Implementation of Least Square Algorithm to Predict Monthly Revenue (Case Study: Djuju’s Grocery Store)

Aditya Ardhana, C. A. Putra, Andreas Nugroho Sihananto
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Abstract

Business owners need to estimate their revenue, which is crucial for the sustainability of their operations. Thus, entrepreneurs such as micro, small, and medium-sized business owners, as well as owners of grocery stores, leverage technological advancements to maximize their sales operations. However, manual sales activities can pose challenges for managing sales data, such as disorganized sales record keeping, failure to record sales of high-volume customers, and time-consuming manual reporting for revenue predictions. To address these issues, researchers have developed a revenue prediction information system. In this study, revenue and profit predictions for the following period were calculated using the Least Square algorithm with the Mean Absolute Percentage Error (MAPE). An example calculation for a 12-month period resulted in a revenue forecast of Rp. 2,837,687.76 for the month of June 2023 with a MAPE of 12.71%.
基于最小二乘算法的月收入预测(以Djuju 's Grocery Store为例)
企业主需要估计他们的收入,这对他们的业务的可持续性至关重要。因此,企业家,如微型、小型和中型企业主,以及杂货店老板,利用技术进步来最大化他们的销售业务。然而,手工销售活动可能会给管理销售数据带来挑战,比如销售记录保存混乱、无法记录大量客户的销售情况,以及花费大量时间手工报告收入预测。为了解决这些问题,研究人员开发了一个收入预测信息系统。在本研究中,使用最小二乘算法与平均绝对百分比误差(MAPE)计算了下一时期的收入和利润预测。以12个月为例计算,2023年6月的收入预测为2,837,687.76卢比,MAPE为12.71%。
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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