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因子化漸近ベイズ推論にょる区分疎線形判別

机译:因素渐近贝叶斯推断

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Summary Piecewise sparse linear regression models using factorized asymptotic Bayesian inference (a.k.a. FAB/HME) have recently been employed in practical applications in many industries as a core algorithm of the Heterogeneous Mixture Learning technology. Such applications include sales forecasting in retail stores, energy demand prediction of buildings for smart city, parts demand prediction to optimize inventory, and so on. This paper extends FAB/HME for classification and conducts the following two essential improvements. First, we derive a refined version of factorized information criterion which offers a better approximation of Bayesian marginal log-likelihood. Second, we introduce an analytic quadratic lower bounding technique in an EM-like iterative optimization process of FAB/HME, which drastically reduces computational cost. Experimental results show that advantages of our piecewise sparse linear classification over state-of-the-art piecewise linear models.
机译:总结使用分解渐近贝叶斯推论(A.K.A.Fab / HME)的分段稀疏线性回归模型最近在许多行业的实际应用中受雇于异构混合学习技术的核心算法。 这些应用包括零售店的销售预测,智能城市建筑能源需求预测,零件需求预测优化库存等。 本文扩展了Fab / HME进行分类,并进行以下两个基本改进。 首先,我们得出了一种成分的分解信息标准版本,其提供了更好的贝叶斯边缘日志似然性的近似。 其次,我们在Fab / HME的EM类似的迭代优化过程中引入分析二次较低限制技术,这大大降低了计算成本。 实验结果表明,我们在最先进的分段线性模型上的分段稀疏线性分类的优势。

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