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首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >Market segmentation using supervised and unsupervised learning techniques for E-commerce applications
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Market segmentation using supervised and unsupervised learning techniques for E-commerce applications

机译:使用监督和无监督学习技术的电子商务应用程序的市场分割

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摘要

Market Segmentation has been a key area of implementation of soft computing techniques in E-commerce applications. Various techniques have been used to achieve maximum results in the classification of the ecommerce market. From stochastic techniques to neural networks, there is a plethora of techniques that have been applied. In this paper, we use self organising Maps (SOMs) an unsupervised learning technique to study the various factors which can be used to segment the market. On the other hand supervised learning techniques such as Nearest Neighbour (NN) and Support vector machine (SVM) are used to quantitatively classify the purchase behaviour based on various factors. The better classification technique is identified through appropriate measures. Further, evolutionary algorithms are used to augment the performance of these classification techniques. Analysis of the results and various factors affecting it is also performed.
机译:市场分割是电子商务应用中软计算技术的实现的关键领域。 已经使用各种技术来实现电子商务市场分类的最大成果。 从随机技术到神经网络,存在已施加的血清技术。 在本文中,我们使用自组织地图(SOMS)一种无监督的学习技术来研究可用于分割市场的各种因素。 另一方面,诸如最近的邻居(NN)和支持向量机(SVM)的监督学习技术用于数量地基于各种因素对购买行为进行分类。 通过适当措施确定更好的分类技术。 此外,进化算法用于增加这些分类技术的性能。 还进行了对结果的分析和各种因素。

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