Enhancing Learning Outcomes in Econometrics: A 12-Year Study
Abstract
:1. Introduction
2. Materials and Methods
3. Results and Discussion
- Proctorio (an online proctoring platform) has a significantly negative association with GPA (0.21 less GPA points). However, since Proctorio was only used when the class was taught online, the significant negative effect of Proctorio on grades might have captured some adverse effects of online learning. However, as for the total grades, Proctorio’s association with total grades is not significant. The p-value for this coefficient is 0.117; this high p-value might be because of the high correlation between Proctorio and Polls (correlation is 0.41—a multicollinearity problem). The higher the correlation, the more likely the individual significance test is to under-reject. Here, under-rejection refers to the fact that standard errors of the sample slope increase as the correlation between regressors (independent variables in the regression) rises; hence, the test statistic (z-score) decreases because the standard error of the sample slope is in the denominator. Thus, we are less likely to reject a significance test for a given critical value, such as 1.64, 1.96, or 2.58; this is what we refer to as under-rejection here. We are more likely to find the population slope insignificant as the correlation between regressors increases. As the correlation approaches one, the variance of each coefficient approaches infinity, as does their standard error, which causes higher t-stats and under-rejection of the null hypothesis. The joint significance test is a commonly used “solution” in the literature. Due to the joint significance of these two variables, we decided to keep the Proctorio variable in the regression to avoid omitted variable bias—Table 2 and Table 3.
- Comparison of different schools within Columbia: we noticed that in terms of performance in the econometrics class, the order is as follows: Engineering, Columbia College, General Studies, followed by the category “others” (exchange students and professional studies), and those from Barnard College, which is a liberal arts college, and shows comparatively lower performance due to the quantitative nature of the course. Notably, Engineering, Financial Engineering, and Electrical Engineering majors outperform Operations Research—Table 2 and Table 3.
- Regarding academic performance, classes held on Tues-Thurs exhibit a slight advantage over those scheduled on Mon-Wed. This phenomenon remains consistent when analyzed using an ordered logit regression—Table 4.
- Any time the class was taught in one particular classroom, students received significantly higher GPA points (p-value of 0.02) compared to the semesters when the class was taught in other classrooms. This difference may not be a causal effect because this particular classroom is magnificent and used in many Hollywood movies; it may be giving students extra motivation.
- Morning classes (10:10 am) display superior outcomes compared to post-lunch ones (1:10 pm); with the subsequent highest performance observed in the afternoon (2:40 pm and 4:10 pm)—Table 2, Table 3 and Table 4. However, it is entirely possible that students with certain schedules and habits select morning classes, so a causal interpretation may not be possible.
- The gap in evaluations between online and in-class narrows slightly as students’ performances, measured by total grade out of 100, increase.
- Class size, COVID-19/online teaching, and the use of Proctorio are associated with lower evaluation results.
- CRS (polls) and students’ performance, measured as students’ total grade out of 100 in a class, are associated with higher evaluation results.
Using Technology in the Classroom
- For the shift to online teaching, replacing the traditional blackboard with a tablet device and leveraging a software application as a digital “blackboard” has been highly effective.
- Initially, a combination of PowerPoint slides and the tablet’s blackboard-like software was employed. Later, this evolved into converting slides into pdf files, with added spacing between slides.
- This modification allowed real-time annotations, enabling simultaneous viewing of slides and annotations, surpassing the effectiveness of traditional blackboard.
- Upon returning to in-person instruction, the tablet screen was displaced on a larger interface, serving as an efficient alternative to “chalk and board” teaching. This transition offered advantages such as maintaining face-to-face interactions while writing and avoiding the need to turn away from students.
- Furthermore, the display screen provided a more comprehensive visual interface than the conventional blackboard.
- The use of Zoom Polls was replaced by Poll Everywhere. Students use their cell phones to answer poll questions in the in-class teaching modality.
