Difference between revisions of "Exam 2 Study Guide"

From Quantitative Analysis Software Courses
Jump to navigation Jump to search
 
(7 intermediate revisions by one other user not shown)
Line 1: Line 1:
Exam 2 will consist of approximately 3 multiple choice questions on each topic listed below:
+
Exam 2 will cover all material on the schedule since Exam 1. The exam is closed book, closed notes.  No calculator is allowed.  The topics and readings are as follows:
 +
 
 +
==Topics==
 +
 
 +
* MC2 Lesson 6, Technical analysis
 +
* MC2 Lesson 7, Dealing with data
 +
* MC2 Lesson 8, The Efficient Markets Hypothesis
 +
* MC2 Lesson 9, The fundamental law
 +
* MC2 Lesson 10, Portfolio optimization and the efficient frontier
 +
* MC3 Lesson 5, Reinforcement Learning
 +
* MC3 Lesson 6, Q-Learning (Part 1)
 +
* MC3 Lesson 7, Q-Learning (Part 2) & Dyna
 +
* Options
 +
* Movie: The Big Short
 +
* ML methods for time series data
 +
* Technical trading
 +
 
 +
==Readings==
 +
 
 +
* "What Hedge Funds really do", Chapter 12: Overcoming data quirks to design trading strategies
 +
* "What Hedge Funds really do", Chapter 8: The Efficient Market Hypothesis(EMH) - its three versions
 +
* "What Hedge Funds really do", Chapter 9: The fundamental law of active portfolio management
 +
* "Machine Learning", Chapter 13, Reinforcement Learning
 +
 
 +
==Legacy==
  
 
* Comparison of different regression learner performance characteristics: Trees, forests, KNN, linreg
 
* Comparison of different regression learner performance characteristics: Trees, forests, KNN, linreg
Line 13: Line 37:
 
* Options
 
* Options
  
The exam will include 30 questions.  You will have 30 minutes (plus 5 extra in case of a problem) to complete the exam.  The exam is closed book, closed notes. You can use an on screen calculator.
+
Readings:
 +
 
 +
* "Machine Learning", Chapter 1, Introduction
 +
* "Machine Learning", Chapter 8, Instance-based Learning
 +
* "Machine Learning", Chapter 3, Decision Tree Learning
 +
* "Machine Learning", Chapter 3, Decision Tree Learning
 +
* Paper: "Perfect Random Tree Ensembles" by Adele Cutler
 +
* "Machine Learning", Chapter 13, Reinforcement Learning

Latest revision as of 15:19, 6 February 2020

Exam 2 will cover all material on the schedule since Exam 1. The exam is closed book, closed notes. No calculator is allowed. The topics and readings are as follows:

Topics

  • MC2 Lesson 6, Technical analysis
  • MC2 Lesson 7, Dealing with data
  • MC2 Lesson 8, The Efficient Markets Hypothesis
  • MC2 Lesson 9, The fundamental law
  • MC2 Lesson 10, Portfolio optimization and the efficient frontier
  • MC3 Lesson 5, Reinforcement Learning
  • MC3 Lesson 6, Q-Learning (Part 1)
  • MC3 Lesson 7, Q-Learning (Part 2) & Dyna
  • Options
  • Movie: The Big Short
  • ML methods for time series data
  • Technical trading

Readings

  • "What Hedge Funds really do", Chapter 12: Overcoming data quirks to design trading strategies
  • "What Hedge Funds really do", Chapter 8: The Efficient Market Hypothesis(EMH) - its three versions
  • "What Hedge Funds really do", Chapter 9: The fundamental law of active portfolio management
  • "Machine Learning", Chapter 13, Reinforcement Learning

Legacy

  • Comparison of different regression learner performance characteristics: Trees, forests, KNN, linreg
  • Comparison of learner types: Regression, Classification, RL
  • Overfitting: Definition, how to identify, what might prevent it, what might cause it?
  • Bootstrap aggregating.
  • Boosting.
  • Decision trees. Random versus information based construction. Advantages of one over the other.
  • Reinforcement learning: How is it defined? Questions about State, Action, Transitions, Reward
  • Q-Learning. The update equation, definition of Q
  • Dyna-Q
  • Things you should know because you did the projects. In sample versus out of sample. Istanbul problem, why did shuffling help?
  • Options

Readings:

  • "Machine Learning", Chapter 1, Introduction
  • "Machine Learning", Chapter 8, Instance-based Learning
  • "Machine Learning", Chapter 3, Decision Tree Learning
  • "Machine Learning", Chapter 3, Decision Tree Learning
  • Paper: "Perfect Random Tree Ensembles" by Adele Cutler
  • "Machine Learning", Chapter 13, Reinforcement Learning