Applications

Geon Dae Moon
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We analyze different types of stochastic particle models, including particle profile occupation measures, genealogical tree based evolution models, particle free energies, as well as backward Markov chain particle models. We illustrate these results with a series of topics related to computational physics and biology, stochastic optimization, signal processing and Bayesian statistics, and many other probabilistic machine learning algorithms. Special emphasis is given to the stochastic modeling, and to the quantitative performance analysis of a series of advanced Monte Carlo methods, including particle filters, genetic type island models, Markov bridge models, and interacting particle Markov chain Monte Carlo methodologies. Abstract : The mathematical foundations of statistical learning theory heavily relies on concentration inequalities and empirical processes techniques. Learning an order relation over a Banach space involves performance measures which have higher order statistics, such as rank statistics, as empirical counterparts. The classical questions of consistency, universal and fast rates of convergence require dedicated tools which involve projection arguments and concentration inequalities for U- and R-processes. In the talk, we will present some results and open problems motivated by statistical problems of major interest. : in high Abstract : I will describe some results about concentration of volume of high dimensional convex bodies obtained in the last decade. Central limit theorem for convex bodies is one of the main achievement of these series of work. I will also present some open problems, like the thin shell conjecture and the problem of spectral gap, a conjecture due to Kannan Lovasz and Simonovits. Extension of these results to new classes of probability measures, like Cauchy measure or more generally κ -concave measures will be discussed. Abstract : Compressed sensing is an area of information theory where one seeks to recover an unknown signal from few measurements. A signal is often modeled as a vector in R n , and linear measurements are given as y = Ax where A is an m by n matrix. Best known results of compressed sensing are for random linear measurements, thus A is a random matrix. We will learn about some probabilistic successes and challenges in this area, with many connections to sampling theory, random matrix theory, and stochastic geometry. Abstract: I will provide a survey of recent results concerning probabilistic ap-proximations, obtained via the use of the Malliavin calculus of variations and the Stein and Chen-Stein methods. One advantage of this approach is that upper bounds are often expressed in terms of the variance of some random variable, so that well-known estimates (like e.g. given the Poincaré inequality and its general-izations) can be directly applied. I will also provide an overview of applications, ranging from fractional processes to random fields on homogeneous spaces, and from density estimates to geometric random graphs. Abstract : In the recent years the multi-armed bandit problem has attracted a lot of attention in the theoretical learning community. This growing interest is a con-sequence of the large number of problems that can be modelized as a multi-armed bandit: web advertisement, dynamic pricing, online optimization, ect. Bandits algorithms are also used as building blocks in more complicated scenarios such as reinforcement learning, model selection problems, or games. In this talk I will focus on the so-called adversarial model for multi-armed bandits. I will show an algorithm that solves a long-standing open problem regarding the minimax rate for this framework. I will also discuss the recent extension of this algorithm to bandits with a very large, but structured, set of arms (such as paths on a graph). Abstract : Dans cet exposé, nous effectuerons un rapide survol de l’étude probabiliste des grands graphes planaires aléatoires. Né au début des années 2000, motivé par des applications en physique théorique, combinatoire et géométrie, ce champ de recherche s’est beaucoup développé depuis. L’objectif principal est de comprendre la structure à grande échelle de graphes (ou cartes) planaires uni-formes lorsque la taille tend vers l’infini. L’année dernière, Le Gall et Miermont ont montré qu’à la limite, une surface aléatoire (la carte brownienne) apparaît","PeriodicalId":186753,"journal":{"name":"Diarylethene Molecular Photoswitches","volume":"168 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2018-12-05","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Diarylethene Molecular Photoswitches","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1002/9781119508557.ch19","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0

