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A Pragmatics-Oriented High Utility Mining for Itemsets of Size Two for Boosting Business Yields

机译:用于促进业务收益率的大小尺寸项目集的语用型高效矿业

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Retail market has paced with an enormous rate, sprawling its effect over the nations. The B2C companies have been putting lucrative offers and schemes to fetch the customers' attractions in the awe of upbringing the business profits, but with the mindless notion of the same. Knowledge discovery in the field of data mining can be well harnessed to achieve the profit benefits. This article proposes the novel way for determining the items to be given on sale, with the logical clubs, thus extending the Apriori algorithm. The dissertation proposes the high-utility mining for itemsets of size two (HUM-IS2) Algorithm using the transactional logs of the superstores. The pruning strategies have been introduced to remove unnecessary formations of the clubs. The essence of the algorithm has been proved by experimenting with various datasets.
机译:零售市场具有巨大的速度,庞大对国家的影响。 B2C公司一直在利润丰厚的优惠和计划,以获取客户的景点,以追捧的营业利润,但是在盲目的概念也是如此。可以很好地利用数据挖掘领域的知识发现,以实现利润效益。本文提出了逻辑俱乐部确定销售项目的新方法,从而扩展了APRIORI算法。本文使用超级型号的交易日志提出了对大小二(HUM-IS2)算法的高实用挖掘。提出了修剪策略以消除俱乐部的不必要地层。通过尝试各种数据集来证明了算法的本质。

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