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图书 概率论教程
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《概率论教程 》是一部讲述现代概率论及其测度论应用基础的教程,其目标读者是该领域的研究生和相关的科研人员。内容广泛,有许多初级教程不能涉及到得的。理论叙述严谨,独立性强。有关测度的部分和概率的章节相互交织,将概率的抽象性完全呈现出来。此外,还有大量的图片、计算模拟、重要数学家的个人传记和大量的例子。这使得表现形式更加活跃。本书由凯兰克著。

目录

preface

1 basic measure theory

1.1 classes of sets

1.2 set functions

1.3 the measure extension theorem

1.4 measurable maps

1.5 random variables

2 independence

2.1 independence of events

2.2 independent random variables

2.3 kolmogorov's 0-1 law

2.4 example: percolation

3 generating functions

3.1 definition and examples

3.2 poisson approximation

3.3 branching processes

4 the integral

4.1 construction and simple properties

4.2 monotone convergence and fatou's lemma

.4.3 lebesgue integral versus riemann integral

5 moments and laws of large numbers

5.1 moments

5.2 weak law of large numbers

5.3 strong law of large numbers

5.4 speed of convergence in the strong lln

5.5 the poisson process

6 convergence theorems

6.1 almost sure and measure convergence

6.2 uniform integrability

6.3 exchanging integral and differentiation

7 lp-spaces and the radon-nikodym theorem

7.1 definitions

7.2 inequalities and the fischer-riesz theorem

7.3 hilbert spaces

7.4 lebesgue's decomposition theorem

7.5 supplement: signed measures

7.6 supplement: dual spaces

8 conditional expectations

8.1 elementary conditional probabilities

8.2 conditional expectations

8.3 regular conditional distribution

9 martingales

9.1 processes, filtrations, stopping times

9.2 martingales

9.3 discrete stochastic integral

9.4 discrete martingale representation theorem and the crr model

10 optional sampling theorems

10.1 doob decomposition and square variation

10.2 optional sampling and optional stopping

10.3 uniform integrability and optional sampling

11 martingale convergence theorems and their applications

11.1 doob's inequality

11.2 martingale convergence theorems

11.3 example: branching process

12 backwards martingales and exchangeability

12.1 exchangeable families of random variables

12.2 backwards martingales

12.3 de finetti's theorem

13 convergence of measures

13.1 a topology primer

13.2 weak and vague convergence

13.3 prohorov's theorem

13.4 application: a fresh look at de finetti's theorem

14 probability measures on product spaces

14.1 product spaces

14.2 finite products and transition kernels

14.3 kolmogorov's extension theorem

14.4 markov semigroups

15 characteristic functions and the central limit theorem

15.1 separating classes of functions

15.2 characteristic functions: examples

15.3 l6vy's continuity theorem

15.4 characteristic functions and moments

15.5 the central limit theorem

15.6 multidimensional central limit theorem

16 infinitely divisible distributions

16.1 l6vy-khinchin formula

16.2 stable distributions

17 markov chains

17.1 definitions and construction

17.2 discrete markov chains: examples

17.3 discrete markov processes in continuous time

17.4 discrete markov chains: recurrence and transience

17.5 application: recurrence and transience of random walks

17.6 invariant distributions

18 convergence of markov chains

18.1 periodicity of markov chains

18.2 coupling and convergence theorem

18.3 markov chain monte carlo method

18.4 speed of convergence

19 markov chains and electrical networks

19.1 harmonic functions

19.2 reversible markov chains

19.3 finite electrical networks

19.4 recurrence and transience

19.5 network reduction

19.6 random walk in a random environment

20 ergodic theory

20.1 definitions

20.2 ergodic theorems

20.3 examples

20.4 application: recurrence of random walks

20.5 mixing

21 brownian motion

21.1 continuous versions

21.2 construction and path properties

21.3 strong markov property

21.4 supplement: feller processes

21.5 construction via l2-approximation

21.6 the space c([0, ∞))

21.7 convergence of probability measures on c([0, ∞))

21.8 donsker's theorem

21.9 pathwise convergence of branching processes

21.10 square variation and local martingales

22 law of the iterated logarithm

22. l iterated logarithm for the brownian motion

22.2 skorohod's embedding theorem

22.3 hartman-wintner theorem

23 large deviations

23.1 cramer's theorem

23.2 large deviations principle

23.3 sanov's theorem

23.4 varadhan's lemma and free energy

24 the poisson point process

24.1 random measures

24.2 properties of the poisson point process

24.3 the poisson-dirichlet distribution

25 the it6 integral

25.1 it6 integral with respect to brownian motion

25.2 it6 integral with respect to diffusions

25.3 the it6 formula

25.4 dirichlet problem and brownian motion

25.5 recurrence and transience of brownian motion

26 stochastic differential equations

26.1 strong solutions

26.2 weak solutions and the martingale problem

26.3 weak uniqueness via duality

references

notation index

name index

subject index

标签
缩略图
书名 概率论教程
副书名
原作名
作者 (德)凯兰克
译者
编者
绘者
出版社 世界图书出版公司
商品编码(ISBN) 9787510044113
开本 24开
页数 616
版次 1
装订 平装
字数
出版时间 2012-06-01
首版时间 2012-06-01
印刷时间 2012-06-01
正文语种
读者对象 青年(14-20岁),研究人员,普通成人
适用范围
发行范围 公开发行
发行模式 实体书
首发网站
连载网址
图书大类 科学技术-自然科学-数学
图书小类
重量 0.75
CIP核字
中图分类号 O21
丛书名
印张 26.5
印次 1
出版地 北京
223
147
27
整理
媒质 图书
用纸 普通纸
是否注音
影印版本 原版
出版商国别 CN
是否套装 单册
著作权合同登记号 图字01-2012-1248
版权提供者 Springer-Verlag
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