保修期终端话务率预测的深度学习预测模型

IF 1.2 Q4 BUSINESS
Aljaz Ferencek, D. Kofjac, A. Škraba, Blaž Sašek, M. K. Borstnar
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引用次数: 4

摘要

摘要背景:本文研究了保修期产品终端回收率(TCR)预测问题。TCR是指在保修期内为产品维修预留的资金金额信息。到目前为止,已经使用了各种方法来解决这个问题,从离散事件模拟和时间序列到机器学习预测模型。目的:在本文中,我们通过应用深度学习模型来预测终端呼叫率来解决上述问题。方法/方法:我们开发了一系列深度学习模型,这些模型基于从一家家电制造商获得的数据集,我们分析了它们的质量和性能。结果:6层深度神经网络和卷积神经网络的效果最好。结论:本文表明,深度学习是一种值得进一步探索的方法,然而,缺点是它需要大量的高质量数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning Predictive Models for Terminal Call Rate Prediction during the Warranty Period
Abstract Background: This paper addresses the problem of products’ terminal call rate (TCR) prediction during the warranty period. TCR refers to the information on the amount of funds to be reserved for product repairs during the warranty period. So far, various methods have been used to address this problem, from discrete event simulation and time series, to machine learning predictive models. Objectives: In this paper, we address the above named problem by applying deep learning models to predict terminal call rate. Methods/Approach: We have developed a series of deep learning models on a data set obtained from a manufacturer of home appliances, and we have analysed their quality and performance. Results: Results showed that a deep neural network with 6 layers and a convolutional neural network gave the best results. Conclusions: This paper suggests that deep learning is an approach worth exploring further, however, with the disadvantage being that it requires large volumes of quality data.
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来源期刊
CiteScore
3.00
自引率
6.70%
发文量
0
审稿时长
22 weeks
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