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A**R
Incredible Resource
I had been looking for a book to bridge the gap between implementing machine learning code on the granular level and understanding it from a theoretical perspective and the search wasn't going well. Lots of other books that I tried before finding this one promised to help programmers become better mathematicians (or at least show them the math they need to learn in order to achieve that goal) but would almost always just provide code without context, or run through some incredibly basic, introductory level math without explaining at all how it connects to the various machine learning algorithms you'll be implementing as a programmer.This book, however, takes the math seriously, and is incredibly direct and efficient in the introduction of new, relevant topics in calculus, linear algebra, and probability and statistics that you'll need to know if you want to truly understand the libraries you're using. I find myself reading a section in the book, going back to a "dedicated" textbook on the subject at hand - linear algebra or calculus or probability and statistics - and further studying the material, and then going back to Mathematics for Machine Learning to make sure I understand the topic better. This is the exact learning flow that I wanted, and the book delivers. Can't recommend enough!
T**N
Excellent book for reviewing math materials
This book is excellent for brushing up your mathematics knowledge required for ML. It is very concise while still providing enough details to help readers determine important parts. This is my go-to if I need to review some concepts or brush up on my knowledge in general.I wouldn't recommend this book if you have absolutely no prior math experience though as it can be hard to digest and sometimes they would skip parts here and there in proofs and examples. Especially for the probability section, the concepts will be very hard to grasp without prior knowledge
E**C
Brilliant and Precise
The book is the missing piece between books like Artificial Intelligence: A Modern Approach and the mathematics you require to take such an undertaking. The authors do assume very little prior knowledge from the reader, but it t is recommended that you've had exposure to some of the mathematical topics prior to reading the book. But don't let that stop you if you're a beginner: you'll have to make a few detours to grasp some terms and such. Having said that, a course on single variable calculus ought to be under your belt. That's basically the only prerequisite.The explanations are clear, and the book is designed to bring clarity and lucidity onto the topics, not send the student on an endless pit of proofs and rigor.
M**L
A Book Struggling with its Identity
Don't get me wrong, this is a really good book. But this is a book that's stuck somewhere between a Mathematics book and a Computer Science book.Having studied the mathematics in ML during college, I'm already familiar with the topic discussed in the book. I'm mainly reading it as a refresher of linear algebra and calculus that I haven't used in years.It does a good job laying out necessary mathematical concepts, but it doesn't do as good of a job at providing proofs/explanations to a lot of the properties and extensions. For example, the book gives a good algebraic definition of orthogonality in terms of vectors and subspaces (inner product of the vectors/subspaces in question equal 0). However, in the next section about function orthogonality, the book just says "functions can be seen as vectors" and provides a definition in terms of a definite integral. The book didn't provide reasoning for such a jump from inner product to integral, nor did it provide explanations or intuitions for the upper and lower bounds of the integral. There are many more examples where the book doesn't provide proofs/explanations and hurries on to introduce new concepts.The first few chapters alone is definitely enough for you to understand the concepts of the later chapters, but you WILL need to read dedicated mathematics textbooks (like the ones they pointed out in the "further readings" sections at the end of each chapter) if you want to form a sound mathematical foundation.On the other hand, it did a decent job introducing many important algorithms in ML and the mathematics behind them, but it also lacks many key ideas important to ML. One would expect a book focusing on the mathematical side would be fairly theoretical on the subject of learning, but it doesn't cover fundamental theories in learning such as PAC learning, VC dimensions, No Free Lunch theorem, etc. I think the "Understanding Machine Learning: From Theory to Algorithms" book by Shai Shalev-Shwartz and Shai Ben-David is a much better read on those subjects.Overall, it's a good book to have, especially when you need to a quick refresher on the mathematics or needs some help understanding the mathematical intuitions behind popular ML algorithms. What the book is not, is a beginner-friendly machine learning textbook for those who don't already know some linear algebra.
