使用随机森林算法优化电子商务库存以防止缺货

Achmad Ridwan, Ully Muzakir, Safitri Nurhidayati
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引用次数: 0

摘要

本研究探讨了随机森林算法在优化电子商务库存管理方面的有效性。在持续增长的数字业务中,库存管理对顺利运营和客户满意度至关重要。随机森林算法是通过应用袋技术和随机特征选择对 CART 方法的发展,该算法被用来预测库存。利用与观察到的库存变量相关的数据,采用实验设计来测试算法的性能算法的性能。分析包括评估算法在预测和防止缺货方面的性能。结果表明,随机森林算法比传统方法能提供更准确的库存预测。与线性回归和基于规则的回归相比,随机森林算法具有更高的准确性,因此是电子商务库存管理的理想选择。这些发现意味着,随机森林算法可以成为克服数字市场复杂性和波动性的有效解决方案。实用建议包括深入了解数据、聘用训练有素的人力资源以及制定培训策略,以优化这些算法的使用。本研究还通过扩展对随机森林算法在各种情况下的应用的理解,包括森林基底面积预测、供应链管理和滞销订单预测,为文献做出了贡献。总之,随机森林算法在改善电子商务库存管理方面具有巨大潜力,为在数字商业世界中更广泛的应用开辟了机会。积极采用这些算法可以对运营效率、客户满意度和公司在不断变化的市场中的竞争力产生积极影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing E-commerce Inventory to prevent Stock Outs using the Random Forest Algorithm Approach
This research investigates the effectiveness of the Random Forest algorithm in optimizing e-commerce inventory management. In a digital business that continues to grow, inventory management is crucial for smooth operations and customer satisfaction. The Random Forest algorithm, a development of the CART method by applying bagging techniques and random feature selection, was tested to predict inventory. An experimental design is used to test the algorithm's performance algorithms performance, using data relevant to the observed inventory variables. The analysis involves evaluating the performance of algorithms in predicting and preventing stockouts. The results show that the Random Forest algorithm provides more accurate inventory predictions than traditional methods. Comparison with linear and rule-based regression reveals higher accuracy, making this algorithm a promising choice for e-commerce inventory management. These findings imply that the Random Forest Algorithm can be an effective solution in overcoming the complexity and fluctuations of digital markets. Practical recommendations include a deep understanding of the data, engagement of trained human resources, and training strategies for optimal use of these algorithms. This research also contributes to the literature by expanding understanding of the application of the Random Forest algorithm in various contexts, including forest basal area prediction, supply chain management, and backorder prediction. In conclusion, the Random Forest algorithm has great potential to improve e-commerce inventory management, opening up opportunities for broader application in the digital business world. Proactive adoption of these algorithms can have a positive impact on operational efficiency, customer satisfaction, and a company's competitiveness in an ever-evolving market.
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