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Modelling Future Demand by Estimating the Multivariate Conditional Distribution via the Maximum Likelihood Principle and Neural Networks

机译:通过最大似然原理和神经网络估算多元条件分布,对未来需求进行建模

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A new concept for modelling and forecasting is introduced. The maximum likelihood principle is used to identify the underlying multivariate conditional distribution. The distribution parameters are conditional on input features such as properties of the product. The conditional distribution parameters are estimated by a global optimization method, using neural networks for functional approximation. The goal is to construct a general attribute-based forecast model, which can be applied to novel cases with new attribute combinations. The information about a complete distribution of forecasts can be used to quantify the reliability of the forecast. The reliability information is particularly useful for decision support, e.g. if the forecast error causes strongly asymmetric costs. This is illustrated on a case study concerning the spare parts demand forecast.
机译:引入了建模和预测的新概念。最大似然原理用于识别基础多元条件分布。分布参数取决于输入特征(例如产品的属性)。使用神经网络进行函数逼近,通过全局优化方法估算条件分布参数。目标是构建一个基于属性的常规预测模型,该模型可应用于具有新属性组合的新颖案例。有关预测的完整分布的信息可用于量化预测的可靠性。可靠性信息对于决策支持特别有用,例如如果预测误差导致成本严重不对称。有关备件需求预测的案例研究对此进行了说明。

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