Foundations of Statistical Natural Language Processing Hard cover - 1999 - 1st Edition
by Manning, Christopher, and Schutze, Hinrich
- Used
- Hardback
- first
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Details
- Title Foundations of Statistical Natural Language Processing
- Author Manning, Christopher, and Schutze, Hinrich
- Binding Hardback
- Edition number 1st
- Edition 1
- Condition Used - Very good. light shelfwear, NO PRIORITY SHIPPING DUE TO WEIGHT
- Pages 720
- Volumes 1
- Language ENG
- Publisher MIT Press, Cambridge
- Publication date 1999
- Illustrated Yes
- Bookseller's Inventory # Alibris.0027999
- ISBN 9780262133609 / 0262133601
- Weight 2.98 lbs (1.35 kg)
- Dimensions 9.46 x 8.04 x 1.25 in (24.03 x 20.42 x 3.18 cm)
- Age range 18 to UP years
- Grade levels 13 - UP
- Category Language Arts / Linguistics / Literacy
- Library of Congress subjects Computational linguistics - Statistical
- Library of Congress Catalogue Number 99021137
- Dewey Decimal Code 410.285
- Quantity available 1
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