Revolutionizing Footwear Recommendations: A Data-Driven Approach Harnessing Advanced Machine Learning Techniques

Sing Hoi Leo Zhuang
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Abstract

The footwear landscape is evolving. Individuals seek a personalized shoe and insole fit for enhanced comfort and health. Historically, footwear sizes were measured manually. This traditional method faced challenges in scalability and precision. The study leveraged big data and machine learning to refine shoe size recommendations. Data was sourced from online platforms, foot scanning devices, and user feedback. Rigorous preprocessing ensured the data's consistency and normalization. Multiple machine learning models were evaluated, with the Random Forest algorithm emerging as the most effective. The findings highlighted an improvement in recommendation accuracy.The research indicates that the integration of technology and data holds the potential to transform the footwear industry, prioritizing comfort and health.
革新鞋类推荐:利用先进机器学习技术的数据驱动方法
鞋类行业正在不断发展。人们寻求个性化的鞋和鞋垫,以提高舒适度和健康水平。一直以来,鞋类尺寸都是人工测量的。这种传统方法在可扩展性和精确性方面面临挑战。这项研究利用大数据和机器学习来完善鞋码建议。数据来源于在线平台、足部扫描设备和用户反馈。严格的预处理确保了数据的一致性和规范化。对多种机器学习模型进行了评估,其中随机森林算法最为有效。研究结果表明,技术和数据的整合有可能改变鞋类行业,并将舒适和健康放在首位。
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