4. Conclusions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Variables/Controls | Description |
---|---|
Total | Total grade out of 100 in the course |
GPA | The grade out of 4.0 in the econometrics course |
Performance | |
Final | Final exam grade |
Midterm | Midterm exam grade |
Psets | Problem Set average grade (total of 9 problem sets) |
School | CC = Columbia College; EN = School of Applied Sciences and Engineering; GS = General Studies; BC = Barnard College |
Level | U01 = Freshmen; U02 = Sophomores; U03 = Junior; U04 = Senior; U00 = Other |
Affiliation | School and major combination of the student (ex: CCECON is Columbia College Economics Major, GSECMA is General Studies Econ-Math major) |
Major | Declared major of the student (ex: Financial Engineering) |
Econ | =1 if student majors in Economics only |
Room | The physical classroom for the given semester |
Polls | =1 if CRSs were used; = 0 otherwise |
Proctorio | =1 if this online proctoring platform was used for exams; = 0 otherwise |
Male | =1 for male students; = 0 otherwise |
Quant | A quantitative measure of mathematical rigor of the major. Majors characterized by substantial mathematical integration or a distinct mathematical emphasis, such as Mathematics, Statistics, Physics, or Econ-Math are assigned a score of 4. Majors lacking significant mathematical components, disciplines like Philosophy, Comparative Literature, or Art History, receive a score of 1. Majors intermittently employing mathematical principles are assigned a score of 2, while consistently integrating math without being predominantly math-oriented are assigned a score of 3 |
Polls Quant | Interaction of Polls and Quant variables |
Ins_Eval | Instructor evaluation by students (5 best, 1 worst) |
Course_Eval | Course evaluations by students (5 best, 1 worst) |
(1) | (2) | (3) | (4) | |
---|---|---|---|---|
Variables | Total | Total | Total | Total |
Polls | 2.783 ** | 4.810 ** | 5.069 ** | 9.271 *** |
(1.183) | (1.974) | (1.995) | (3.281) | |
Proctorio | −5.536 *** | −0.130 | −0.216 | −0.143 |
(1.678) | (2.552) | (2.559) | (2.557) | |
Tues-Thur (vs. MW) | 1.491 ** | 1.499 ** | 1.641 ** | |
(0.744) | (0.740) | (0.746) | ||
Male | −1.093 * | −1.351 ** | −1.330 ** | |
(0.652) | (0.653) | (0.659) | ||
Econ | −3.436 *** | −2.872 *** | ||
(0.778) | (0.866) | |||
Quant | 1.059 ** | |||
(0.502) | ||||
Polls Quant | −2.019 * | |||
(1.106) | ||||
Constant | 78.99 *** | 80.49 *** | 80.74 *** | 81.04 *** |
(0.354) | (4.471) | (4.478) | (4.674) | |
Fixed Effects: | ||||
Time of the day effects | No | Yes | Yes | Yes |
Day of the week effects | No | Yes | Yes | Yes |
Classroom effects (including online) | No | Yes | Yes | Yes |
School effects | No | Yes | Yes | Yes |
Quant and polls interactions | No | No | No | Yes |
Observations | 2316 | 2311 | 2311 | 2277 |
R-squared | 0.003 | 0.099 | 0.107 | 0.112 |
(1) | (2) | (3) | (4) | |
---|---|---|---|---|
Variables | GPA | GPA | GPA | GPA |
Polls | 0.232 *** | 0.331 *** | 0.352 *** | 0.658 *** |
(0.0637) | (0.105) | (0.107) | (0.188) | |
Proctorio | −0.0998 | −0.197 * | −0.204 * | −0.211 * |
(0.0948) | (0.119) | (0.120) | (0.120) | |
Male | −0.0447 | −0.0591 * | −0.0582 * | |
(0.0348) | (0.0348) | (0.0352) | ||
Econ | −0.211 *** | −0.170 *** | ||
(0.0418) | (0.0461) | |||
Quant | 0.0565 ** | |||
(0.0269) | ||||
Polls Quant | −0.126 ** | |||
(0.0627) | ||||
Constant | 3.107 *** | 3.351 *** | 3.365 *** | 3.324 *** |
(0.0182) | (0.217) | (0.216) | (0.230) | |
Fixed Effects: | ||||
Time of the day effects | No | Yes | Yes | Yes |
Day of the week effects | No | Yes | Yes | Yes |
