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  • Book Overview & Buying Building a Recommendation System with R
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Building a Recommendation System with R

Building a Recommendation System with R

By : Usuelli
4.5 (8)
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Building a Recommendation System with R

Building a Recommendation System with R

4.5 (8)
By: Usuelli

Overview of this book

A recommendation system performs extensive data analysis in order to generate suggestions to its users about what might interest them. R has recently become one of the most popular programming languages for the data analysis. Its structure allows you to interactively explore the data and its modules contain the most cutting-edge techniques thanks to its wide international community. This distinctive feature of the R language makes it a preferred choice for developers who are looking to build recommendation systems. The book will help you understand how to build recommender systems using R. It starts off by explaining the basics of data mining and machine learning. Next, you will be familiarized with how to build and optimize recommender models using R. Following that, you will be given an overview of the most popular recommendation techniques. Finally, you will learn to implement all the concepts you have learned throughout the book to build a recommender system.
Table of Contents (8 chapters)
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6
A. References
7
Index

Data preprocessing techniques

Data preprocessing is a crucial step for any data analysis problem. The model's accuracy depends mostly on the quality of the data. In general, any data preprocessing step involves data cleansing, transformations, identifying missing values, and how they should be treated. Only the preprocessed data can be fed into a machine-learning algorithm. In this section, we will focus mainly on data preprocessing techniques. These techniques include similarity measurements (such as Euclidean distance, Cosine distance, and Pearson coefficient) and dimensionality-reduction techniques, such as Principal component analysis (PCA), which are widely used in recommender systems. Apart from PCA, we have singular value decomposition (SVD), subset feature selection methods to reduce the dimensions of the dataset, but we limit our study to PCA.

Similarity measures

As discussed in the previous chapter, every recommender system works on the concept of similarity between items...

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