R
(week 1 - 3)No Exam
(Almost weekly) Assignments (70%)
- Homework: Practical Issues (0%) (1 March)
- Assignment 1: Theory and Regressions (10%) (8 March)
- Assignment 2: Regression and control variables (10%) (17 March)
- Assignment 3: Research Design (10%) (12 April)
- Assignment 4: Event Study (10%) (26 April)
- Assignment 5: Machine Learning (10%) (3 May)
- Assignment 6: Simulation Research Design (20%) (24 May)
- Pitch (10%) (29 March)
- Proposal (10%) (12 May)
- Presentation (10%) (Probably Thursday 18 July)
Completely based on Edmans and Gabaix (2016) in Journal of Economic Literature.
\[ V = T^{\alpha_T} \Bigl( \frac{K}{\alpha_K} \Bigl)^{\alpha_K} \Bigl( \frac{L}{\alpha_L} \Bigl)^{\alpha_L} \]
\[ \alpha_T + \alpha_K + \alpha_L = 1 \]
\[ \max_{K, L} W_T = V - w_L L - rK \]
\[ W_T = \alpha_T V \]
In this model, the driving force is that more talented CEOs grow the business to a bigger size and they earn more money when they create more value.
Summary
Plan ahead (with your supervisor) towards major deadlines
It’s okay to submit partial assignments, as long as you make progress. (Especially for programming exercises)
Keep writing!
Reach out when you need help with planning or when you feel overwhelmed.
Answer in Quarto (.qmd
) format. File > New File > Quarto Document ... >
You can use the code examples that I used in the video. I have uploaded the file to LMS. Use a different level 2 header for each question. Use R chunks to
Click the Render
button and upload the qmd
and html
version to LMS.