Download Data Mining, by Pieter Adriaans, Dolf Zantinge
After downloading and install the soft documents of this Data Mining, By Pieter Adriaans, Dolf Zantinge, you could begin to review it. Yeah, this is so enjoyable while somebody needs to read by taking their large publications; you are in your brand-new means by only handle your gadget. And even you are operating in the workplace; you can still make use of the computer system to read Data Mining, By Pieter Adriaans, Dolf Zantinge totally. Naturally, it will not obligate you to take lots of pages. Just web page by web page depending on the moment that you have to review Data Mining, By Pieter Adriaans, Dolf Zantinge
Data Mining, by Pieter Adriaans, Dolf Zantinge
Download Data Mining, by Pieter Adriaans, Dolf Zantinge
Data Mining, By Pieter Adriaans, Dolf Zantinge. Eventually, you will discover a brand-new experience and expertise by spending even more cash. Yet when? Do you think that you have to obtain those all needs when having significantly money? Why do not you aim to get something straightforward at first? That's something that will lead you to know even more about the world, journey, some places, past history, entertainment, and also a lot more? It is your own time to continue reviewing habit. One of guides you could delight in now is Data Mining, By Pieter Adriaans, Dolf Zantinge here.
Poses currently this Data Mining, By Pieter Adriaans, Dolf Zantinge as one of your book collection! Yet, it is not in your bookcase collections. Why? This is guide Data Mining, By Pieter Adriaans, Dolf Zantinge that is provided in soft documents. You can download and install the soft documents of this incredible book Data Mining, By Pieter Adriaans, Dolf Zantinge now as well as in the link supplied. Yeah, various with the other people who search for book Data Mining, By Pieter Adriaans, Dolf Zantinge outside, you could get much easier to pose this book. When some people still stroll into the store and also look guide Data Mining, By Pieter Adriaans, Dolf Zantinge, you are here just stay on your seat and get the book Data Mining, By Pieter Adriaans, Dolf Zantinge.
While the other people in the store, they are unsure to locate this Data Mining, By Pieter Adriaans, Dolf Zantinge straight. It could require even more times to go shop by establishment. This is why we intend you this site. We will certainly supply the very best way and also referral to obtain guide Data Mining, By Pieter Adriaans, Dolf Zantinge Even this is soft documents book, it will be simplicity to carry Data Mining, By Pieter Adriaans, Dolf Zantinge anywhere or conserve in your home. The difference is that you might not require move guide Data Mining, By Pieter Adriaans, Dolf Zantinge place to place. You may need just duplicate to the other tools.
Currently, reading this amazing Data Mining, By Pieter Adriaans, Dolf Zantinge will certainly be simpler unless you get download and install the soft documents right here. Merely here! By clicking the link to download and install Data Mining, By Pieter Adriaans, Dolf Zantinge, you could start to get the book for your very own. Be the very first proprietor of this soft data book Data Mining, By Pieter Adriaans, Dolf Zantinge Make difference for the others as well as obtain the very first to step forward for Data Mining, By Pieter Adriaans, Dolf Zantinge Here and now!
Data Mining deals with discovering hidden knowlege, unexpected patterns.It is currently regarded as the key element of a much more involved process called knowledge discovery. Setting up a data mining environment is not a trivial task.This book aims to provide essential insights and guidelines to help you make the right decisions when setting up a data mining environment.It deals with the following questions
What is Data Mining?
Which techniques are suitable for my data?
How do I set up a data mining environment?
How do I justify the costs?
- Sales Rank: #4419602 in Books
- Published on: 1996-06-16
- Original language: English
- Number of items: 1
- Dimensions: 9.30" h x .40" w x 6.20" l, .61 pounds
- Binding: Paperback
- 176 pages
From the Back Cover
Data Mining deals with discovering hidden knowlege, unexpected patterns and rules in large databases. It can bring significant gains to organizations, for example, through better targeted marketing and enhanced internal performance. If you have large data sets (for example, large quantities of financial data, extensive customer databases or sales records) you can benefit from this newly emerging field. But setting up a data mining environment is not a trivial task. The long-term goal must be to create a self-learning organization that makes optimal use of the information it generates.
This is the first book to offer a comprehensive introduction to data mining. Its aim is to provide essential insights and guidelines to help you make the right decisions when setting up a data mining environment.