P**N
This is how math should be taught to CS majors
In college, I was bored out of my mind during Linear Algebra, Multivariable Calculus, and Statistics courses. I wish the concepts would be introduced in the way they are in this book. For example, partial differentiation and gradients are explained in terms of neural network weight optimization / gradient descent. This book is especially valuable if you know the basic intuition behind machine learning and neural networks, and also have a basic intuition behind the math, and want to combine this intuition with a formal mathematical understanding.
M**)
Great book for beginners!
Even though I can get a free e-copy, I still like the paperback version because I flip through it occasionally. This book sketches a clear big picture of the knowledge tree for ML and provides necessary build blocks to help you build solid foundations in preparation for practical ML.You have to be aware this paperback version doesn't come with solutions. One of my reason to buy this is for the solutions. It turned out that only instructors can request solutions from the press company.
A**I
A Matemática Essencial para Machine Learning
Livro que inter-relaciona conhecimentos de Matemática e de Computação, complementando assuntos básicos de ambas as disciplinas.
A**A
Can't go wrong with this one
This is it. I got pretty far with this book in my graduate studies. The covered math is all you need to have a solid foundation to read cutting-edge papers and develop advanced intelligent systems. There are also plenty of exercises to consolidate your knowledge. Well done to the authors.
T**S
Excelente guía para Machine Learning
Este libro sirve como guía o compendio de temas matemáticos que se utilizan en Machine Learning. Es recomendable tener nociones de Álgebra Lineal, Cálculo de varias variables y Estadística para poder leerlo.¿Para quién es este libro? Para aquellos que ya han llevado cursos de las materias antes mencionadas y necesitan saber como aplicar esos conocimientos al Machine Learning.¿Para quién no es este libro?Para quienes apenas se están iniciando en el aprendizaje de las matemáticas superiores. Si buscas un libro introductorio a las matemáticas necesarias para Machine Leaening, no es para tí. En su lugar recomiendo libros como "Linear Algebra" de Friedberg y "Cálculo Avanzado" de Fulks.A mi en lo personal me gustó mucho el libro.Recomiendo buscar el libro en internet (se encuentra gratuito en pdf) y revisarlo, antes de comprarlo. A pesar de tenerlo en PDF, me es más comodo leerlo en físico que en digital.
A**R
Foundational knowledge
Wide ranging with basic principles of foundation in maths and machine learning
S**R
Dies ist das BESTE Buch über die Mathematik des Machine Learnings
Nachdem ich vor 25 Jahren Informatik studiert habe und dort bereits "Neuronale Netze" (feed-forward back-propagation) kennengelernt hatte, wollte ich, motiviert durch den Hype der aktuellen AI (insbesondere machine learning sowie deep learning) mehr darüber lesen.Daher zunächst das "Standardwerk" (Titel "Deep Learning") gekauft. Die dort enthaltene Mathematik ist, meines Erachtens, so stark ver-klausuliert und auch von der Notation her schwer zu lesen, dass ich dieses Buch hier "Mathematics for Machine Learning" gekauft habe: Ich muss sagen/schreiben: Das ist die BESTE Darstellung der verschiedenen mathematischen Themenbereiche (Vektoren, Matrizen, Lineare Algebra, Wahrscheinlichkeitsrechnung, u.s.w.), die ich als Praktiker der Informatik je gesehen habe.Sehr gut verständlich (mit dem math. Grundwissen eines Informatikers), sehr tolle praxis-bezogene Beispiele zu den mathematischen Verfahren.Darüber hinaus in einem hervorragenden Englisch geschrieben, das wirklich Freude macht, es zu lesen.Ich denke, dass jeder, der sich intensiv mit Machine Learning auseinandersetzen möchte, hier sowohl ein Lehrwerk als auch ein Nachschlagewerk erhält.Übungen mit Lösungen (auf github) runden dieses Buch ab. Ich bin begeistert!!!
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