PDF Download Data Mining With Decision Trees: Theory And Applications, by Lior Rokach
The reason of why you could obtain and get this Data Mining With Decision Trees: Theory And Applications, By Lior Rokach faster is that this is the book in soft file type. You can check out guides Data Mining With Decision Trees: Theory And Applications, By Lior Rokach anywhere you desire also you remain in the bus, office, home, and also various other places. But, you might not have to relocate or bring the book Data Mining With Decision Trees: Theory And Applications, By Lior Rokach print anywhere you go. So, you will not have bigger bag to bring. This is why your selection making better idea of reading Data Mining With Decision Trees: Theory And Applications, By Lior Rokach is really helpful from this case.
Data Mining With Decision Trees: Theory And Applications, by Lior Rokach
PDF Download Data Mining With Decision Trees: Theory And Applications, by Lior Rokach
Reading a publication Data Mining With Decision Trees: Theory And Applications, By Lior Rokach is kind of simple task to do every single time you really want. Even reviewing each time you really want, this task will not interrupt your various other activities; lots of people typically review guides Data Mining With Decision Trees: Theory And Applications, By Lior Rokach when they are having the leisure. What regarding you? Just what do you do when having the leisure? Do not you spend for useless points? This is why you have to get the book Data Mining With Decision Trees: Theory And Applications, By Lior Rokach and also try to have reading behavior. Reviewing this book Data Mining With Decision Trees: Theory And Applications, By Lior Rokach will not make you worthless. It will certainly offer more benefits.
Reviewing behavior will always lead people not to pleased reading Data Mining With Decision Trees: Theory And Applications, By Lior Rokach, a book, ten book, hundreds publications, and much more. One that will certainly make them feel pleased is finishing reading this e-book Data Mining With Decision Trees: Theory And Applications, By Lior Rokach and getting the notification of the e-books, then discovering the other following publication to read. It continues an increasing number of. The moment to complete reading an e-book Data Mining With Decision Trees: Theory And Applications, By Lior Rokach will certainly be consistently various depending on spar time to spend; one instance is this Data Mining With Decision Trees: Theory And Applications, By Lior Rokach
Now, exactly how do you understand where to acquire this publication Data Mining With Decision Trees: Theory And Applications, By Lior Rokach Don't bother, now you may not visit guide shop under the bright sunlight or night to browse the book Data Mining With Decision Trees: Theory And Applications, By Lior Rokach We below consistently help you to find hundreds kinds of e-book. Among them is this e-book qualified Data Mining With Decision Trees: Theory And Applications, By Lior Rokach You may go to the web link web page supplied in this set and after that go for downloading. It will certainly not take more times. Just hook up to your website gain access to and also you can access guide Data Mining With Decision Trees: Theory And Applications, By Lior Rokach online. Naturally, after downloading and install Data Mining With Decision Trees: Theory And Applications, By Lior Rokach, you could not print it.
You can conserve the soft data of this e-book Data Mining With Decision Trees: Theory And Applications, By Lior Rokach It will certainly depend on your extra time and activities to open and also review this e-book Data Mining With Decision Trees: Theory And Applications, By Lior Rokach soft documents. So, you might not be terrified to bring this book Data Mining With Decision Trees: Theory And Applications, By Lior Rokach all over you go. Simply add this sot data to your kitchen appliance or computer system disk to permit you read every time as well as all over you have time.
