Difference between revisions of "MC3-Project-2"

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* Train a regression learner (KNN or LinReg, or other of your choice with or without bagging) on data from 2008 to 2009.
 
* Train a regression learner (KNN or LinReg, or other of your choice with or without bagging) on data from 2008 to 2009.
** For your X values: Identify and implement at least 3 technical features that you believe may be predictive of future return. You should implement them so they output values typically ranging from -1.0 to 1.0.  This will help avoid the situation where one feature overwhelms the results.
+
** For your X values: Identify and implement at least 3 technical features that you believe may be predictive of future return. You should implement them so they output values typically ranging from -1.0 to 1.0.  This will help avoid the situation where one feature overwhelms the results. See a few formulae below.
** For your Y values:
+
** For your Y values: Don't use price, use 5 day return.
 +
* Create a plot that illustrates your Y values in one color and price in another color, we should be able to see that your Y values are shifted back 5 days.  You may find it convenient to zoom in on a particular time period so this is evident.
 +
* Create a trading policy based on what your learner predicts for future return.  As an example you might choose to buy when the forecaster predicts the price will go up more than 1%, then hold for 5 days.
 +
* Create a plot that illustrates entry and exits as vertical lines on a price chart. Show long entries as green lines, short entries as red lines and exits as black lines. You may find it convenient to zoom in on a particular time period so this is evident.
  
 
==Template and Data==
 
==Template and Data==

Revision as of 17:34, 20 November 2015

Draft

"Draft" will be removed when the assignment is final.

Updates / FAQs

Overview

In this project you will transform your regression learner into a stock trading strategy. Overall, you should follow these steps:

  • Train a regression learner (KNN or LinReg, or other of your choice with or without bagging) on data from 2008 to 2009.
    • For your X values: Identify and implement at least 3 technical features that you believe may be predictive of future return. You should implement them so they output values typically ranging from -1.0 to 1.0. This will help avoid the situation where one feature overwhelms the results. See a few formulae below.
    • For your Y values: Don't use price, use 5 day return.
  • Create a plot that illustrates your Y values in one color and price in another color, we should be able to see that your Y values are shifted back 5 days. You may find it convenient to zoom in on a particular time period so this is evident.
  • Create a trading policy based on what your learner predicts for future return. As an example you might choose to buy when the forecaster predicts the price will go up more than 1%, then hold for 5 days.
  • Create a plot that illustrates entry and exits as vertical lines on a price chart. Show long entries as green lines, short entries as red lines and exits as black lines. You may find it convenient to zoom in on a particular time period so this is evident.

Template and Data

You will use data in the ML4T/Data directory. In particular files named ML4T-XXX.csv, where XXX are digits.

Part 1: Build TrainY

Use ML4T-399.csv

Your code should predict 5 day change in price. You need to build a new Y that reflects the 5 day change and aligns with the current date.

Create a plot that shows current price and overlays the 5 day change, and overlays one on the other. The result should appear to be just a shifted version of the price.

Part 3: Develop Technical Indicators

Select and implement at least 3 technical indicators that you will use to predict prices.

Part 4: Train and Show Results

Train your system on 2008-2009. Create a chart that shows your predicted 5 day return versus actual.

Part 5: Create a Trading Strategy

Use your forecaster to generate a trading strategy. Create a chart that shows entry and exit points.

Generate trades, show backtest. Show results for in sample (2008-2009) and out of sample 2010-2011

Apply this now to real data, IBM, over the same period.

Hints & resources

What to turn in

Extra credit up to 3%

Rubric