Prediksi Penjualan Obat Dan Alat Kesehatan Terlaris Menggunakan Algoritma K-Nearest Neighbor

Abdul Azis, Ahmad Turmudi Zy, A. S. Sunge
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Abstract

This vital health phenomenon raises problems related to identifying medicinal products and medical equipment that are most frequently prescribed by specialist doctors, and are in demand by patients, as well as efficient stock management. The main challenge faced by hospitals is the difficulty in predicting which medicines and health devices are most in demand. This research analyzes and predicts the best-selling medicines and medical devices based on historical sales and demand data. By adopting a machine learning approach using the K-Nearest Neighbors (KNN) algorithm, research can help hospitals optimize services, especially the availability of stock of medicines and health equipment. The analysis results provide deep insight into patient preferences and demand trends by specialist doctors, enabling smarter stock management adjustments. It is hoped that this solution will reduce stock shortages and waste of storage resources, contributing to more efficient healthcare services. In conclusion, this research shows that the KNN algorithm can provide intelligent solutions to overcome complex challenges in managing valuable health resources.
使用 K 近邻算法预测畅销药品和医疗设备的销售情况
这一重要的健康现象提出了与确定专科医生最常开、病人需求量最大的医药产品和医疗设备以及有效管理库存有关的问题。医院面临的主要挑战是难以预测哪些药品和医疗设备的需求量最大。本研究根据历史销售和需求数据分析并预测最畅销的药品和医疗器械。通过采用 K-Nearest Neighbors(KNN)算法的机器学习方法,研究可帮助医院优化服务,尤其是药品和医疗设备的库存情况。分析结果能让专科医生深入了解病人的偏好和需求趋势,从而做出更明智的库存管理调整。希望这一解决方案能减少库存短缺和存储资源浪费,从而提高医疗服务效率。总之,这项研究表明,KNN 算法可以提供智能解决方案,以克服管理宝贵医疗资源方面的复杂挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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