Book contents
- Frontmatter
- Contents
- Preface
- I Tools and Techniques
- 1 Introduction
- 2 Game-Theoretic Techniques
- 3 Moments and Deviations
- 4 Tail Inequalities
- 5 The Probabilistic Method
- 6 Markov Chains and Random Walks
- 7 Algebraic Techniques
- II Applications
- Appendix A Notational Index
- Appendix B Mathematical Background
- Appendix C Basic Probability Theory
- References
- Index
4 - Tail Inequalities
from I - Tools and Techniques
Published online by Cambridge University Press: 05 March 2013
- Frontmatter
- Contents
- Preface
- I Tools and Techniques
- 1 Introduction
- 2 Game-Theoretic Techniques
- 3 Moments and Deviations
- 4 Tail Inequalities
- 5 The Probabilistic Method
- 6 Markov Chains and Random Walks
- 7 Algebraic Techniques
- II Applications
- Appendix A Notational Index
- Appendix B Mathematical Background
- Appendix C Basic Probability Theory
- References
- Index
Summary
IN this chapter we present some general bounds on the tail of the distribution of the sum of independent random variables, with some extensions to the case of dependent or correlated random variables. These bounds are derived via the use of moment generating functions and result in “Chernoff-type” or “exponential" tail bounds. These Chernoff bounds are applied to the analysis of algorithms for global wiring in chips and routing in parallel communications networks. For applications in which the random variables of interest cannot be modeled as sums of independent random variables, martingales are a powerful probabilistic tool for bounding the divergence of a random variable from its expected value. We introduce the concept of conditional expectation as a random variable, and use this to develop a simplified definition of martingales. Using measure theoretic ideas, we provide a more general description of martingales. Finally, we present an exponential tail bound for martingales and apply it to the analysis of an occupancy problem.
The Chernoff Bound
In Chapter 3 we initiated the study of techniques for bounding the probability that a random variable deviates far from its expectation. In this chapter we focus on techniques for obtaining considerably sharper bounds on such tail probabilities.
The random variables we will be most concerned with are sums of independent Bernoulli trials; for example, the outcomes of tosses of a coin. In designing and analyzing randomized algorithms in various settings, it is extremely useful to have an understanding of the behavior of this sum.
- Type
- Chapter
- Information
- Randomized Algorithms , pp. 67 - 100Publisher: Cambridge University PressPrint publication year: 1995
- 5
- Cited by