Machine Learning Workout: with exercises and practicals in MATLAB

Autores/as

Holger Ortega Martínez
Universidad Politécnica Salesiana
https://orcid.org/0000-0002-5007-6789

Palabras clave:

COMPUTACIÓN, MULTIMEDIA, ALGORITMOS, PROBLEMAS MATEMÁTICOS

Sinopsis

In the crowded population of texts on Machine Learning, the present book is unique in the sense that it keeps the spirit of the books on basic subjects, like Calculus: its core is made up of many problems with answers, so that the reader can exercise and detect any misunderstanding on time. The book, then, es not for passive reading. It is meant for learning through exercising. Hard workout. Therefore, each chapter presents a set of exercises to be solved “by hand” (think of a desk check) and a strong set of programming tasks to be solved using MATLAB. Being intended for undergraduates, the book does not dive into deep mathematical waters. It is aimed instead to a deep comprehension of the concepts: the mechanics of the algorithms, the structure and geometric representation of the data, the precise evaluation of the results. All by doing it yourself, like in the good old days.

Capítulos

Referencias

Bernard Widrow. An adaptive “adaline” neuron using chemical “memistors”, 1553-1552, 1960.

Bonifacio Martín del Brío and Alfredo Sanz Molina. Redes neuronales y sistemas difusos. Alfaomega Ra-Ma, 2001.

Christopher M. Bishop. Pattern recognition and machine learning. Springer, 2013.

Classify patterns with a shallow neural network. https://uk.mathworks.com/help/deeplearning/gs/classify-patterns-with-a-neural-network.html;jsessionid=2c390a63bc8487fb3cd1df651d31.

David Barber. Bayesian Reasoning and Machine Learning. Bayesian Reasoning and Machine Learning. Cambridge University Press, 2012.

David J. Slate. Letter recognition data set. http://archive.ics.uci.edu/ml/datasets/Letter+Recognition.

Frank Rosenblatt. The Perceptron, a Perceiving and Recognizing Automaton. Report: Cornell Aeronautical Laboratory. Cornell Aeronautical Laboratory, 1957.

Gualtiero Piccinini. The first computational theory of mind and brain: A close look at mcculloch and pitts’s “logical calculus of ideas immanent in nervous activity”. Syn-these, 141(2):175–215, 2004.

I-Cheng Yeh. Concrete compressive strength data set. https://archive.ics.uci.edu/ml/datasets/Concrete+Compressive+Strength.

I-Cheng Yeh. Default of credit card clients data set. https://archive.ics.uci.edu/ml/datasets/default+of+credit+card+clients.

J. Schmidhuber. Deep Learning. Scholarpedia, 10(11):32832, 2015. Revision #184887

Kory Becker. Gender recognition by voice. https://www.kaggle.com/primaryobjects/voicegender, 2017.

Machine learning. https://www.coursera.org/learn/machine-learning.

Pedro Isasi Viñuela and Inés Galván León. Redes de neuronas artificiales un enfoque práctico. Pearson, 2004. Press, 2011.

R.A. Fisher. Iris data set. https://archive.ics.uci.edu/ml/datasets/iris.

Stephen Marsland. Machine Learning: an Algorithmic Perspective. CRC

Tara H. Abraham. Rebel genius: Warren S. McCulloch’s transdisciplinary life in science. The MIT Press, 2016.

William H. Wolberg. Breast cancer wisconsin (original) data set. https://archive.ics.uci.edu/ml/datasets/breast+cancer+wisconsin+(original).

In the crowded population of texts on Machine Learning, the present book is unique in the sense that it keeps the spirit of the books on basic subjects, like Calculus: its core is made up of many problems with answers, so that the reader can exercise and detect any misunderstanding on time.

Descargas

Publicado

noviembre 7, 2025

Licencia

Creative Commons License

Esta obra está bajo una licencia internacional Creative Commons Atribución-NoComercial-SinDerivadas 4.0.

Cómo citar

Machine Learning Workout: with exercises and practicals in MATLAB. (2025). Editorial Abya Yala. https://doi.org/10.17163/abyaups.146