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The Impact of Adaptive Regularization of the Demand Predictor on a Multistage Supply Chain Simulation

机译:需求预测器的自适应正则化对多阶段供应链仿真的影响

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The supply chain is difficult to control, which is representative of the bullwhip effect. Its behavior under the influence of the bull-whip effect is complex, and the cost and risk are increased. This study provides an application of online learning that is effective in large-scale data processing in a supply chain simulation. Because quality of solutions and agility are required in the management of the supply chain, we have adopted adaptive regularization learning. This is excellent from the viewpoint of speed and generalization of convergence and can be expected to stabilize supply chain behavior. In addition, because it is an online learning algorithm for evaluation of the bullwhip effect by computer simulation, it is easily applied to large-scale data from the viewpoint of the amount of calculation and memory size. The effectiveness of our approach was confirmed.
机译:供应链难以控制,这代表了牛鞭效应。它在牛鞭效应的影响下的行为是复杂的,并且增加了成本和风险。这项研究提供了一种在线学习的应用程序,可以有效地在供应链仿真中进行大规模数据处理。由于供应链的管理需要解决方案的质量和敏捷性,因此我们采用了自适应正则化学习。从速度和收敛的普遍性的角度来看,这是极好的,可以预期将稳定供应链的行为。另外,由于它是用于通过计算机仿真评估牛鞭效应的在线学习算法,因此从计算量和内存大小的角度来看,它很容易应用于大规模数据。我们的方法的有效性得到了证实。

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