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Machine Learning Algorithms

You're reading from  Machine Learning Algorithms

Product type Book
Published in Jul 2017
Publisher Packt
ISBN-13 9781785889622
Pages 360 pages
Edition 1st Edition
Languages
Toc

Table of Contents (22) Chapters close

Title Page
Credits
About the Author
About the Reviewers
www.PacktPub.com
Customer Feedback
Preface
1. A Gentle Introduction to Machine Learning 2. Important Elements in Machine Learning 3. Feature Selection and Feature Engineering 4. Linear Regression 5. Logistic Regression 6. Naive Bayes 7. Support Vector Machines 8. Decision Trees and Ensemble Learning 9. Clustering Fundamentals 10. Hierarchical Clustering 11. Introduction to Recommendation Systems 12. Introduction to Natural Language Processing 13. Topic Modeling and Sentiment Analysis in NLP 14. A Brief Introduction to Deep Learning and TensorFlow 15. Creating a Machine Learning Architecture

Data formats


In a supervised learning problem, there will always be a dataset, defined as a finite set of real vectors with m features each:

Considering that our approach is always probabilistic, we need to consider each X as drawn from a statistical multivariate distribution D. For our purposes, it's also useful to add a very important condition upon the whole dataset X: we expect all samples to be independent andidentically distributed (i.i.d). This means all variables belong to the same distribution D, and considering an arbitrary subset of m values, it happens that:

The corresponding output values can be both numerical-continuous or categorical. In the first case, the process is called regression, while in the second, it is called classification. Examples of numerical outputs are:

Categorical examples are:

We define generic regressor, a vector-valued function which associates an input value to a continuous output and generic classifier, a vector-values function whose predicted output is...

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