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61 of 63 people found the following review helpful:
5.0 out of 5 stars An excellent overview for the adv. undergrad or beg. grad
I agree with some of the previous reviews which criticize the book for its lack of depth, but I believe this to be an asset rather than a liability given its target audience (seniors and beginning grad. students). The average college senior typically knows very little about subjects like neural networks, genetic algorithms, or Baysian networks, and this book goes a long...
Published on September 30, 2002 by Todd Ebert

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44 of 47 people found the following review helpful:
3.0 out of 5 stars Venerable, in both senses
It's pretty well done, it covers theory and core areas but - maybe it was more the state of the field when it was written - I found it unsatisfyingly un-synthesized, unconnected, and short of detail (but this is subjective). I found the 2nd edition of Russell and Norvig to be a better introduction where it covers the same topic, which it does for everything I can think...
Published on April 4, 2004 by eldil


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61 of 63 people found the following review helpful:
5.0 out of 5 stars An excellent overview for the adv. undergrad or beg. grad, September 30, 2002
By 
Todd Ebert (Long Beach California) - See all my reviews
This review is from: Machine Learning (Hardcover)
I agree with some of the previous reviews which criticize the book for its lack of depth, but I believe this to be an asset rather than a liability given its target audience (seniors and beginning grad. students). The average college senior typically knows very little about subjects like neural networks, genetic algorithms, or Baysian networks, and this book goes a long way in demystifying these subjects in a very clear, concise, and understandable way. Moreover, the first-year grad. student who is interested in possibly doing research in this field needs more of an overview than to dive deeply into
one of the many branches which themselves have had entire books written about them. This is one of the few if only books where one will find diverse areas of learning (e.g. analytical, reinforcment, Bayesian, neural-network, genetic-algorithmic) all within the same cover.

But more than just an encyclopedic introduction, the author makes a number of connections between the different paradigms. For example, he explains that associated with each paradigm is the notion of an inductive-learning bias, i.e. the underlying assumptions that lend validity to a given learning approach. These end-of-chapter discussions on bias seem very interesting and unique to this book.

Finally, I used this book for part of the reading material for an intro. AI class, and received much positive feedback from the students, although some did find the presentation a bit too abstract for their undergraduate tastes

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44 of 47 people found the following review helpful:
3.0 out of 5 stars Venerable, in both senses, April 4, 2004
By 
eldil (Albuquerque NM) - See all my reviews
This review is from: Machine Learning (Hardcover)
It's pretty well done, it covers theory and core areas but - maybe it was more the state of the field when it was written - I found it unsatisfyingly un-synthesized, unconnected, and short of detail (but this is subjective). I found the 2nd edition of Russell and Norvig to be a better introduction where it covers the same topic, which it does for everything I can think of, except VC dimension.

The book sorely needs an update, it was written in 1997 and the field has moved fast. A comparison with Mitchell's current course (materials generously available online) shows that about 1/4 of the topics taught have arisen since the book was published; Boosting, Support Vector Machines and Hidden Markov Models to name the best-known. The book also does not cover statistical or data mining methods.

Despite the subjective complaint about lack of depth it does give the theoretical roots and many fundamental techniques decently and readably. For many purposes though it may have been superceded by R&N 2nd ed.

