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Time is money: Dynamic-model-based time series data-mining for correlation analysis of commodity sales

机译:时间是金钱:动态模型的时间序列数据挖掘用于商品销售的相关分析

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The correlation analysis of commodity sales is very important in cross-marketing. A means of undertaking dynamic-model-based time series data-mining was proposed to analyze the sales correlations among different commodities. A dynamic model comprises some distance models in different observation windows for a time series database that is transformed from a commodities transaction database. There are sales correlations in two time series at different times, and this may produce valuable rules and knowledge for those who wish to practice cross-marketing and earn greater profits. It means that observation time points denoting the time at which the sales correlation occurs constitute important information. The dynamic model that leverages the techniques inherent in time series data-mining can uncover the kinds of commodities that have similar sales trends and how those sales trends change within a particular time period, which indicates that the "right" commodities can be commended to the "right" customers at the "right" time. Moreover, some of the time periods used to pinpoint similar sales patterns can be used to retrieve much more valuable information, which can in turn be used to increase the sales of the correlated commodities and improve market share and profits. Analysis results of retail commodities datasets indicate that the proposed method takes into consideration the time factor, and can uncover interesting sales patterns by which to improve cross-marketing quality. Moreover, the algorithm can be regarded as an intelligent component of the recommendation and marketing systems so that human-computer interaction system can make intelligent decision. (C) 2019 Elsevier B.V. All rights reserved.
机译:商品销售的相关分析在跨营销中非常重要。提出了一种基于动态模型的时间序列数据挖掘的手段,分析了不同商品之间的销售相关性。动态模型包括不同观察窗口中的一些距离模型,用于从商品交易数据库转换的时间序列数据库。在不同时间的两次序列中有销售相关性,这可能会为那些希望练习跨营销并获得更大利润的人产生有价值的规则和知识。这意味着观察时间点表示销售相关性发生的时间构成重要信息。利用时间序列数据采矿中固有的技术的动态模型可以揭示具有类似销售趋势的商品以及这些销售趋势如何在特定时间内发生变化,这表明“正确的”商品可以赞扬“正确的”客户在“正确”时间。此外,用于确定类似销售模式的一些时间段可用于检索更有价值的信息,这可以用于增加相关商品的销售,提高市场份额和利润。零售商品数据集的分析结果表明,该方法考虑了时间因素,并可以揭示有趣的销售模式,以提高跨营销质量。此外,该算法可以被视为推荐和营销系统的智能组件,以便人机交互系统可以做出智能决策。 (c)2019 Elsevier B.v.保留所有权利。

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