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Mining of Massive Datasets / Jure Leskovec ; Ananand Rajaraman ; Jeffrey David Ullman.

By: Contributor(s): Material type: TextTextLanguage: English Publication details: New Delhi : Cambridge University Press, 2014.Edition: 2nd edDescription: xii, 467 p. : ill. ; 24 cmISBN:
  • 9781316638491
Subject(s): DDC classification:
  • 006.312 LES 23
Contents:
Data mining --
MapReduce and the new software stack --
Finding similar items --
Mining data streams --
Link analysis --
Frequent itemsets --
Clustering --
Advertising on the Web --
Recommendation systems --
Mining social-network graphs --
Dimensionality reduction --
Large-scale machine learning.
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Holdings
Item type Current library Collection Call number Status Date due Barcode
General Books General Books CUTN Central Library Generalia Non-fiction 006.312 LES (Browse shelf(Opens below)) Available 43987
General Books General Books CUTN Central Library Generalia Non-fiction 006.312 LES (Browse shelf(Opens below)) Available 43988
General Books General Books CUTN Central Library Generalia Non-fiction 006.312 LES (Browse shelf(Opens below)) Available 43989
General Books General Books CUTN Central Library Generalia Non-fiction 006.312 LES (Browse shelf(Opens below)) Available 43990

This book focuses on practical algorithms that have been used to solve key problems in data mining and can be applied successfully to even the largest datasets. It begins with a discussion of the map-reduce framework, an important tool for parallelizing algorithms automatically. The authors explain the tricks of locality-sensitive hashing and stream processing algorithms for mining data that arrives too fast for exhaustive processing. Other chapters cover the PageRank idea and related tricks for organizing the Web, the problems of finding frequent itemsets and clustering. This second edition includes new and extended coverage on social networks, machine learning and dimensionality reduction. It includes a range of over 150 challenging exercises

Data mining --

MapReduce and the new software stack --

Finding similar items --

Mining data streams --

Link analysis --

Frequent itemsets --


Clustering --




Advertising on the Web --




Recommendation systems --





Mining social-network graphs --





Dimensionality reduction --








Large-scale machine learning.







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