Using Machine Learning Techniques to Forecast Mehram Company's Sales: A Case Study

Mahsa Soltaninejad, Reyhaneh Aghazadeh, Samin Shaghaghi, Majid Zarei
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Abstract

Sales forecasting, situated at the intersection of art and science, is critical for inspiring managers toward achieving profitable outcomes. Its precision sustains production levels and capital and plays a pivotal role in the company's and its leaders' overall success and career progression. In the context of Mahram Food Industries, the challenge arises from diverse investor perspectives and the impactful nature of numerous variables. To address this, a new sales forecasting algorithm has been introduced to enhance accuracy. The aim is to predict future sales through a comprehensive approach, leveraging technical analysis, time series modeling, machine learning, neural networks, and random forest techniques. The research methodology integrates various advanced techniques to improve sales forecasting for Mahram Food Industries. Technical analysis, time series modeling, machine learning, neural networks, and random forest methods are combined to create a robust framework. The focus is on predicting sales for a future period within the artificial intelligence-based machine learning domain. The study employs metrics such as Mean Absolute Deviation (MAD), MAD Percentage (MADP), and Mean Squared Error (MSE) to evaluate and compare the performance of the proposed neural network against traditional methods like multiple variable regression and time series modeling. The study's results highlight the superior performance of the neural network in sales forecasting for Mahram Food Industries. The Mean Absolute Deviation (MAD) for the neural network is 28.33, outperforming multiple variable regression (28.54) and time series modeling (29.45). Additionally, the neural network demonstrates a better MAD Percentage (MADP) with a value of 10.2%, surpassing the values associated with multiple variable regression (10.35%) and time series modeling (10.30%). The Mean Squared Error (MSE) further confirms the neural network's superiority with a value of 6452 compared to 6472 and 7865 for multiple variable regression and time series modeling, respectively. In conclusion, the study showcases the effectiveness of integrating advanced techniques, particularly the neural network, in enhancing the accuracy of sales forecasting for Mahram Food Industries. The comprehensive approach, combining technical analysis, time series modeling, machine learning, neural networks, and random forest, is a valuable strategy for predicting future sales. The superior performance of the neural network, as evidenced by lower MAD, MADP, and MSE values, suggests its potential for guiding informed decision-making in goal setting, hiring, budgeting, and other critical aspects of business management.
使用机器学习技术预测 Mehram 公司的销售额:案例研究
销售预测是艺术与科学的交汇点,对于激励管理者实现盈利成果至关重要。它的精确性维持着生产水平和资本,对公司及其领导者的整体成功和职业发展起着关键作用。就马哈姆食品工业公司而言,挑战来自于投资者的不同观点和众多变量的影响。为此,我们引入了一种新的销售预测算法,以提高准确性。其目的是利用技术分析、时间序列建模、机器学习、神经网络和随机森林技术等综合方法来预测未来的销售额。该研究方法整合了各种先进技术,以改进 Mahram 食品工业公司的销售预测。技术分析、时间序列建模、机器学习、神经网络和随机森林方法相结合,创建了一个强大的框架。重点是在基于人工智能的机器学习领域内预测未来一段时间的销售额。研究采用了平均绝对偏差 (MAD)、平均绝对偏差百分比 (MADP) 和平均平方误差 (MSE) 等指标来评估和比较拟议的神经网络与多变量回归和时间序列建模等传统方法的性能。研究结果表明,神经网络在 Mahram 食品工业公司的销售预测中表现出色。神经网络的平均绝对偏差(MAD)为 28.33,优于多变量回归法(28.54)和时间序列建模法(29.45)。此外,神经网络的绝对偏差百分比 (MADP) 值为 10.2%,超过了多变量回归 (10.35%) 和时间序列建模 (10.30%) 的相关值。平均平方误差(MSE)进一步证实了神经网络的优势,其值为 6452,而多变量回归和时间序列建模的值分别为 6472 和 7865。总之,这项研究展示了整合先进技术,特别是神经网络,在提高 Mahram 食品工业公司销售预测准确性方面的有效性。结合技术分析、时间序列建模、机器学习、神经网络和随机森林的综合方法是预测未来销售额的重要策略。较低的 MAD、MADP 和 MSE 值证明了神经网络的优越性能,这表明它在指导目标设定、招聘、预算和企业管理其他关键方面的知情决策方面具有潜力。
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