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[Network DevelopRECURSIVE BAYESIAN INFERENCE ON

Description:

This thesis is concerned with recursive Bayesian estimation of non-linear dynamical
systems, which can be modeled as discretely observed stochastic differential
equations. The recursive real-time estimation algorithms for these continuous-
discrete filtering problems are traditionally called optimal filters and the algorithms
for recursively computing the estimates based on batches of observations
are called optimal smoothers. In this thesis, new practical algorithms for approximate
and asymptotically optimal continuous-discrete filtering and smoothing are
presented.
The mathematical approach of this thesis is probabilistic and the estimation
algorithms are formulated in terms of Bayesian inference. This means that the
unknown parameters, the unknown functions and the physical noise processes are
treated as random processes in the same joint probability space. The Bayesian approach
provides a consistent way of computing the optimal filtering and smoothing
estimates, which are optimal given the model assumptions and a consistent
way of analyzing their uncertainties.
The formal equations of the optimal Bayesian continuous-discrete filtering
and smoothing solutions are well known, but the exact analytical solutions are
available only for linear Gaussian models and for a few other restricted special
cases. The main contributions of this thesis are to show how the recently developed
discrete-time unscented Kalman filter, particle filter, and the corresponding
smoothers can be applied in the continuous-discrete setting. The equations for the
continuous-time unscented Kalman-Bucy filter are also derived.
The estimation performance of the new filters and smoothers is tested using
simulated data. Continuous-discrete filtering based solutions are also presented to
the problems of tracking an unknown number of targets, estimating the spread of
an infectious disease and to prediction of an unknown time series.


Platform: | Size: 1457664 | Author: eestarliu | Hits:

[matlabbayesc

Description: matlab编写,贝叶斯估计程序,简单易懂。-Matlab prepared, Bayesian estimation procedures, simple and understandable.
Platform: | Size: 1024 | Author: 魏雪云 | Hits:

[Algorithmcopulas

Description: copua是金融数学计算中的一类新模型。本代码提供了最常用的copula模型,如clayton等中的参数估计等内容-copua financial mathematical calculation of a new type of model. This code provides the most commonly used model of Copulas, such as Clayton of parameter estimation etc.
Platform: | Size: 8192 | Author: 王璐 | Hits:

[AI-NN-PRReBEL_0-2-6

Description: ReBEL is a Matlabtoolkit of functions and scripts, designed to facilitate sequential Bayesian inference (estimation) in general state space models. This software consolidates research on new methods for recursive Bayesian estimation and Kalman filtering by Rudolph van der Merwe and Eric A. Wan. The code is developed and maintained by Rudolph van der Merwe at the OGI School of Science & Engineering at OHSU (Oregon Health & Science University). -ReBEL is a Matlabtoolkit of functions and s cripts. designed to facilitate in sequential Bayesian ference (estimation) in general state space mo dels. This software consolidates research on n ew methods for Bayesian estimation a recursive nd Kalman filtering by Rudolph and van der Merwe Eric A. Wan. The code is developed and maintaine d by Rudolph van der Merwe at the OGI School of Sci ence
Platform: | Size: 489472 | Author: 薛斌 | Hits:

[AI-NN-PRrjMCMCsa

Description: On-Line MCMC Bayesian Model Selection This demo demonstrates how to use the sequential Monte Carlo algorithm with reversible jump MCMC steps to perform model selection in neural networks. We treat both the model dimension (number of neurons) and model parameters as unknowns. The derivation and details are presented in: Christophe Andrieu, Nando de Freitas and Arnaud Doucet. Sequential Bayesian Estimation and Model Selection Applied to Neural Networks . Technical report CUED/F-INFENG/TR 341, Cambridge University Department of Engineering, June 1999. After downloading the file, type "tar -xf version2.tar" to uncompress it. This creates the directory version2 containing the required m files. Go to this directory, load matlab5 and type "smcdemo1". In the header of the demo file, one can select to monitor the simulation progress (with par.doPlot=1) and modify the simulation parameters. -On-Line MCMC Bayesian Model Selection This demo demonstrates how to use the sequential Monte Carlo algorithm with reversible jump MCMC steps to perform model selection in neural networks. We treat both the model dimension (number of neurons) and model parameters as unknowns. The derivation and details are presented in: Christophe Andrieu, Nando de Freitas and Arnaud Doucet. Sequential Bayesian Estimation and Model Selection Applied to Neural Networks . Technical report CUED/F-INFENG/TR 341, Cambridge University Department of Engineering, June 1999. After downloading the file, type "tar-xf version2.tar" to uncompress it. This creates the directory version2 containing the required m files. Go to this directory, load matlab5 and type "smcdemo1". In the header of the demo file, one can select to monitor the simulation progress (with par.doPlot=1) and modify the simulation parameters.
Platform: | Size: 16384 | Author: 徐剑 | Hits:

