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Learning Quantitative Finance with R

You're reading from   Learning Quantitative Finance with R Implement machine learning, time-series analysis, algorithmic trading and more

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Product type Paperback
Published in Mar 2017
Publisher Packt
ISBN-13 9781786462411
Length 284 pages
Edition 1st Edition
Languages
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Authors (2):
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PRASHANT VATS PRASHANT VATS
Author Profile Icon PRASHANT VATS
PRASHANT VATS
Dr. Param Jeet Dr. Param Jeet
Author Profile Icon Dr. Param Jeet
Dr. Param Jeet
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Toc

Table of Contents (10) Chapters Close

Preface 1. Introduction to R 2. Statistical Modeling FREE CHAPTER 3. Econometric and Wavelet Analysis 4. Time Series Modeling 5. Algorithmic Trading 6. Trading Using Machine Learning 7. Risk Management 8. Optimization 9. Derivative Pricing

K nearest neighborhood


K nearest neighborhood is another supervised learning algorithm which helps us to figure out the class of the out-sample data among k classes. K has to be chosen appropriately, otherwise it might increase variance or bias, which reduces the generalization capacity of the algorithm. I am considering Up, Down, and Nowhere as three classes which have to be recognized on the out-sample data. This is based on Euclidian distance. For each data point in the out-sample data, we calculate its distance from all data points in the in-sample data. Each data point has a vector of distances and the K distance which is close enough will be selected and the final decision about the class of the data point is based on a weighted combination of all k neighborhoods:

>library(class)

The K nearest neighborhood function in R does not need labeled values in the training data. So I am going to use the normalized in-sample and normalized out-sample data created in the Logistic regression...

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