Difference between revisions of "CS7646 Fall 2016"

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* [[http://quantsoftware.gatech.edu/MC1-Project-2 MC1-Project-2: Optimize a portfolio]] 5%
 
* [[http://quantsoftware.gatech.edu/MC1-Project-2 MC1-Project-2: Optimize a portfolio]] 5%
 
* [[http://quantsoftware.gatech.edu/MC3-Project-1 MC3-Project-1: Implement and assess a regression learner using decision trees and random forests]] 15%
 
* [[http://quantsoftware.gatech.edu/MC3-Project-1 MC3-Project-1: Implement and assess a regression learner using decision trees and random forests]] 15%
* [[http://quantsoftware.gatech.edu/MC3-Homework-1 MC3-Homework-1: Generate datasets that defeat learners]] (5%)
+
* [[http://quantsoftware.gatech.edu/MC2-Homework-1 MC2-Homework-1: Create a Machine Learning midterm question]] 2%
 +
* [[http://quantsoftware.gatech.edu/MC3-Homework-1 MC3-Homework-1: Generate datasets that defeat learners]] 5%
 
* [[Midterm Study Guide]]
 
* [[Midterm Study Guide]]
 +
* Midterm 15%
 
* MC2-Project-1: Build a market simulator 15%
 
* MC2-Project-1: Build a market simulator 15%
 
* MC2-Homework-1: Create a midterm question regarding Machine Learning 2%
 
* MC2-Homework-1: Create a midterm question regarding Machine Learning 2%
* Midterm 15%
 
 
* MC3-Project-2: Implement your own "manual" quant strategy, then do it with decision tree classification, compare 12%
 
* MC3-Project-2: Implement your own "manual" quant strategy, then do it with decision tree classification, compare 12%
 
* MC3-Project-3: Q-learning maze navigation 10%
 
* MC3-Project-3: Q-learning maze navigation 10%
 
* MC3-Project-4: Q-learning trader 15% (replacement for Final Exam)
 
* MC3-Project-4: Q-learning trader 15% (replacement for Final Exam)
* Piazza participation: 2%.   
+
* Class participation: 2%.   
  
 
Thresholds:
 
Thresholds:

Revision as of 20:10, 29 September 2016

Overview

You are on the page for information specific to the Fall 2016 session of this course. Go here (Machine_Learning_for_Trading_Course) for overall course policies.

2016 Fall Schedule

Assignments & Grading

Thresholds:

  • A: 90% and above
  • B: 80% and above
  • C: 70% and above
  • D: 60% and above
  • F: below 60%

The projects linked to below are from previous semesters. We keep them here so you can peek ahead, but please keep in mind that they will be revised.