基于混合聚类关联算法的股票数据频繁模式挖掘

Aurangzeb Khan, Khairullah Khan, B. Baharudin
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引用次数: 17

摘要

库存或库存数据的模式和分类对于业务支持和决策制定非常重要。在业务流程中也需要及时识别新出现的趋势。库存数据的销售模式表明市场趋势,可用于预测,对决策、战略规划和市场竞争具有很大的潜力。本研究的目的是为了更好的决策,以提高销售,服务和质量,以确定死货,慢动和快动产品的原因,这是一个有用的机制,业务支持,投资和监督。本文提出了一种挖掘海量库存数据模式的算法,用于预测影响产品销售的因素。在第一阶段,我们根据产品类别和销售数量将库存数据分为三个不同的集群,即Dead-Stock (DS), Slow-Moving (SM)和Fast-Moving (FM),使用K-means算法。在第二阶段,我们提出了最频繁模式(MFP)算法来查找相应项的属性值的频率。MFP提供了每个产品类别中项目属性的频繁模式,并以紧凑的形式给出了销售趋势。实验结果表明,所提出的k-mean + MFP混合算法可以从大型股票数据中生成更多有用的模式。
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Frequent Patterns Minning of Stock Data Using Hybrid Clustering Association Algorithm
Patterns and classification of stock or inventory data is very important for business support and decision making.  Timely identification of newly emerging trends is also needed in business process. Sales patterns from inventory data indicate market trends and can be used in forecasting which has great potential for decision making, strategic planning and market competition. The objectives in this research are to get better decision making for improving sale, services and quality as to identify the reasons of dead stock, slow-moving, and fast-moving products which is useful mechanism for business support, investment and surveillance. In this paper we proposed an algorithm for mining patterns of huge stock data to predict factors affecting the sale of products. In the first phase, we divide the stock data in three different clusters on the basis of product categories and sold quantities i.e. Dead-Stock (DS), Slow-Moving (SM) and Fast-Moving (FM) using K-means algorithm. In the second phase we have proposed Most Frequent Pattern (MFP) algorithm to find frequencies of property values of the corresponding items. MFP provides frequent patterns of item attributes in each category of products and also gives sales trend in a compact form. The experimental result shows that the proposed hybrid k-mean plus MFP algorithm can generate more useful pattern from large stock data.
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