Book Image

Machine Learning Algorithms - Second Edition

Book Image

Machine Learning Algorithms - Second Edition

Overview of this book

Machine learning has gained tremendous popularity for its powerful and fast predictions with large datasets. However, the true forces behind its powerful output are the complex algorithms involving substantial statistical analysis that churn large datasets and generate substantial insight. This second edition of Machine Learning Algorithms walks you through prominent development outcomes that have taken place relating to machine learning algorithms, which constitute major contributions to the machine learning process and help you to strengthen and master statistical interpretation across the areas of supervised, semi-supervised, and reinforcement learning. Once the core concepts of an algorithm have been covered, you’ll explore real-world examples based on the most diffused libraries, such as scikit-learn, NLTK, TensorFlow, and Keras. You will discover new topics such as principal component analysis (PCA), independent component analysis (ICA), Bayesian regression, discriminant analysis, advanced clustering, and gaussian mixture. By the end of this book, you will have studied machine learning algorithms and be able to put them into production to make your machine learning applications more innovative.
Table of Contents (19 chapters)

Bayesian regression

At the beginning of the chapter, we discussed how the samples are distributed after the linear regression model has been fitted:

Clearly, the Gaussian itself is agnostic to the way the coefficients have been determined, and by employing a standard method such as OLS or the closed-form expression, we are implicitly relying only on the dataset. Our assumption is that we have enough samples to represent the underlying data generating process correctly and the coefficients must be chosen in a way that minimizes the squared error. However, we may have some prior beliefs about the distribution of all parameters (for example, we could imagine that θi is drawn from a Gaussian distribution) and we would like to include this piece of information in our model. As we are going to discuss in Chapter 6, Naive Bayes and Discriminant Analysis (for further details, please...