Pang-Ning Tan現為密歇根州立大學計算機與工程係助理教授,主要教授數據挖掘、數據庫係統等課程。此前,他曾是明尼蘇達大學美國陸軍高性能計算研究中心副研究員(2002-2003)。
Michael Steinbach 明尼蘇達大學計算機與工程係研究員,在讀博士。
Vipin Kumar明尼蘇達大學計算機科學與工程係主任,曾任美國陸軍高性能計算研究中心主任。他擁有馬裏蘭大學博士學位,是數據挖掘和高性能計算方麵的國際權威,IEEE會士。
Introduction
Rapid advances in data collection and storage technology have enabled or
ganizations to accumulate vast amounts of data. However, extracting useful
information has proven extremely challenging. Often, traditional data analy
sis tools and techniques cannot be used because of the massive size of a data
set. Sometimes, the non-traditional nature of the data means that traditional
approaches cannot be applied even if the data set is relatively small. In other
situations, the questions that need to be answered cannot be addressed using
existing data analysis techniques, and thus, new methods need to be devel
oped.
Data mining is a technology that blends traditional data analysis methods
with sophisticated algorithms for processing large volumes of data. It has also
opened up exciting opportunities for exploring and analyzing new types of
data and for analyzing old types of data in new ways. In this introductory
chapter, we present an overview of data mining and outline the key topics
to be covered in this book. We start with a description of some well-known
applications that require new techniques for data analysis.
Business Point-of-sale data collection (bar code scanners, radio frequency
identification (RFID), and smart card technology) have allowed retailers to
collect up-to-the-minute data about customer purchases at the checkout coun
ters of their stores. Retailers can utilize this information, along with other
business-critical data such as Web logs from e-commerce Web sites and cus
tomer service records from call centers, to help them better understand the
needs of their customers and make more informed business decisions.
Data mining techniques can be used to support a wide range of business
intelligence applications such as customer profiling, targeted marketing, work
flow management, store layout, and fraud detection. It can also help retailers
發表於2024-11-09
Introduction to Data Mining 2024 pdf epub mobi 電子書 下載
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評分作為數據挖掘導論,這本書基本上已經做到瞭。書中介紹瞭很多數據挖掘方麵相關的概念和方法,對於入門來講是很友好的。因為剛剛看完機器學習的書,所以前半部分基本不需要看瞭。後麵的關聯分析和聚類方法還是可以一看的。雖然這本書沒有實際操作的內容,但是讓人大概瞭解瞭數據...
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圖書標籤: 數據挖掘 mining data DataMining
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Introduction to Data Mining 2024 pdf epub mobi 電子書 下載