新冠肺炎大流行期间制药公司效率评估的集成人工智能模型

Mirpouya Mirmozaffari , Reza Yazdani , Elham Shadkam , Seyed Mohammad Khalili , Meysam Mahjoob , Azam Boskabadi
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引用次数: 12

摘要

冠状病毒在世界各地的传播对大多数经济部门产生了巨大影响。然而,在全球大流行带来的动荡和混乱中,有一个行业正在蓬勃发展。新冠肺炎疫情对制药企业来说是千载难逢的商机。本文提出了一种优化与机器学习相结合的人工智能方法。数据包络分析(DEA)使用窗口分析中的加性模型、BCC (Banker-Charnes-Cooper)模型和CCR (Charnes-Cooper-Rhodes)模型来衡量制药公司在COVID-19大流行期间的生产力和效率。使用DataStream财务信息和研发(R&D)投资来评估这三种模型。结果表明,加性模型在窗口分析中具有优势,其次是BCC模型和CCR模型。最后,基于建议的数据,对一些知名的数据挖掘算法在各种工具中进行了评估,以找到最有效的工具和算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An integrated artificial intelligence model for efficiency assessment in pharmaceutical companies during the COVID-19 pandemic

The spread of coronavirus disease around the world has had an immense impact on most economic sectors. Yet amid the turmoil and chaos from the worldwide pandemic, one industry is thriving noticeably. The coronavirus disease is a once in a lifetime business opportunity for pharmaceutical companies. This study presents an artificial intelligence method composed of optimization and machine learning. Data envelopment analysis (DEA) is used to measure productivities and efficiencies of pharmaceutical companies during the COVID-19 pandemic using the additive model in window analysis, the BCC (Banker-Charnes-Cooper) model, and the CCR (Charnes-Cooper-Rhodes) model. The three models are assessed using DataStream financial information with research and development (R&D) investment. The results indicated the additive model's superiority in window analysis, followed by the BCC and CCR models. In the end, some of well-known data mining algorithms, based on the suggested data, have been evaluated in various tools to find the most efficient tool and algorithm.

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