基于数据挖掘的汽车售后零部件库存管理

Qun Liu, Kehua Miao, Kaihong Lin
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引用次数: 1

摘要

汽车后市场零部件库存管理对汽车经销商的售后活动和降低经营成本具有重要意义。针对汽车售后服务数据利用不足的问题,有必要引入数据挖掘方法,对数据进行进一步分析和挖掘。以汽车零部件历史销售数据为挖掘对象,应用K-means聚类算法和LSTM递归神经网络,利用Python工具开发汽车售后零部件分类模型和零部件库存预测模型。分类结果可以用来分析经销商的库存结构是否合理。预测结果可以预测下一阶段的零件需求。综合分类和预测结果,为汽车经销商确定汽车零部件品种结构和数量结构提供参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Inventory Management of Automobile After-sales Parts Based on Data Mining
The inventory management of automotive aftermarket parts is of great significance to the after-sales activities of automobile dealers and the reduction of operating costs. In view of the problem of insufficient utilization of automobile after-sales service data, it is necessary to introduce data mining methods to further analyze and mine data. Taking the historical sales data of auto parts as the mining object, K-means clustering algorithm and LSTM recurrent neural network were applied, and the Python tool was used to develop the automobile after-sales parts classification model and the parts inventory prediction model. The classification results can be used to analyze whether the dealer's inventory structure is reasonable. The forecast results can predict the demand for parts in the next stage. Comprehensive classification and prediction results, the study provides reference for the auto dealer to determine the variety structure and quantity structure of the auto parts.
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