Abstract

: I will describe some examples in genomics and in neuroscience where one needs to find different fully data-driven adaptive statistical methods for testing or for estimation. In all those examples, the key is to find concentration inequalities which either allow to very precisely calibrate the tuning parameter or to deeply understand how quantiles of test statistics are behaving. The main concentration tools are either "Talagrand" type inequalities for counting processes, Bernstein or Rosenthal type inequalities, or U-statistics - chaos inequalities. Abstract : In this lecture we present some new concentration inequalities for Feynman-Kac particle processes. We analyze different types of stochastic particle models, including particle profile occupation measures, genealogical tree based evolution models, particle free energies, as well as backward Markov chain particle models. We illustrate these results with a series of topics related to computational physics and biology, stochastic optimization, signal processing and Bayesian statistics, and many other probabilistic machine learning algorithms. Special emphasis is given to the stochastic modeling, and to the quantitative performance analysis of a series of advanced Monte Carlo methods, including particle filters, genetic type island models, Markov bridge models, and interacting particle Markov chain Monte Carlo methodologies. Abstract : The mathematical foundations of statistical learning theory heavily relies on concentration inequalities and empirical processes techniques. Learning an order relation over a Banach space involves performance measures which have higher order statistics, such as rank statistics, as empirical counterparts. The classical questions of consistency, universal and fast rates of convergence require dedicated tools which involve projection arguments and concentration inequalities for U- and R-processes. In the talk, we will present some results and open problems motivated by statistical problems of major interest. : in high Abstract : I will describe some results about concentration of volume of high dimensional convex bodies obtained in the last decade. Central limit theorem for convex bodies is one of the main achievement of these series of work. I will also present some open problems, like the thin shell conjecture and the problem of spectral gap, a conjecture due to Kannan Lovasz and Simonovits. Extension of these results to new classes of probability measures, like Cauchy measure or more generally κ -concave measures will be discussed. Abstract : Compressed sensing is an area of information theory where one seeks to recover an unknown signal from few measurements. A signal is often modeled as a vector in R n , and linear measurements are given as y = Ax where A is an m by n matrix. Best known results of compressed sensing are for random linear measurements, thus A is a random matrix. We will learn about some probabilistic successes and challenges in this area, with many connections to sampling theory, random matrix theory, and stochastic geometry. Abstract: I will provide a survey of recent results concerning probabilistic ap-proximations, obtained via the use of the Malliavin calculus of variations and the Stein and Chen-Stein methods. One advantage of this approach is that upper bounds are often expressed in terms of the variance of some random variable, so that well-known estimates (like e.g. given the Poincaré inequality and its general-izations) can be directly applied. I will also provide an overview of applications, ranging from fractional processes to random fields on homogeneous spaces, and from density estimates to geometric random graphs. Abstract : In the recent years the multi-armed bandit problem has attracted a lot of attention in the theoretical learning community. This growing interest is a con-sequence of the large number of problems that can be modelized as a multi-armed bandit: web advertisement, dynamic pricing, online optimization, ect. Bandits algorithms are also used as building blocks in more complicated scenarios such as reinforcement learning, model selection problems, or games. In this talk I will focus on the so-called adversarial model for multi-armed bandits. I will show an algorithm that solves a long-standing open problem regarding the minimax rate for this framework. I will also discuss the recent extension of this algorithm to bandits with a very large, but structured, set of arms (such as paths on a graph). Abstract : Dans cet exposé, nous effectuerons un rapide survol de l’étude probabiliste des grands graphes planaires aléatoires. Né au début des années 2000, motivé par des applications en physique théorique, combinatoire et géométrie, ce champ de recherche s’est beaucoup développé depuis. L’objectif principal est de comprendre la structure à grande échelle de graphes (ou cartes) planaires uni-formes lorsque la taille tend vers l’infini. L’année dernière, Le Gall et Miermont ont montré qu’à la limite, une surface aléatoire (la carte brownienne) apparaît
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我将描述基因组学和神经科学中的一些例子,在这些领域中,人们需要找到不同的完全数据驱动的自适应统计方法来进行测试或估计。在所有这些例子中,关键是找到集中不平等,这要么允许非常精确地校准调优参数,要么深入了解测试统计的分位数是如何表现的。主要的集中工具要么是用于计数过程的“塔拉格兰”型不等式,要么是伯恩斯坦或罗森塔尔型不等式,要么是u统计——混沌不等式。摘要:在本讲座中,我们提出了一些新的Feynman-Kac粒子过程的浓度不等式。我们分析了不同类型的随机粒子模型,包括粒子剖面占领测度、基于系谱树的进化模型、粒子自由能和后向马尔可夫链粒子模型。我们用一系列与计算物理和生物学、随机优化、信号处理和贝叶斯统计以及许多其他概率机器学习算法相关的主题来说明这些结果。特别强调随机建模,以及一系列先进的蒙特卡罗方法的定量性能分析,包括粒子滤波器、遗传型岛模型、马尔可夫桥模型和相互作用粒子马尔可夫链蒙特卡罗方法。摘要:统计学习理论的数学基础在很大程度上依赖于浓度不等式和经验过程技术。学习巴拿赫空间上的阶关系涉及具有高阶统计量的性能度量,如秩统计量,作为经验对口。关于一致性、普适性和快速收敛率的经典问题需要专门的工具,这些工具涉及U-和r -过程的投影论证和集中不等式。在演讲中,我们将展示一些结果和开放的问题,这些问题是由主要感兴趣的统计问题引起的。摘要:本文将描述近十年来关于高维凸体体积集中的一些研究结果。凸体的中心极限定理是这一系列工作的主要成果之一。我也会提出一些开放的问题,比如薄壳猜想和谱隙问题,这是由Kannan Lovasz和Simonovits提出的猜想。将这些结果推广到新的概率测度类,如柯西测度或更普遍的κ -凹测度。摘要:压缩感知是信息论的一个领域,它寻求从少量测量中恢复未知信号。信号通常被建模为rn中的向量,线性测量用y = Ax给出,其中A是一个m × n矩阵。压缩感知最著名的结果是随机线性测量,因此A是一个随机矩阵。我们将学习在这一领域的一些概率成功和挑战,与抽样理论、随机矩阵理论和随机几何有许多联系。摘要:我将提供最近关于概率近似的结果的调查,这些结果是通过使用Malliavin变分演算和Stein和Chen-Stein方法获得的。这种方法的一个优点是上界通常用一些随机变量的方差来表示,因此可以直接应用众所周知的估计(例如给定庞加莱不等式及其推广)。我还将提供应用概述,从分数过程到齐次空间上的随机场,从密度估计到几何随机图。摘要:近年来,多武装盗匪问题引起了理论界的广泛关注。这种日益增长的兴趣是大量问题的结果,这些问题可以建模为一个多武装的强盗:网络广告,动态定价,在线优化等。强盗算法也被用作更复杂场景中的构建块,如强化学习、模型选择问题或游戏。在这次演讲中,我将集中讨论所谓的多武装强盗的对抗模型。我将展示一种算法,该算法解决了关于该框架的极大极小率的长期开放问题。我还将讨论最近将该算法扩展到具有非常大但结构化的臂集(例如图上的路径)的强盗。摘要/ Abstract摘要:随着时间的延长,不同的影响因素会迅速影响到个体的寿命,从而影响到个体的寿命。新研究发现,2000年的<s:1> <s:1> <s:1> <s:1> <s:1> <s:1> <s:1> <s:1> <s:1> <s:1> <s:1> <s:1> <s:1> <s:1> <s:1>············································目的是主要是理解grande中阶梯光栅de la结构图表(你必须)planaires uni-formes当身材往往更无限。
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Applications Index Reaction Mechanism Photoswitching Performance Synthesis Procedures of Typical Diarylethenes
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