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43 of 49 people found the following review helpful:
2.0 out of 5 stars Covers important aspects but lacks depth, September 8, 2001
By 
"sanjoy_das" (Manhattan, KS United States) - See all my reviews
This review is from: Machine Learning (Hardcover)
I teach AI at the graduate level in a major US research University, and I specialize in the area. The book does cover many different areas of Machine Learning. Unfortunately, the treatment is quite superficial. A student would find it extremely difficult to grasp imortant concepts without referring to other material. It may be a good reference, but I would definitely not recommend it as the main textbook. Unfortunately, there seem to be very few books in this area adequate for a senior or graduate level course.
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18 of 19 people found the following review helpful:
5.0 out of 5 stars Excellent overview of all major machine learning topics., July 16, 1999
By A Customer
This review is from: Machine Learning (Hardcover)
I first used this book as the required text for my course in ML in 1997 and got rave reviews from the students. I will be using it again in 1999. I found ALL of the major topics and issues in ML addressed. The book is easily readable with anyone with a computer science background, and the book works quite well in a wide variety of approaches to presentation at the advanced undergraduate and graduate levels.
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23 of 26 people found the following review helpful:
5.0 out of 5 stars An excellent textbook for machine learning, January 26, 2001
By 
Ernest Davis (New York, NY USA) - See all my reviews
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This review is from: Machine Learning (Hardcover)
In fall 2000, I taught a master's level course in ML to about 25 students at New York University. Fortunately both for me and my students, I was able to use and assign excellent recent textbooks in the area: "Machine Learning" by Tom Mitchell and "Data Mining: Practical Machine Learning Tools and Techniques with Java Implementations" by Ian H. Witten and Eibe Frank. I recommend both books enthusiastically.

A student who has mastered Mitchell has a solid grasp of the basic element of nearly every method of machine learning currently in use, and of almost every aspect of ML research. A student who has mastered Witten/Frank has a deep knowledge of the major ML techniques, and a strong sense of the opportunities and pitfalls to be encounted when these techniques are put into practice....

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8 of 8 people found the following review helpful:
5.0 out of 5 stars Only book of it's kind, January 25, 2003
By A Customer
This review is from: Machine Learning (Hardcover)
I am a graduate student at a major research university. I am currently taking my fifth AI/Machine Learning graduate course. This is the one book everyone grabs for when they need a reference. I had to mark the spine of my book with tape so I could find it more easily on my colleagues shelves.

Other books are either not as accessible or too niche-specific. This is the only book out there that covers all of the major machine learning techniques (with the possible exception of support vector machines) and covers them in a manner that can be well understood.

Every discipline has one book that must be on your shelf. If you are planning on doing serious research in Machine Learning - this is the one book.

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23 of 29 people found the following review helpful:
5.0 out of 5 stars Great compilation, May 18, 2001
This review is from: Machine Learning (Hardcover)
This book is completely worth the price, and worth the hardcover to take care of it. The main chapters of the book are independent, so you can read them in any order. The way it explains the different learning approaches is beautiful because: 1)it explains them nicely 2)it gives examples and 3)it presents pseudocode summaries of the algorithms. As a software developer, what else could I possibly ask for?
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10 of 13 people found the following review helpful:
5.0 out of 5 stars Buy It!, October 7, 2000
By 
Stephen Gould (Sydney, Australia (sometimes Palo Alto, USA)) - See all my reviews
(REAL NAME)   
This review is from: Machine Learning (Hardcover)
One of the best books on the subject. Mitchell gives a good introductory coverage to all aspects of Machine Learning. This is not a book full of mathematics, it is a book that gets across ideas and concepts.
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3 of 3 people found the following review helpful:
5.0 out of 5 stars Excellent book, concise and readable, June 22, 2006
By 
Part Time Reader (Sydney, Australia) - See all my reviews
This review is from: Machine Learning (Hardcover)
This is a great book if you're starting out with machine learning. It's rare to come across a book like this that is very well written and has technical depth. The writing is to the point, maybe even a bit terse, but all that you need to know is in there. It's a bit old so doesn't cover kernel methods or SVM's but is still a great first machine learning book.
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3 of 3 people found the following review helpful:
4.0 out of 5 stars The machine learning book, March 10, 2010
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This review is from: Machine Learning (Hardcover)
I am aware of no better introduction to machine learning than this book. Written by a leading authority in the field, it covers a huge range of important ML methods and ideas in a very readable style. I have successfully taught from it and implemented from it.

It is also insanely expensive, which is the only thing keeping me from a five-star rating. Seriously, this book has been in print a long time; let the price drop to a more natural level.

Still, I bought a copy, and I don't regret it.
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Machine Learning
Machine Learning by Tom M. Mitchell (Hardcover - March 1, 1997)
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