Data Mining: Practical Machine Learning Tools and Techniques (The Morgan Kaufmann Series in Data Management Systems) Paperback - 2011
by Witten, Ian H
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- Paperback
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Details
- Title Data Mining: Practical Machine Learning Tools and Techniques (The Morgan Kaufmann Series in Data Management Systems)
- Author Witten, Ian H
- Binding Paperback
- Edition 3
- Condition Used: Good
- Pages 664
- Volumes 1
- Language ENG
- Publisher Morgan Kaufmann, India
- Publication date 2011-01-20
- Illustrated Yes
- Bookseller's Inventory # SONG0123748569
- ISBN 9780123748560 / 0123748569
- Weight 2.05 lbs (0.93 kg)
- Dimensions 9.25 x 7.5 x 1.4 in (23.50 x 19.05 x 3.56 cm)
- Size 7.50x1.25x9.25
- Category Computers - Data Base Management
- Dewey Decimal Code 006.3
- Quantity available 1
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