Machine Learning in the Prediction of Net Sales for Colombian Companies in a Post-pandemic Scenario

Rubén Darío Acosta-Velásquez, W. S. Fajardo-Moreno, Leonardo Espinosa-Leal
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Abstract

 Abstract — The uncertainty about how the economic reactivation will behave worldwide is a general concern; in the face of this panorama, it is essential to look for historical data that allow us to build the present and predict the future, with this purpose and taking advantage of the advancement of technology in the field of Machine Learning, the present work established the predictions on net sales by companies operating in Colombia. To this research, about two million official records were used from the open data portal of the Bogotá Chamber of Commerce, which were divided 70% for training and 30% for tests; based on these data, Linear Regression algorithms were used (LR), Random Forest (RF), XGBoost (XGB), and Extreme Learning Machine (ELM) to make predictions. The results of the regression performance were evaluated through the coefficient of determination, and the best measure performance showed 0,9 with a Random Forest regressor (RF)
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大流行后情景下哥伦比亚公司净销售额预测中的机器学习
摘要-全球经济复苏的不确定性是一个普遍关注的问题;面对这一全景,必须寻找历史数据,使我们能够建立现在和预测未来,为此目的,并利用机器学习领域的技术进步,目前的工作建立了对在哥伦比亚经营的公司净销售额的预测。在这项研究中,波哥大商会开放数据门户网站使用了大约200万份官方记录,其中70%用于培训,30%用于测试;基于这些数据,采用线性回归(LR)、随机森林(RF)、XGBoost (XGB)和极限学习机(ELM)算法进行预测。通过决定系数对回归结果进行评价,随机森林回归(RF)的最佳测量性能为0,9。
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