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首页> 外文期刊>International Journal of Communications, Network and System Sciences >Data Mining in Electronic Commerce: Benefits and Challenges
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Data Mining in Electronic Commerce: Benefits and Challenges

机译:电子商务中的数据挖掘:优点和挑战

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摘要

Huge volume of structured and unstructured data which is called big data, nowadays, provides opportunities for companies especially those that use electronic commerce (e-commerce). The data is collected from customer's internal processes, vendors, markets and business environment This paper presents a data mining (DM) process for e-commerce including the three common algorithms: association, clustering and prediction. It also highlights some of the benefits of DM to e-commerce companies in terms of merchandise planning, sale forecasting, basket analysis, customer relationship management and market segmentation which can be achieved with the three data mining algorithms. The main aim of this paper is to review the application of data mining in e-commerce by focusing on structured and unstructured data collected thorough various resources and cloud computing services in order to justify the importance of data mining. Moreover, this study evaluates certain challenges of data mining like spider identification, data transformations and making data model comprehensible to business users. Other challenges which are supporting the slow changing dimensions of data, making the data transformation and model building accessible to business users are also evaluated. A clear guide to e-commerce companies sitting on huge volume of data to easily manipulate the data for business improvement which in return will place them highly competitive among their competitors is also provided in this paper.
机译:如今,海量的结构化和非结构化数据(称为大数据)为公司,尤其是那些使用电子商务(电子商务)的公司提供了机会。数据是从客户的内部流程,供应商,市场和商业环境中收集的。本文介绍了一种用于电子商务的数据挖掘(DM)过程,其中包括三种常用算法:关联,聚类和预测。它还强调了DM对电子商务公司的好处,包括可以通过三种数据挖掘算法实现的商品计划,销售预测,购物篮分析,客户关系管理和市场细分。本文的主要目的是通过关注通过各种资源和云计算服务收集的结构化和非结构化数据来回顾数据挖掘在电子商务中的应用,以证明数据挖掘的重要性。此外,本研究评估了数据挖掘的某些挑战,例如蜘蛛识别,数据转换以及使数据模型可为企业用户所理解。还评估了其他挑战,这些挑战支持缓慢变化的数据维度,使业务用户可以访问数据转换和模型构建。本文还提供了一个清晰的指南,指导电子商务公司使用大量数据轻松处理数据以进行业务改进,而这反过来将使它们在竞争者中具有较高的竞争力。

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