It offers answers to questions such as:
- What is Data Mining?
- Which techniques are suitable for my data?
- How do I set up a data mining environment?
- How do I justify the costs?
The whole data mining process, including data selection, cleaning, coding, different pattern recognition techniques and reporting, is illustrated by means of an extensive case study and numerous answers.
Audience- General management and IT managers
0201403803B04062001
About the Author
Peter Adriaans is a director of Syllogic, where he is responsible for the development of tools for the management of client/server systems and databases. The basis for Syllogic's activities is the intergration of artificial intelligence techniques, machine learning, object orientation and database management systems.
Dolf Zantinge has broad experience setting up large client/server projects. He is a director of Syllogic. The basis for Syllogic's activities is the intergration of artificial intelligence techniques, machine learning, object orientation and database management systems.
0201403803AB04062001
Excerpt. © Reprinted by permission. All rights reserved.
Data mining deals with the discovery of hidden knowledge, unexpected patterns and new rules from large databases. It is currently regarded as the key element of a much more elaborate process called knowledge discovery in databases (KDD), which is closely linked to another important development O data warehousing. A data warehouse is a central store of data that has been extracted from operational data. The information in a data warehouse is subject-oriented, non-volatile, and of an historic nature, so data warehouses tend to contain extremely large data sets. The combination of data warehousing, decision support, and data mining indicates an innovative and totally new approach to information management. Until now, information systems have been built and operated mainly to support the operational processes of an organization. KDD and data warehousing view the information in an organization in an entirely new way O as a strategic source of opportunity.
KDD is the first practical step towards realizing information as a production factor. There are many books already available on data warehousing, also some on machine learning and databases, and a few on data mining and knowledge discovery in databases. What is lacking, however, is a comprehensive overview for management. This book attempts to provide such an overview, and is aimed at anyone who wants to get the most out of large databases O general, marketing and IT management, or any professional who wants a high-level overview of the process. We have tried to make the book as accessible as possible. It contains no complicated mathematics, and we have used many examples from our daily practice. Data mining is important for all organizations that utilize large data sets; any organization with large volumes of financial data, huge customer databases, or helpdesk service records can benefit from this newly emerging field.
This book offers a comprehensive introduction to data mining and provides clear answers to questions such as:
- What is data mining?
- Which techniques are suitable for my data?
- How do I set up a data mining environment?
- How do I justify the costs?
The whole KDD process, including data selection, cleaning, coding, using different pattern recognition techniques, and reporting, is illustrated by means of extensive case histories and numerous examples. Setting up a data mining environment is not a trivial task. The long-term aim is to create a self-learning organization that makes optimal use of the information it generates. This book aims to provide essential insights and guidelines to help you make the right decisions when you are setting up such an environment.
Syllogic is one of the world's leading companies in data and systems management, and has extensive experience of pattern recognition in databases. In 1991, Syllogic created CAPTAINS at the request of KLM (the Royal Dutch Airline). This was one of the first commercial data mining applications. In writing this book, we have drawn on our extensive experience of setting up client/server, data warehouse, KDD and data mining environments for our customers.
Overview of the bookChapter 1 provides a broad introduction to the area of KDD: basic definitions are given, the importance of the development for modern organizations is pointed out, and some hints for setting up a data mining environment are given.
In Chapter 2, we deal with self-learning computer systems. After briefly discussing the somewhat more abstract or philosophical aspects of learning, we illustrate the relationship between machine learning and the methodology of science. The main aim of this chapter is to give the reader a general feeling of the difficulties and risks of using pattern recognition and machine-learning algorithms. Without a deeper understanding of the methodological issues, it is too easy to draw incorrect conclusions on the basis of the output of a learning algorithm.
In Chapter 3, the relationship between data mining and the data warehouse is discussed. Data is obviously needed for the data mining process, and a data warehouse is the best structure for providing this. A KDD environment must also be integrated with a decision support system, the design of databases for decision support being an art in itself. Cost justification is also briefly discussed.