[Othersbgcop

Description: sbgcop: Semiparametric Bayesian Gaussian copula estimation This package estimates parameters of a Gaussian copula, treating the univariate marginal distributions as nuisance parameters as described in Hoff(2007). It also provides a semiparametric imputation procedure for missing multivariate data. Version: 0.95 Date: 2007-03-09 Author: Peter Hoff Maintainer: Peter Hoff <hoff at stat.washington.edu> License: GPL Version 2 or later URL: http://www.stat.washington.edu/hoff CRAN checks: sbgcop results Downloads: Reference manual: sbgcop.pdf
Platform: | Size: 94208 | Author: cy | Hits:

[AlgorithmOn-Line_MCMC_Bayesian_Model_Selection

Description: This demo nstrates how to use the sequential Monte Carlo algorithm with reversible jump MCMC steps to perform model selection in neural networks. We treat both the model dimension (number of neurons) and model parameters as unknowns. The derivation and details are presented in: Christophe Andrieu, Nando de Freitas and Arnaud Doucet. Sequential Bayesian Estimation and Model Selection Applied to Neural Networks . Technical report CUED/F-INFENG/TR 341, Cambridge University Department of Engineering, June 1999. After downloading the file, type "tar -xf version2.tar" to uncompress it. This creates the directory version2 containing the required m files. Go to this directory, load matlab5 and type "smcdemo1". In the header of the demo file, one can select to monitor the simulation progress (with par.doPlot=1) and modify the simulation parameters.-This demo nstrates how to use the sequential Monte Carlo algorithm with reversible jump MCMC steps to perform model selection in neural networks. We treat both the model dimension (number of neurons) and model parameters as unknowns. The derivation and details are presented in: Christophe Andrieu, Nando de Freitas and Arnaud Doucet. Sequential Bayesian Estimation and Model Selection Applied to Neural Networks . Technical report CUED/F-INFENG/TR 341, Cambridge University Department of Engineering, June 1999. After downloading the file, type "tar-xf version2.tar" to uncompress it. This creates the directory version2 containing the required m files. Go to this directory, load matlab5 and type "smcdemo1". In the header of the demo file, one can select to monitor the simulation progress (with par.doPlot=1) and modify the simulation parameters.
Platform: | Size: 220160 | Author: 晨间 | Hits:

[OtherBayesianforAutomaticSpeechRecognition

Description: 自动语音识别的贝叶斯估计文章 -Automatic Speech Recognition Bayesian Estimation article
Platform: | Size: 295936 | Author: 丁国梁 | Hits:

[Special Effectscurveletdenoise

Description: curvelet变换贝叶斯估计方法,用于估计含噪声图像的噪声参数。再对图像进行去噪处理-curvelet transform Bayesian estimation methods used to estimate the image noise with noise parameters. Re-image de-noising processing
Platform: | Size: 2048 | Author: 张娜 | Hits:

[DocumentsParticleFiltering_paper

Description: 粒子滤波的基本程序及粒子滤波原始论文Novel approach to nonlinear_non-Gaussian Bayesian state estimation-Particle filter and the basic procedures for the original particle filter papers Novel approach to nonlinear_non-Gaussian Bayesian state estimation
Platform: | Size: 531456 | Author: tedachun | Hits:

