Intl. Ed.
Intl. Ed.
Introduction to Data Mining, First Edition, Pearson New International Edition Trade paperback - 2014
by Pang-Ning Tan; Michael Steinbach; Vipin Kumar
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Details
- Title Introduction to Data Mining, First Edition, Pearson New International Edition
- Author Pang-Ning Tan; Michael Steinbach; Vipin Kumar
- Binding Paperback
- Edition Edition:1
- Condition Used - Fine
- Pages 732
- Volumes 1
- Language ENG
- Publisher Pearson Education, Harlow, Essex, England
- Publication date 2014
- Bookseller's Inventory # RWARE0000003479
- ISBN 9781292026152 / 1292026154
- Weight 3.50 lbs (1.59 kg)
- Size 4to
- Category Computers - General Information
- Dewey Decimal Code 005.741
- Quantity available 1
- Bookseller catalogues Science & Technology
About Books of the World Virginia, United States
Specialising in: Area Studies (Esp. Africa, Asia, British Empire, Caribbean), Cookbooks, History, International Relations & National Security, Mystery, Suspense & Thrillers, Science Fiction, Travel & Exploration
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