基于SMOTE和随机森林技术的二手车推荐系统模型

Q3 Engineering
S. Nuanmeesri, W. Sriurai
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引用次数: 2

摘要

本研究旨在开发一个二手车推荐系统的模型,将SMOTE方法与随机森林技术结合使用。研究团队通过使用SMOTE方法将数据量增加到400%,并应用随机森林技术创建二手车推荐决策树,来修正数据的不平衡性。在使用10倍验证方法评估模型的有效性后,研究结果表明,应用SMOTE方法和随机森林技术的二手推荐系统模型的准确率为98.84%,准确度为98.89%,召回率为98.80%,F1得分为98.80%;模型有效性的总体得分高于仅使用随机森林技术的模型。这表明该模型可用于推荐二手车。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Second-hand Cars Recommender System Model using the SMOTE and the Random Forest Technique
This research aims to develop a model for a second-hand cars recommender system towards the use of the SMOTE approach together with the Random Forest technique. The research team has modified the imbalance of the data by employing the SMOTE method to increase the amount of data to 400% and applying the Random Forest technique to create a decision tree for second-hand car recommendations. After evaluating the model’s effectiveness by using the 10-fold validation method, the findings revealed that the second-hand recommender system model applying the SMOTE approach and the Random Forest technique provided an accuracy of 98.84%, a precision of 98.89%, a recall of 98.80% and an F1 score of 98.80%; the overall scores of the model’s effectiveness were higher than of the model using only the Random Forest technique. This indicates that the model can be practically used for recommending second-hand cars.
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来源期刊
CiteScore
0.70
自引率
0.00%
发文量
4841
期刊介绍: Journal of Xi'an University of Architecture and Technology (Natural Science Edition) is referred to as the Natural Science Edition. It is publicly distributed at home and abroad, bimonthly, ISSN1006-7930, CN61-1295/TU. Founded in February 1957, it is a comprehensive academic journal focusing on academic papers on basic research and applied research in related disciplines such as architecture and civil engineering. The Natural Science Edition is one of the top 100 scientific and technological journals of Chinese universities and a high-quality journal of Shaanxi universities. It is a Chinese core journal (Peking University core), a Chinese science and technology core journal, a T2 journal in the classification catalog of high-quality scientific and technological journals in the field of architectural science, and an authoritative academic journal in China by the China Center for Science Evaluation (RCCSE).
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