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Systems and methods for new time series model probabilistic ARMA

机译:用于新的时间序列模型概率ARMA的系统和方法

摘要

The present invention utilizes a cross-prediction scheme to predict values of discrete and continuous time observation data, wherein conditional variance of each continuous time tube variable is fixed to a small positive value. By allowing cross-predictions in an ARMA based model, values of continuous and discrete observations in a time series are accurately predicted. The present invention accomplishes this by extending an ARMA model such that a first time series “tube” is utilized to facilitate or “cross-predict” values in a second time series tube to form an “ARMAxp” model. In general, in the ARMAxp model, the distribution of each continuous variable is a decision graph having splits only on discrete variables and having linear regressions with continuous regressors at all leaves, and the distribution of each discrete variable is a decision graph having splits only on discrete variables and having additional distributions at all leaves.
机译:本发明利用交叉预测方案来预测离散和连续时间观测数据的值,其中每个连续时间管变量的条件方差固定为小的正值。通过在基于ARMA的模型中进行交叉预测,可以准确预测时间序列中连续和离散观测值。本发明通过扩展ARMA模型来实现这一点,从而利用第一时间序列“管”来促进或“交叉预测”第二时间序列管中的值以形成“ ARMAxp”模型。通常,在ARMAxp模型中,每个连续变量的分布是仅对离散变量进行拆分的决策图,并且在所有叶子上均具有具有连续回归变量的线性回归,而每个离散变量的分布是仅对拆分的因离散变量,并且在所有叶子处都有其他分布。

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