Chapter 4 describes the complete KDD process on the basis of an extensive example drawn from the marketing domain. All the various stages of the data mining process as we see it are considered, from the specification of an information requirement via data selection, enrichment and coding, to discovery and reporting. Much attention is paid to the issue of data cleaning, as this is particularly important in current data mining projects. The discovery stage is complex since one can use many techniques. In the chapter we apply different processes to the same sample data set, to give a good picture of the possibilities of hybrid learning O that is, learning by means of a range of techniques.
After the extensive discussion of the KDD process in Chapter 4, we devote Chapter 5 to the process of setting up a KDD environment. What do we need to consider when we want to start a data mining project? What are the necessary steps? At the end of the chapter, we formulate ten golden rules for setting up a KDD environment, which encapsulate the experience that we have built up over the past several years.
In Chapter 6 we describe some real-life applications from daily experience at Syllogic: customer profiling for a large bank, embedded learning in a system that predicts pilot bid behavior (career intentions), and a more technical case, on the reverse engineering of databases. These three cases give a neat illustration of the broad possibilities for application of data mining techniques.
Chapter 7 describes some formal aspects of machine learning and relational theory related to data mining: complexity theory, fuzzy databases, and database primitives for data mining. This chapter is not essential reading for those who want to apply data mining techniques but do not need a deeper knowledge of its technical underpinnings.
We conclude the book with a summary, an extensive glossary, and a subject-oriented list of further reading.
AcknowledgmentsMany people have contributed to this book in one way or another. It is impossible to thank them all here, but there are some names that deserve a special mention. Firstly, we would like to thank our colleagues at Syllogic. Arno Knobbe implemented many of the machine-learning algorithms that are in operation in Syllogic at the moment, and designed the principal case study in Chapter 4. He, together with Marc-Paul van der Hulst and Ronan Waldron, has been responsible for many of the case studies that we have been working on at Syllogic. Some portions of this book have been previously published in the Automatisering Gids, and we thank Henk Ester for his continued support. We owe thanks to Lisa Birthistle and Thea van Breenen for typing the text and drawing many of the figures. Lisa is especially acknowledged for editing the manuscript and correcting the English. Our thanks also go to Evangelos Simoudis of IBM for his many valuable comments on the manuscript. We would also like to mention the staff of the Tandem high performance research center, especially Wouter Senf, whose ideas on adapting the relational model for data mining have been very valuable. Other people who have contributed in some way to the book are Charles Gooda, Evert Jan van Hasselt, Gusti Eiben, Karen Mosman of Addison Wesley Longman and Vassilis Moustakis of the Heraklion University in Greece. The publishers are grateful to KLM for permission to feature the CAPTAINS case study.
Finally we would like to thank Rini and Marion for their continued support. It is well known that sharing your life with somebody who runs a company is difficult, but sharing your life with somebody who runs a company and also insists on publishing books is particularly hard.
0201403803P04062001
Most helpful customer reviews
0 of 0 people found the following review helpful.
Not technical but good overview of data mining
By Patrick
Data Mining by Pieter Adriaans and Dolf Zantinge is a very good management overview of data mining techniques. Data Mining is an old book but the technical overviews still stand true.
If you are looking for a technical book this is not the book for you. If you are looking to gain a little knowledge about some basic data mining techniques this book might give you want you are looking for.
4 of 5 people found the following review helpful.
An easy read
By Ollie Nanyes
This text is more or less a "popular" introduction to data mining. It is well worth reading and it is well written, but don't expect to become an expert with just this book as a base!
This might be a good book for someone who is either contemplating a career move into this area, or for someone who is professionally affected by data mining and wants a "quick and dirty" as to what data mining can do and what it can't.
0 of 0 people found the following review helpful.
To start
By vallaud
A book to read absolutly before to start any data mining project. Very precise and useful. A good support to form new data miners.
Also recommended: Building data mining applications for CRM
Data Mining, by Pieter Adriaans, Dolf Zantinge PDF
Data Mining, by Pieter Adriaans, Dolf Zantinge EPub
Data Mining, by Pieter Adriaans, Dolf Zantinge Doc
Data Mining, by Pieter Adriaans, Dolf Zantinge iBooks
Data Mining, by Pieter Adriaans, Dolf Zantinge rtf
Data Mining, by Pieter Adriaans, Dolf Zantinge Mobipocket
Data Mining, by Pieter Adriaans, Dolf Zantinge Kindle
Tidak ada komentar:
Posting Komentar