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A reversible jump MCMC algorithm for Bayesian curve fitting by using smooth transition regression models

机译:贝叶斯曲线拟合的平滑跳变回归模型可逆跳跃MCMC算法

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This paper proposes a Bayesian algorithm to estimate the parameters of a smooth transition regression model. With in this model, time series are divided into segments and a linear regression analysis is performed on each segment. Unlike a piecewise regression model, smooth transition functions are introduced to model smooth transitions between the sub-models. Appropriate prior distributions are associated with each parameter to penalize a data-driven criterion, leading to a fully Bayesian model. Then, a reversible jump Markov Chain Monte Carlo algorithm is derived to sample the parameter posterior distributions. It allows one to compute standard Bayesian estimators, providing a sparse representation of the data. Results are obtained for real-world electrical transients with a view to non-intrusive load monitoring applications.
机译:本文提出了一种贝叶斯算法来估计平滑过渡回归模型的参数。在此模型中,时间序列分为多个部分,并对每个部分执行线性回归分析。与分段回归模型不同,引入了平滑过渡函数以对子模型之间的平滑过渡进行建模。适当的先验分布与每个参数相关联,以惩罚数据驱动的标准,从而形成完全的贝叶斯模型。然后,推导了可逆的跳跃马尔可夫链蒙特卡罗算法来对参数的后验分布进行采样。它允许人们计算标准贝叶斯估计量,从而提供数据的稀疏表示。针对非侵入式负载监控应用,获得了针对现实世界瞬态电压的结果。

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