Article ID Journal Published Year Pages File Type
384919 Expert Systems with Applications 2012 13 Pages PDF
Abstract

Business intelligence based on data mining has been one of the popular and indispensable tools for identifying business opportunity in sales and marketing of new products. The traditional data mining methods based on association rules may be inadequate in completely uncovering the hidden patterns of sales based on transaction records. This paper presents a qualitative correlation coefficient mining method which is capable of uncovering hidden patterns of sales and market. Hence, a prototype business intelligence system (BIS) named correlation coefficient sales data mining system (CCSDMS) has been developed and successfully trial implemented in a selected reference site. A series of experiments have been conducted to evaluate the performance of the proposed system. The results generated by the BIS are compared with a well known market available data mining system. The proposed quantitative correlation coefficient mining method is found to possess higher accuracy, better computational effectiveness and higher predictive power. With the new approach, associations for product relations and customer periodic demands are revealed and this can help to leverage organizational marketing capital to enhance quality and speed of promotions as well as awareness of product relations.

► Traditional association-rule based data mining methods inadequately uncover hidden sales patterns. ► A qualitative correlation coefficient mining method for business intelligence is presented. ► Hence, a correlation coefficient sales data mining system (CCSDMS) is built in a trading company. ► The CCSDMS demonstrates better computational effectiveness, higher accuracy and predictive power. ► Associations of product relations and customer periodic demands can be revealed.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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