and regression results in the group assignment; it is also not right to force certain people to be interviewed); (5) inquiry-focused and knowledgeable (students could apply the econometrics knowledge they learn to investigate any real-life economic problems to find out the relationship between the variables, assuming data on these variables is available).
·                Feedback from lecturer: it is important to give students feedback regularly; while given the time constraint in class, I would verbally give them a 5-minute feedback after they write each test, but I would upload a comprehensive 1-page feedback document on the course e-learning site. I also allocate one week in the first week of the second term to allow students to see me to obtain feedback on the questionnaire they designed for the group assignment, before they proceed to use the questionnaire to collect data.
·                Feedback from students: I hand out an evaluation form to the students at the beginning of the second term, to collect feedback from them on the standard of the course, whether they think the learning outcomes are achieved, whether I use versatile teaching and learning approaches, and whether the assessment activities are strongly linked to the course content, learning outcomes and graduate attributes.

The table on the next page shows the constructive alignment of the ECO311 module framework in greater detail.

Learning outcome
Topic
T&L Activities
Assess-ment
Graduate attributes#
Recap of OLS method and assumptions of classical linear regression model (CLRM)
(Recap of) Chapter 1: Nature of regression analysis

(Recap of) Chapter 4: Classical linear regression model
Lectures

(1 week)
In-class quiz
[II]
[III]
[IV]
[VI]
Conduct multivariate regression analysis
Chapter 7: Multivariate regression analysis
Lectures
Tutorials

(2 weeks)
Module test

Exam
[II]
[III]
[IV]
[VI]
Conduct various statistical tests on the multivariate regression parameters with the application of the t-distribution and F-distribution
Chapter 8: Multivariate regression analysis: problem of estimation and inference
Lectures
Tutorials

(2 weeks)
Module test

Exam
[II]
[III]
[IV]
[VI]
Explain the regressions involving intercept dummy and slope dummy variables, and apply them to solve economic problems
Chapter 9: Dummy variable regression models
Lectures
Tutorials
Practicals
Blending learning

(2 weeks)
Module test

Exam
[II]
[III]
[IV]
[VI]
Explain the definition, consequences and remedies to various violations of the CLRM: multicollinearity, heteroscedasticity and autocorrelation
Chapter 10: Multicollinearity

Chapter 11: Heteroscedasticity

Chapter 12: Autocorrelation
Lectures
Tutorials
Practicals

(2.5 week)
Module test

Exam
[II]
[III]
[IV]
[VI]
Apply various statistical tests to detect the presence of multicollinearity, heterosce-dasticity and autocorrelation in the sample regressions
Chapter 10: Multicollinearity

Chapter 11: Heteroscedasticity

Chapter 12: Autocorrelation
Lectures
Tutorials
Practicals

(2.5 weeks)
Module test

Exam
[II]
[III]
[IV]
[VI]
Design a questionnaire to interview a sample of people to obtain data on numerous variables, before using E-Views to investigate the econometric relationship amongst these variables and using MS Word to write a research report
Appendix: Carrying out an empirical project
Lectures
Tutorials
Practicals
Blending learning

(1 weeks)
Group assignment
[I]
[II]
[III]
[IV]
[V]
[VI]
# [I]: Interpersonal flexibility and confidence to engage across difference
  [II]: Inquiry-focused and knowledgeable
  [III]: Critically relevant and literate
  [IV]: Autonomous and collaborative
  [V]: Ethically, environmentally and socially aware and active
  [VI]: Skilled communicators



6.            Threshold concepts and blended learning activities

6.1          Two threshold concepts of ECO311

Two out of four key learning needs of the students as mentioned in Section 3.2 are threshold concepts that require blending learning activities.
·                Students would better understand the chapter on dummy-variable regressions with the aid of Excel, E-Views and YouTube learning channel.
·                Students tend to quickly forget about the E-Views skills learnt in the practicals, so it is important to give them an opportunity to ‘attend’ the practicals again at any place and time that suit them, by watching the videos on the YouTube learning channel.











































6.2          How to address the threshold concepts

With regard to the first threshold (dummy-variable regressions), by adopting the follow three-step approach, I notice that students eventually succeed in understanding the chapter content:
·                Explain the linkage between qualitative variables and dummy variables, as well as derivation of dummy variables, with the aid of MS Excel;
·                Demonstrate how to run regressions that involve dummy variables with the aid of E-Views;
·                Upload the MS Excel and E-Views demonstration video on the ECO311 YouTube learning channel, so that students can have unlimited opportunities to go through the teaching and learning activities in connection with this chapter
















































With regard to the second threshold (How to use E-Views software), in addition to the four E-Views practicals presented by the tutor during the semester, I uploaded the six E-Views demonstration videos on the ECO311 YouTube learning channels, covering the following topics:
* How to create an E-Views file;
* Basic data analysis;
* Econometric analysis;
* Using E-Views to answer the questions of practical #1;
* Using E-Views to answer the questions of practical #2;
* Using E-Views to answer the questions of practical #3.


























