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Bayesian approach for learning regression decision graph models and regression models for time series analysis

机译:用于学习回归决策图模型和时间序列分析的回归模型的贝叶斯方法

摘要

Methods and systems are disclosed for learning a regression decision graph model using a Bayesian model selection approach. In a disclosed aspect, the model structure and/or model parameters can be learned using a greedy search algorithm applied to grow the model so long as the model improves. This approach enables construction of a decision graph having a model structure that includes a plurality of leaves, at least one of which includes a non-trivial linear regression. The resulting model thus can be employed for forecasting, such as for time series data, which can include single or multi-step forecasting.
机译:公开了用于使用贝叶斯模型选择方法学习回归决策图模型的方法和系统。在所公开的方面中,可以使用被应用来增长模型的贪婪搜索算法来学习模型结构和/或模型参数,只要模型得以改进即可。该方法使得能够构造具有包括多个叶子的模型结构的决策图,其中至少一个叶子包括非平凡的线性回归。因此,所得模型可用于预测,例如时间序列数据,其可包括单步或多步预测。

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