Classroom effects (including online) | No | Yes | Yes | Yes |
School effects | No | Yes | Yes | Yes |
Quant and Polls interactions | No | No | No | Yes |
Observations | 2204 | 2201 | 2201 | 2171 |
R-squared | 0.005 | 0.085 | 0.096 | 0.099 |
(1) | |
---|---|
Ordered Logit | With Polls Probabilities Change |
failing students | |
average students | |
above-average students |
(1) | (2) | (3) | (4) | |
---|---|---|---|---|
Variables | Performance | Performance | Performance | Performance |
Polls | 0.653 *** | 1.026 *** | 1.080 *** | 1.704 *** |
(0.201) | (0.295) | (0.303) | (0.564) | |
Proctorio | −0.557 * | −0.706 * | −0.725 * | −0.687 * |
(0.284) | (0.384) | (0.389) | (0.386) | |
Tues-Thur (vs. MW) | 0.277 *** | 0.280 *** | 0.283 *** | |
(0.103) | (0.104) | (0.104) | ||
Econ | −0.334 *** | −0.339 *** | ||
(0.114) | (0.117) | |||
Quant | 0.131 ** | 0.151 ** | ||
(0.0648) | (0.0683) | |||
2.Quant#c.Polls | −0.509 | |||
(0.535) | ||||
3.Quant#c.Polls | −1.076 ** | |||
(0.546) | ||||
4.Quant#c.Polls | −0.210 | |||
(0.786) | ||||
/cut1 | −2.639 *** | −3.294 *** | −3.308 *** | −3.269 *** |
(0.0855) | (0.567) | (0.591) | (0.593) | |
/cut2 | −0.292 *** | −0.832 | −0.838 | −0.796 |
(0.0440) | (0.559) | (0.583) | (0.585) | |
Fixed Effects: | ||||
Gender dummy | No | Yes | Yes | Yes |
Time of the day effects | No | Yes | Yes | Yes |
Day of the week effects | No | Yes | Yes | Yes |
Classroom effects (including online) | No | Yes | Yes | Yes |
School effects | No | Yes | Yes | Yes |
Observations | 2316 | 2311 | 2277 | 2277 |
(1) | (2) | (3) | (4) | |
---|---|---|---|---|
Variables | Ins_Eval | Ins_Eval | Ins_Eval | Ins_Eval |
Course_Eval | 0.533 *** | 0.591 *** | 0.591 *** | 0.592 *** |
(0.0118) | (0.0209) | (0.0209) | (0.0210) | |
Class_size | −0.00395 *** | 0.00226 *** | −0.00226 *** | −0.00236 *** |
(0.000238) | (0.000387) | (0.000387) | (0.000445) | |
Total | 0.00127 *** | 0.00213 *** | 0.00214 *** | 0.00236 *** |
(0.000278) | (0.000244) | (0.000245) | (0.000274) | |
Online/COVID−19 | −0.247 *** | −0.175 *** | −0.175 *** | −0.145 *** |
(0.00968) | (0.0202) | (0.0202) | (0.0451) | |
Polls | 0.0580 *** | 0.0420 *** | 0.0423 *** | −0.0108 |
(0.00542) | (0.0150) | (0.0150) | (0.0223) | |
Proctorio | −0.0756 *** | −0.0327 | −0.0326 | 0.00597 |
(0.0126) | (0.0294) | (0.0294) | (0.0296) | |
Tues-Thur (vs. MW) | 0.0306 *** | 0.0305 *** | 0.0198 * | |
(0.00967) | (0.00968) | (0.0114) | ||
Online Total | −0.00204 *** | |||
(0.000292) | ||||
Online Class_size | 0.00182 *** | |||
(0.000545) | ||||
Constant | 2.120 *** | 1.808 *** | 1.804 *** | 1.791 *** |
(0.0571) | (0.110) | (0.109) | (0.111) | |
Fixed Effects: | ||||
Time of the day effects | No | Yes | Yes | Yes |
Day of the week effects | No | Yes | Yes | Yes |
Classroom effects | No | Yes | Yes | Yes |
School effects | No | Yes | Yes | Yes |
Online—Total grade interactions | No | No | No | Yes |
Observations | 2696 | 2688 | 2688 | 2633 |
R-squared | 0.557 | 0.696 | 0.696 | 0.695 |
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Erden, S. Enhancing Learning Outcomes in Econometrics: A 12-Year Study. Educ. Sci. 2023, 13, 913. https://doi.org/10.3390/educsci13090913
Erden S. Enhancing Learning Outcomes in Econometrics: A 12-Year Study. Education Sciences. 2023; 13(9):913. https://doi.org/10.3390/educsci13090913
Chicago/Turabian StyleErden, Seyhan. 2023. "Enhancing Learning Outcomes in Econometrics: A 12-Year Study" Education Sciences 13, no. 9: 913. https://doi.org/10.3390/educsci13090913
APA StyleErden, S. (2023). Enhancing Learning Outcomes in Econometrics: A 12-Year Study. Education Sciences, 13(9), 913. https://doi.org/10.3390/educsci13090913