20568 - EMPIRICAL METHODS FOR INNOVATION STRATEGIES
Department of Management and Technology
SANDEEP DEVANATHA PILLAI
Suggested background knowledge
Mission & Content Summary
MISSION
CONTENT SUMMARY
- A summary of tools to make data-driven managerial decisions: from correlation and tests of hypotheses to regressions and causal relations.
- Advanced tools (textual analysis, machine learning).
- Group project.
- Data analyses and exercises.
Expected Teaching Schedule
Class | Topic |
1 | Python 1: variables and strings |
2 | Python 2: lists and sets |
3 | Python 3: dictionaries |
4 | Python 4: if-statements |
5 | Python 5: for-loops |
6 | Python 6: text classification |
7 | Basic Stats |
8 | OLS-1 |
9 | OLS-2 |
10 | In-class exercise |
11 | Non-Linear Y |
12 | Practice |
MID TERM BREAK | |
13 | Practice |
14 | In-class exercise |
15 | Tobit & Diff in Diff |
16 | Practice |
17 | Instrumental Variable |
18 | Practice |
19 | Final project consultation |
20 | Practice |
21 | Final project consultation |
22 | In-class exercise |
23 | Final project presentations |
24 | Final project presentations |
Intended Learning Outcomes (ILO)
KNOWLEDGE AND UNDERSTANDING
- Learn how to use Python to make data-driven managerial decisions.
- Learn how to use econometric tools in practice using large datasets.
APPLYING KNOWLEDGE AND UNDERSTANDING
- Understand the basis to make data-driven managerial decisions.
Teaching methods
- Face-to-face lectures
- Exercises (exercises, database, software etc.)
- Group assignments
- Interactive class activities (role playing, business game, simulation, online forum, instant polls)
DETAILS
For attending students learning in the course depends mostly on the development of a group project throughout the course. The group project employs real data to address a concrete managerial problem. Lectures, discussions in class about the projects developed by each group enhance the learning opportunities of the attending students.
Assessment methods
Continuous assessment | Partial exams | General exam | |
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x |
ATTENDING STUDENTS
- Group project accounts for about 60%
- Individual assessments for about 40%.
The evaluation of the attending students is based on three in-class exercises plus a final empirical project produced in groups and presented in class. You will be considered as an attending student if you complete the exercises and submit the final project. In-class attendance will NOT be taken. However, class attendance is strongly encouraged. In the past, students who show up to class have out-performed those who do not by a substantial margin.
Expected grading scheme
Activity | Points |
Best 2 out of 3 in-class exercises | 10 |
Final project report | 12 |
Final project presentation | 3 |
Project peer evaluation | 5 |
Bonus: Usage of data from proprietary databases subscribed to by Bocconi Library. Examples include Compustat, Bloomberg, etc. You are allowed to use non-proprietary and publicly available databases from the internet for your project - but you will not get the bonus point. | 1 |
Total | 31 |
NOT ATTENDING STUDENTS
The evaluation of the non-attending students will be based on a closed book written exam consisting of questions on both the theoretical and programming aspects of the course. In the past, non-attending students have performed poorly in this course.
Teaching materials
ATTENDING STUDENTS
- Lecture slides.
- General references for some of the more technical material (not required for the exam, but useful for consultation).
- Jupyter notebooks.
NOT ATTENDING STUDENTS
- Lecture slides and references to specific articles and similar material.
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General references for some of the more technical material (not required for the exam, but useful for consultation).
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Jupyter notebooks.
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Text Books