使用监督学习对服装品牌风格进行分类

David Kreyenhagen, Timur I. Aleshin, Joseph E. Bouchard, Adam M. I. Wise, Rachel K. Zalegowski
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引用次数: 4

摘要

机器学习技术有可能通过个性化推荐改善客户服务,从而改变竞争激烈的在线时尚零售行业。时尚风格分类系统可以改进客户搜索功能,并为用户提供更加个性化的体验。基于时尚应用的监督学习技术面临着开发描述时尚产品的定量措施的问题,这些产品本质上是主观的。为了解决这个问题,作者要求时尚专家协助组装一套品牌风格协会的培训。通过应用自然语言处理、文本挖掘和eBay查询结果,对训练集中的每个品牌进行定量度量。该数据集用于训练支持向量机,该支持向量机将剩余的大约8000个品牌分类为风格类别。前瞻性分类器模型基于其阳性预测值进行评估,成功率为56.25%。考虑到有八种不同的风格可供选择,这个百分比的基线只有12.5%。因此,支持向量机对时尚品牌的分类具有重要的价值。最后的样式分类集成为一个新的过滤功能,允许用户缩小搜索范围并访问相关结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using supervised learning to classify clothing brand styles
Machine learning techniques have the potential to alter the highly competitive online fashion retail industry by improving customer service through personalized recommendations. A fashion style classification system can improve the customer search functionality and provide a more personalized experience for the user. Supervised learning techniques with fashion based applications face the problem of developing quantitative measures for describing fashion products which are subjective in nature. To address this issue the authors asked fashion experts to assist in the assembly of a training set of brand-style associations. Quantitative measures were attributed to each brand in the training set by applying natural language processing, text mining, and eBay query results. This data set was used to train a support vector machine which classified the approximately 8000 remaining brands into style categories. The prospective classifier model was assessed based on its positive predictive values which yielded a 56.25% success rate. Given that there are eight different styles to choose from, a baseline for the percentage is only 12.5%. The SVM thus adds significant value to the classification of fashion brands. The final style categorization was integrated as a new filter feature that allows the user to narrow down their searches and access relevant results.
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