基于深度学习的多标签分类零售推荐

Zhi Yuan Poo, Choo Yee Ting, Yuen Peng Loh, Khairil Imran Ghauth
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引用次数: 0

摘要

为一个地点选择合适的零售业务对一个企业的成功至关重要,因为它决定了有利的投资回报的可能性。在零售推荐中使用的一种常用方法是多类分类,其中根据各种特征或属性将零售业务分类为不同的类或类别。零售推荐领域的现有研究已经广泛地提出和评估了零售推荐背景下的多类别分类的不同算法、技术和方法,然而,有限的工作集中在将零售推荐描述为一个多标签问题上。这是因为在零售推荐中,一个地点可以适合多个零售企业,这样就可以提供更多的选择来推荐最适合该地点的企业。因此,本研究将尝试多标签分类。将构建一个分析数据集,提供对业务领域特征的全面见解,并随后采用深度学习技术进行多标签分类。分析数据集是基于来自YellowPages的兴趣站点数据列表,来自人道主义数据交换(HDX)的人口数据以及来自brickz.my的财产数据构建的。本文将重点研究一维卷积神经网络(CNN)模型的深度学习技术的实现。结果表明,该模型的准确率达到了61.22%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-Label Classification with Deep Learning for Retail Recommendation
Selecting the right retail business for a location is crucial for the success of a business because it determines the likelihood of favourable return on investment. One common approach used in retail recommendation is multi-class classification, where retail businesses are categorized into different classes or categories based on various features or attributes. Existing research in the field of retail recommendation has extensively proposed and evaluated different algorithms, techniques, and approaches for multi-class classification in the context of retail recommendation, however, limited work has been focusing on formulating retail recommendation as a multi-label problem. This is because in retail recommendation, one location can fit multiple retail businesses so that it can provide more options to recommend the most suitable business for the location. Therefore, multi-label classification will be attempted in this study. An analytical dataset will be constructed that provides comprehensive insights into the characteristics of the business area, and subsequently employ deep learning technique for multi-label classification. The analytical dataset is constructed based on the list of sites of interest data from YellowPages, population data from Humanitarian Data Exchange (HDX) and property data sourced from brickz.my. This work will be focusing on implement deep learning technique which is 1D convolutional neural network (CNN) model. The findings showed that the proposed model achieved 61.22% in terms of accuracy.
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