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Book ChapterDOI

Convergence of probability measures

Richard F. Bass
- pp 237-243
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TLDR
Weakconvergence methods in metric spaces were studied in this article, with applications sufficient to show their power and utility, and the results of the first three chapters are used in Chapter 4 to derive a variety of limit theorems for dependent sequences of random variables.
Abstract
The author's preface gives an outline: "This book is about weakconvergence methods in metric spaces, with applications sufficient to show their power and utility. The Introduction motivates the definitions and indicates how the theory will yield solutions to problems arising outside it. Chapter 1 sets out the basic general theorems, which are then specialized in Chapter 2 to the space C[0, l ] of continuous functions on the unit interval and in Chapter 3 to the space D [0, 1 ] of functions with discontinuities of the first kind. The results of the first three chapters are used in Chapter 4 to derive a variety of limit theorems for dependent sequences of random variables. " The book develops and expands on Donsker's 1951 and 1952 papers on the invariance principle and empirical distributions. The basic random variables remain real-valued although, of course, measures on C[0, l ] and D[0, l ] are vitally used. Within this framework, there are various possibilities for a different and apparently better treatment of the material. More of the general theory of weak convergence of probabilities on separable metric spaces would be useful. Metrizability of the convergence is not brought up until late in the Appendix. The close relation of the Prokhorov metric and a metric for convergence in probability is (hence) not mentioned (see V. Strassen, Ann. Math. Statist. 36 (1965), 423-439; the reviewer, ibid. 39 (1968), 1563-1572). This relation would illuminate and organize such results as Theorems 4.1, 4.2 and 4.4 which give isolated, ad hoc connections between weak convergence of measures and nearness in probability. In the middle of p. 16, it should be noted that C*(S) consists of signed measures which need only be finitely additive if 5 is not compact. On p. 239, where the author twice speaks of separable subsets having nonmeasurable cardinal, he means "discrete" rather than "separable." Theorem 1.4 is Ulam's theorem that a Borel probability on a complete separable metric space is tight. Theorem 1 of Appendix 3 weakens completeness to topological completeness. After mentioning that probabilities on the rationals are tight, the author says it is an

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Citations
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On the Poisson distribution of lengths of lattice vectors in a random lattice

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An Optimal Three-Way Stable and Monotonic Spectrum of Bounds on Quantiles: A Spectrum of Coherent Measures of Financial Risk and Economic Inequality

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TL;DR: A spectrum of upper bounds (Qα(X ; p) αe[0,∞] on the largest (1-p)-quantile Q(X;p) of an arbitrary random variable X is introduced in this paper.
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Monotone spectral density estimation

TL;DR: In this paper, two estimators of a monotone spectral density, based on the periodogram, were proposed and derived for short memory linear processes and long memory Gaussian processes.
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A New Family of Non-Local Priors for Chain Event Graph Model Selection

TL;DR: Three different types of NLP are defined and explored that are customised to search CEG spaces and it is demonstrated how one of these candidate NLPs provides a framework for search which is both robust and computationally efficient.
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Weak convergence of error processes in discretizations of stochastic integrals and Besov spaces

Stefan Geiss, +1 more
- 09 Nov 2007 - 
TL;DR: In this paper, weak convergence of the rescaled error processes arising from Riemann discretizations of certain stochastic integrals is studied and the authors consider weak convergence in terms of the fractional smoothness in the Malliavin sense of the integral.
References
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Large Networks and Graph Limits

TL;DR: Laszlo Lovasz has written an admirable treatise on the exciting new theory of graph limits and graph homomorphisms, an area of great importance in the study of large networks.
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Multidimensional Stochastic Processes as Rough Paths

TL;DR: Rough path analysis provides a fresh perspective on Ito's important theory of stochastic differential equations as mentioned in this paper, and it has been used extensively in the analysis of partial differential equations.
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Pure exploration in multi-armed bandits problems

TL;DR: The main result is that the required exploration-exploitation trade-offs are qualitatively different, in view of a general lower bound on the simple regret in terms of the cumulative regret.
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On the limits of communication with low-precision analog-to-digital conversion at the receiver

TL;DR: This work evaluates the communication limits imposed by low-precision ADC for transmission over the real discrete-time additive white Gaussian noise (AWGN) channel, under an average power constraint on the input.