Finally, the next page onwards shows how I use Learning Designer to design my lectures on dummy-variables regressions and practicals on E-Views respectively.



Learning Design for: Dummy-variable regressions
(Exported from Learning Designer)

Context
Topic: Dummy-variable regression models
Total learning time: 240
Number of students: 30
Description: 4-hour lectures (2 lectures per week * 2 weeks) would take place to cover Chapter 9: dummy-variable regression models

Aims
To conduct econometric analysis that involves both quantitative and qualitative (dummy) variables as independent variables

Outcomes
Application (Application): Explain the regressions involving intercept dummy and slope dummy variables, and apply them to solve economic problems

Teaching-Learning activities
Nature of dummy variables
Discuss                          30 minutes      students         Tutor is available
To explain the nature of dummy variables
* Difference between quantitative and qualitative variables
* Relationship between categorical variables and dummy variables
* Derivation of dummy variables

ANOVA and ANCOVA models
Discuss                          60 minutes      students         Tutor is available
To explain the ANOVA and ANCOVA models that both involve dummy variables as independent variables
* ANOVA models
* ANCOVA models

Piecewise linear regression models
Discuss                          30 minutes      students         Tutor is available
Explain how dummy variables are involved to run piecewise linear regression models to explain change of slope of relationship between the independent variable (X) and dependent variable (Y) from a particular threshold (X*)


Using Excel and E-Views to conduct dummy-variable regressions
Practice                        60 minutes      students         Tutor is available
To conduct econometric analysis involving dummy variables with the aid of Excel and E-Views
* Creation of dummy variables on Excel
* Creation of E-Views work files that involve dummy variables
* Graphical plot to examine the relationship between dummy variables and dependent variables
* Run regressions that contain dummy variables as independent variable(s)
* Interpret the regression results
* ECO311 YouTube learning channel video in connection with dummy-variable regression models

YouTube learning channels
Collaborate                   60 minutes      students         Tutor is available
Students work in pairs to create an E-Views file to conduct econometric analysis that involve dummy variables as independent variables, and interpret the results. This 1-hour lecture would take place in the computer laboratory to cater for students who do not have their own laptop computers.

























Learning Design for: E-Views software
(Exported from Learning Designer)

Context
Topic: Application of the E-Views software
Total learning time: 120
Number of students: 30
Description: A 2-hour practical will take place in a computer laboratory (with the involvement of tutors) for students to learn how to use E-Views to conduct econometric analysis.

Aims
To use an advanced specialised software package (E-Views) to conduct econometric analysis

Outcomes
Application: To apply the E-Views software package to conduct econometric analysis.

Teaching-Learning activities
Basic data management skills
Produce                         30 minutes      students         Tutor is available
To create an E-Views data file by mastering the following skills:
* Import data from Excel
* Copy the data from Excel and paste it onto E-Views spreadsheets
* Generate new variables by manually typing the data
* Generate new variables by typing equations

Basic statistical analysis
Practice                        30 minutes      students         Tutor is available
To conduct basic statistical analysis of the data:
* Derive mean, variance and standard deviation
* Correlation coefficients
* Bar charts, line charts and XY scatter plot

Econometric analysis
Practice                        30 minutes      students         Tutor is available
To conduct econometric analysis:
* Bivariate regressions
* Multivariate regressions
* Derive residuals and predicted y-values

Interpretation of regressions
Discuss                          25 minutes      students         Tutor is available
To interpret the regression results:
* The constant and slope parameters
* R-squared, adjusted R-squared
* T-statistics
* F-statistics

YouTube learning channels
Discuss                          5 minutes        students         Tutor is available
To introduce the YouTube learning channel to students, so that in case they don't remember the E-Views skills they learnt during the practicals, they could always watch the videos on the channel at any place and any time that suit them.


























Appendix: Criterion-reference grid for the ECO311 group project



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