“. . . the book is a very useful and nice coverage of the field . . . It is highly recommendable for people who want to begin working in this field and need guidance to start into the large area of applying these methods.” Zentralblatt Math This is the first comprehensive book dedicated entirely to the field of decision trees in data mining and covers all aspects of this important technique. Decision trees have become one of the most powerful and popular approaches in knowledge discovery and data mining, the science and technology of exploring large and complex bodies of data in order to discover useful patterns. The area is of great importance because it enables modeling and knowledge extraction from the abundance of data available. Both theoreticians and practitioners are continually seeking techniques to make the process more efficient, cost-effective and accurate. Decision trees, originally implemented in decision theory and statistics, are highly effective tools in other areas such as data mining, text mining, information extraction, machine learning, and pattern recognition. This book invites readers to explore the many benefits in data mining that decision trees offer: Self-explanatory and easy to follow when compacted Able to handle a variety of input data: nominal, numeric and textual Able to process datasets that may have errors or missing values High predictive performance for a relatively small computational effort Available in many data mining packages over a variety of platforms Useful for various tasks, such as classification, regression, clustering and feature selection
- Sales Rank: #8546731 in Books
- Published on: 2007-12-17
- Released on: 2007-12-17
- Original language: English
- Dimensions: 9.00" h x .60" w x 6.00" l,
- Binding: Paperback
- 262 pages
Most helpful customer reviews
5 of 5 people found the following review helpful.
Specialists should consider it, Practitioners should look elsewhere
By Keith McCormick
I will recommend this to one or two colleagues, but it will not be something I will recommend to clients.
The first thing you notice about this book is its very academic style. It has numbered paragraphs like 2.0, and 7.3.1.12. It been used a graduate text, presumably for mathematicians and computer scientists. I think it would be good for that purpose. It could work quite well for statisticians that are interested in the details of data mining algorithms. It is in a series in Machine Perception and Artificial Intelligence. Other titles include "Fundamentals of Robotics", and "Bridging the Gap Between Graph Edit Distance and Kernel Machines", so don't confuse this book with something like Data Mining Techniques, which is written for a general audience. It opens the 2nd chapter with (condensed): "A training set is a bag instance of a bag schema. A bag instance is a collection of tuples that may contain duplicates." The folks that I work with can instantly divide themselves into those that would consider a book like this, and those that wouldn't. It cites references in almost every sentence, which can be distracting to the casual reader, and eventually convinced me that I need to read the original authors like Breiman. Classification and Regression Trees
So having issued a warning, there is plenty to like. The authors have made a real attempt to cover everything - I found 1/3 that I knew, 1/3 that will be quite useful to me, and 1/3 that is too much detail for me. Chapter 3 "Evaluation of Classification Trees" will be great for statisticians that wondered how to judge the efficacy of a tree that was built without hypothesis testing. Also, I was very pleased to see a chapter on "Decision Forests", which is a discussion of "ensemble methods" - in other words combining a set of tree models.
I was hoping for something that would have a detailed chapter on each of the most common decision trees algorithms with briefer sections on the obscure ones. It has all this information, but in a way that I have to work pretty hard to get to it. If you want a quick overview of data mining (even if you think that trees are the method you are going to use), try Data Mining Techniques. Data Mining Techniques: For Marketing, Sales, and Customer Relationship Management If you want to know the details, but are content to learn the details only on the well known techniques (like CHAID and CART) then Larose is a good choice. Discovering Knowledge in Data: An Introduction to Data Mining
3 of 3 people found the following review helpful.
Survey of the literature, not a standalone work
By D. Wilson
The important thing to know about this book before purchasing is that it does not, on the whole, stand on its own. It covers a great number of topics relating to decision trees and their use, but the coverage is primarily as a survey of the literature rather than as usage examples or algorithmic details. Most of the book takes a very qualitative look at the topics; there are few if any quantitative results to be found within.
If you're looking for a collection of organized references to important papers on the topic of decision trees and you've access to the archives of the cited journals, then this book is useful as a jumping-off point to see how the various papers relate. If you're looking for a standalone book on the topic, look elsewhere.
Data Mining With Decision Trees: Theory And Applications, by Lior Rokach PDF
Data Mining With Decision Trees: Theory And Applications, by Lior Rokach EPub
Data Mining With Decision Trees: Theory And Applications, by Lior Rokach Doc
Data Mining With Decision Trees: Theory And Applications, by Lior Rokach iBooks
Data Mining With Decision Trees: Theory And Applications, by Lior Rokach rtf
Data Mining With Decision Trees: Theory And Applications, by Lior Rokach Mobipocket
Data Mining With Decision Trees: Theory And Applications, by Lior Rokach Kindle
Tidak ada komentar:
Posting Komentar