Prediction of Car Purchase based on User Demands using Supervised Machine Learning

Mohd. Samee Uddin -, Rabab Fatima Hussain -, Asfiya Samreen -, Saleha Butool -
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Abstract

One of the key sectors of the national economy is the auto industry. Cars are becoming more and more common as a form of private transportation. When a buyer wants to purchase the ideal vehicle, particularly a car, an evaluation is necessary. Because it is an expensive vehicle, there are a lot of conditions and elements to consider before buying a new one, including price, headlamp, cylinder volume, and spare parts. Therefore, it is crucial for the consumer to choose a purchase that can meet all of the criteria before making any other decisions. In our research, we therefore suggest various well-known methods to improve accuracy for a car purchase. These algorithms were used on our dataset, which consists of 50 data. With a prediction accuracy of 86.7%, Support Vector Machine (SVM) produces the best result of the bunch. In this study, we also present comparison findings for all data samples using various methods for precision, recall, and F1 score.
基于用户需求的有监督机器学习购车预测
汽车工业是国民经济的重要部门之一。汽车作为一种私人交通工具正变得越来越普遍。当购买者想要购买理想的车辆,特别是汽车时,评估是必要的。因为它是一辆昂贵的车,所以在购买一辆新车之前要考虑很多条件和因素,包括价格、前照灯、气缸体积和备件。因此,对于消费者来说,在做出任何其他决定之前,选择能够满足所有标准的购买是至关重要的。因此,在我们的研究中,我们提出了各种众所周知的方法来提高购车的准确性。这些算法被用于我们的数据集,它由50个数据组成。支持向量机(SVM)的预测准确率为86.7%,是预测结果最好的一种方法。在本研究中,我们还提出了使用各种方法对所有数据样本进行精度,召回率和F1分数的比较结果。
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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