TY - BOOK AU - Feldman,Moran AU - TI - Algorithms for big data SN - 9789811204739 U1 - 005.701 23 KW - Algorithms N1 - Contents Part I: Data Stream Algorithms Chapter 1. Introduction to Data Stream Algorithms Chapter 2. Basic Probability and Tail Bounds Chapter 3. Estimation Algorithms Chapter 4. Reservoir Sampling Chapter 5. Pairwise Independent Hashing Chapter 6. Counting Distinct Tokens Chapter 7. Sketches Chapter 8. Graph Data Stream Algorithms Chapter 9. The Sliding Window Model Part II: Sublinear Time Algorithms Chapter 10. Introduction to Sublinear Time Algorithms Chapter 11. Property Testing Chapter 12. Algorithms for Bounded Degree Graphs Chapter 13. An Algorithm for Dense Graphs Chapter 14. Algorithms for Boolean Functions Part III: Map-Reduce Chapter 15. Introduction to Map-Reduce Chapter 16. Algorithms for Lists Chapter 17. Graph Algorithms Chapter 18. Locality-Sensitive Hashing Index N2 - "This unique volume is an introduction for computer scientists, including a formal study of theoretical algorithms for Big Data applications, which allows them to work on such algorithms in the future. It also serves as a useful reference guide for the general computer science population, providing a comprehensive overview of the fascinating world of such algorithms. To achieve these goals, the algorithmic results presented have been carefully chosen so that they demonstrate the important techniques and tools used in Big Data algorithms, and yet do not require tedious calculations or a very deep mathematical background"-- ER -