[Special Effectsminipro

Description: 该系统功能:实现手写识别,能通过对样例库中的数据进行学习,然后能判别、分类新的输入样例。其中包含了Kn近邻算法,贝叶斯参数估计的实现。实现了open test, close test等测试方法。-The system features: realization of handwriting recognition, through the library of sample data for study, and then to identify, classify the new input sample. Which contains Kn neighbor algorithm, Bayesian parameter estimation is achieved. Realize the open test, close test and other testing methods.
Platform: | Size: 8949760 | Author: hongyu | Hits:

[Special EffectsNonlinearBayesianfilteringwithapplicationstoestima

Description: 非线性贝叶斯过滤与应用估算和导航,非常不错的粒子滤波英文论文-Nonlinear Bayesian filtering with applications to estimation and navigation
Platform: | Size: 1797120 | Author: | Hits:

[AlgorithmReBEL_0-2-6

Description: 递归贝叶斯估计的工具包,旨在方便序列贝叶斯估计-A Matlab toolkit for Recursive Bayesian Estimation
Platform: | Size: 489472 | Author: 刘民 | Hits:

[matlabBayesguji

Description: 贝叶斯估计方法的matlab程序,这是一个简单的例子,但很有用-Bayesian estimation methods matlab program, this is a simple example, but very useful
Platform: | Size: 1024 | Author: 李凌 | Hits:

[Industry researchAn_Introduction_to_Statistical_Signal_Processing.

Description: it is a doctora thesis about estimation and exactly about bayesian estimation
Platform: | Size: 1564672 | Author: king_of_rules | Hits:

[Otherrandom_signal

Description: 1)最大似然方法联合实现符号定时同步和载波同步仿真 2)泊松分布 3)贝叶斯估计 4)RANSAC方法-1) The maximum likelihood method of the joint realization of Symbol Timing and Carrier Synchronization in simulation 2) Poisson distribution 3) Bayesian estimation 4) RANSAC method
Platform: | Size: 4096 | Author: 平凡 | Hits:

[Mathimatics-Numerical algorithmsIndoorlocationTrackingUsingRSSIReadingsfromasingle

Description: 通过单一的Wi-Fi接入点的信号强度来判断移动物体的位置。比较新的一篇文章。用了蒙特卡罗抽样的办法-Monte Carlo Sampling Method-来估计位置。-This paper describes research towards a system for locating wireless nodes in a home environment requiring merely a single access point. The only sensor reading used for the location estimation is the received signal strength indication (RSSI) as given by an RF interface, e.g.,Wi-Fi.Wireless signal strengthmaps for the positioning filter are obtained by a two-step parametric and measurement driven ray-tracing approach to account for absorption and reflection characteristics of various obstacles. Location estimates are then computed using Bayesian filtering on sample sets derived by Monte Carlo sampling. We outline the research leading to the system and provide location performance metrics using trace-driven simulations and real-life experiments. Our results and real-life walk-troughs indicate that RSSI readings from a single access point in an indoor environment are sufficient to derive good location estimates of users with sub-room precision.
Platform: | Size: 452608 | Author: weihuagao | Hits:

[AlgorithmPattern_recognition1

Description: 张学工老师模式识别第一次作业,用贝叶斯方法和正态分布的监督参数估计对身高体重二维数据进行性别分类-Zhang engineering teacher pattern recognition for the first time operations, using Bayesian methods, and the supervision of normal height and weight of two-dimensional parameter estimation of the gender-disaggregated data
Platform: | Size: 122880 | Author: 陈皓 | Hits:

[matlabstart_thesis_book_here

Description: Speech Enhancement A Bayesian Estimation Approach Using Gaussian Mixture Model
Platform: | Size: 464896 | Author: 金鼎奖大 | Hits:

[Software EngineeringUWB-channel-estimation-based-on-BCS

Description: 基于贝叶斯压缩感知的一种极宽带信道的估计-A compressed sensing based on Bayesian very broadband channel estimation
Platform: | Size: 114688 | Author: Kim | Hits:
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