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引用次数: 3

摘要

随着大数据时代的到来,信息技术被广泛应用于几乎所有行业。传统的营销很大程度上依赖于人力,效率很低。数据挖掘与大数据技术相结合,成为智能营销的有效解决方案。然而,现有的市场营销应用主要集中在提供业务信息检索,而发现业务洞察的能力有限。因此,在本文中,我们提出了BusinessDetect,这是一个商业信息挖掘应用程序,它集成了完整的商业信息并提取适当的知识来支持智能营销。此外,我们还设计了不同的界面来显示信息并与用户进行交互。评价结果表明,BusinessDetect可以为开发客户和提高决策效率提供全面的支持。
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BusinessDetect: An Advanced Business Information Mining Application for Intelligent Marketing
With the arrival of the era of big data, information technology is widely applied in almost all industries. Traditional marketing is largely dependent on manpower, which is quite inefficient. Data mining combined with big data technology has become an effective solution for intelligent marketing. However, the existing marketing applications mainly concentrate on providing business information retrieval but have limited capability to discover business insights. Hence, in this paper, we propose BusinessDetect, a business information mining application that integrates complete business information and extracts appropriate knowledge to support intelligent marketing. Furthermore, we design different interfaces to display information and interact with users. The evaluation results show that BusinessDetect can provide comprehensive support for developing customers and making decisions more efficiently.
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