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Regression Density Estimation With Variational Methods and Stochastic Approximation

机译:变分方法和随机逼近的回归密度估计

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摘要

Regression density estimation is the problem of flexibly estimating a response distribution as a function of covariates. An important approach to regression density estimation uses finite mixture models and our article considers flexible mixtures of heteroscedastic regression (MHR) models where the response distribution is a normal mixture, with the component means, variances, and mixture weights all varying as a function of covariates. Our article develops fast variational approximation (VA) methods for inference. Our motivation is that alternative computationally intensive Markov chain Monte Carlo (MCMC) methods for fitting mixture models are difficult to apply when it is desired to fit models repeatedly in exploratory analysis and model choice. Our article makes three contributions. First, a VA for MHR models is described where the variational lower bound is in closed form. Second, the basic approximation can be improved by using stochastic approximation (SA) methods to perturb the initial solution to attain higher accuracy. Third, the advantages of our approach for model choice and evaluation compared with MCMC-based approaches are illustrated. These advantages are particularly compelling for time series data where repeated refitting for one-step-ahead prediction in model choice and diagnostics and in rolling-window computations is very common. Supplementary materials for the article are available online.View full textDownload full textKey WordsBayesian model selection, Heteroscedasticity, Mixtures of experts, Stochastic approximation, Variational BayesRelated var addthis_config = { ui_cobrand: "Taylor & Francis Online", services_compact: "citeulike,netvibes,twitter,technorati,delicious,linkedin,facebook,stumbleupon,digg,google,more", pubid: "ra-4dff56cd6bb1830b" }; Add to shortlist Link Permalink http://dx.doi.org/10.1080/10618600.2012.679897
机译:回归密度估计是根据协变量灵活地估计响应分布的问题。回归密度估计的一种重要方法是使用有限混合模型,我们的文章考虑了异方差回归(MHR)模型的灵活混合,其中响应分布为正态混合,其成分均值,方差和混合权重均随协变量而变化。我们的文章为推理开发了快速变分近似(VA)方法。我们的动机是,当需要在探索性分析和模型选择中反复拟合模型时,难以应用替代计算量大的马尔可夫链蒙特卡洛(MCMC)方法拟合混合物模型。我们的文章做出了三点贡献。首先,描述了MHR模型的VA,其中变化下界为封闭形式。其次,可以通过使用随机逼近(SA)方法扰动初始解以获得更高的精度来改善基本逼近。第三,说明了我们的模型选择和评估方法与基于MCMC的方法相比的优势。这些优势对于时间序列数据特别引人注目,其中在模型选择和诊断以及滚动窗口计算中,为一步一步的预测进行反复重新拟合非常普遍。该文章的补充材料可以在线获得。查看全文下载全文关键词贝叶斯模型选择,异方差,专家混合,随机逼近,变分贝叶斯,technorati,可口,linkedin,facebook,stumbleupon,digg,google,更多”,发布号:“ ra-4dff56cd6bb1830b”};添加到候选列表链接永久链接http://dx.doi.org/10.1080/10618600.2012.679897

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