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Mining of massive datasets / Jure Leskovec, Anand Rajaraman, Jeffrey David Ullman.

By: Contributor(s): Material type: TextTextPublisher: New York, NY : Cambridge University Press, 2020Edition: Third editionDescription: xi, 553 pContent type:
  • text
Media type:
  • unmediated
Carrier type:
  • volume
ISBN:
  • 9781108476348
Subject(s): DDC classification:
  • 006.312 LEM
Summary: "The Web, social media, mobile activity, sensors, Internet commerce, and many other modern applications provide many extremely large datasets from which information can be gleaned by data mining. This book focuses on practical algorithms that have been used to solve key problems in data mining and can be used on even the largest datasets. It begins with a discussion of the MapReduce framework and related techniques for efficient parallel programming. The tricks of locality-sensitive hashing are explained. This body of knowledge, which deserves to be more widely known, is essential when seeking similar objects in a very large collection without having to compare each pair of objects. Stream-processing algorithms for mining data that arrives too fast for exhaustive processing are also explained. The PageRank idea and related tricks for organizing the Web are covered next. Other chapters cover the problems of finding frequent itemsets and clustering, each from the point of view that the data is too large to fit in main memory. Two applications: recommendation systems and Web advertising, each vital in e-commerce, are treated in detail. Later chapters cover algorithms for analyzing social-network graphs, compressing large-scale data, and machine learning. This third edition includes new and extended coverage on decision trees, deep learning, and mining social-network graphs. Written by leading authorities in database and Web technologies, it is essential reading for students and practitioners alike"-- Provided by publisher.
Item type: Books
Holdings
Item type Current library Collection Shelving location Call number Copy number Status Date due Barcode Item holds
Books IUT Library Non-fiction General Stacks 006.312 LEM 01 Available 0000045218
Books IUT Library Non-fiction General Stacks 006.312 LEM 02 Available 0000045219
Books IUT Library Non-fiction General Stacks 006.312 LEM 03 Available 0000045220
Books IUT Library Non-fiction General Stacks 006.312 LEM 04 Available 0000045221
Books IUT Library Non-fiction General Stacks 006.312 LEM 05 Available 0000045222
Books IUT Library Non-fiction General Stacks 006.312 LEM 06 Available 0000045223
Books IUT Library Non-fiction General Stacks 006.312 LEM 07 Available 0000045224
Books IUT Library Non-fiction General Stacks 006.312 LEM 08 Available 0000045225
Books IUT Library Non-fiction General Stacks 006.312 LEM 09 Checked out 03/28/2026 0000045226
Books IUT Library Non-fiction General Stacks 006.312 LEM 10 Available 0000045227
Total holds: 0

Includes index.

"The Web, social media, mobile activity, sensors, Internet commerce, and many other modern applications provide many extremely large datasets from which information can be gleaned by data mining. This book focuses on practical algorithms that have been used to solve key problems in data mining and can be used on even the largest datasets. It begins with a discussion of the MapReduce framework and related techniques for efficient parallel programming. The tricks of locality-sensitive hashing are explained. This body of knowledge, which deserves to be more widely known, is essential when seeking similar objects in a very large collection without having to compare each pair of objects. Stream-processing algorithms for mining data that arrives too fast for exhaustive processing are also explained. The PageRank idea and related tricks for organizing the Web are covered next. Other chapters cover the problems of finding frequent itemsets and clustering, each from the point of view that the data is too large to fit in main memory. Two applications: recommendation systems and Web advertising, each vital in e-commerce, are treated in detail. Later chapters cover algorithms for analyzing social-network graphs, compressing large-scale data, and machine learning. This third edition includes new and extended coverage on decision trees, deep learning, and mining social-network graphs. Written by leading authorities in database and Web technologies, it is essential reading for students and practitioners alike"-- Provided by publisher.

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