We introduce temporal multimodal multivariate learning, a new family of decision making models that can indirectly learn and transfer online information from simultaneous observations of a probability distribution with more than one peak or more than one outcome variable from one time stage to another. We approximate the posterior by sequentially removing additional uncertainties across different variables and time, based on data-physics driven correlation, to address a broader class of challenging time-dependent decision-making problems under uncertainty. Extensive experiments on real-world datasets ( i.e., urban traffic data and hurricane ensemble forecasting data) demonstrate the superior performance of the proposed targeted decision-making over the state-of-the-art baseline prediction methods across various settings.
翻译:我们引入了时间多式多变学习,这是一个新的决策模式体系,可以间接地从同时观测的概率分布中学习和传输在线信息,从一个阶段到另一个阶段,一个以上峰值或一个以上结果变量,我们根据数据物理驱动的相互关系,按顺序消除不同变数和时间的额外不确定性,以此来估计后遗症,以解决不确定情况下具有挑战性、取决于时间的决策问题。 关于现实世界数据集(即城市交通数据和飓风共同预报数据)的广泛实验表明,各种环境对最新基线预测方法的拟议定向决策表现优异。