有关零售超市毕业设计外文翻译.doc
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1、有关零售超市毕业设计外文翻译 毕业设计(论文)外文翻译题 目 对零售超市数据进行最优产品选择的数据挖掘框架:广义PROFSET模型 专 业 网络工程 附录英文原文A Data Mining Framework for OptimalProduct Selection in Retail Supermarket Data:The Generalized PROFSET Model1 IntroductionSince almost all mid to large size retailers today possess electronic sales transaction Systems,
2、 retailers realize that competitive advantage will no longer be achieved by the mere use of these systems for purposes of inventory management or facilitating customer check-out. In contrast, competitive advantage will be gained by those retailers who are able to extract the knowledge hidden in the
3、data, generated by those systems, and use it to optimize their marketing decision making. In this context, knowledge about how customers are using the retail store is of critical importance and distinctive competencies will be built by those retailers who best succeed in extracting actionable knowle
4、dge from these data. Association rule mining 2 can help retailers to efficiently extract this knowledge from large retail databases. We assume some familiarity with the basic notions of association rule mining.In recent years, a lot of effort in the area of retail market basket analysis has been inv
5、ested in the development of techniques to increase the interestingness of association rules. Currently, in essence three different research tracks to study the interestingness of association rules can be distinguished.First, a number of objective measures of interestingness have been developed in or
6、der to filter out non-interesting association rules based on a number of statistical properties of the rules, such as support and confidence 2, interest 14, intensity of implication 7, J-measure 15, and correlation 12. Other measures are based on the syntactical properties of the rules 11, or they a
7、re used to discover the least-redundant set of rules 4. Second, it was recognized that domain knowledge may also play an important role in determining the interestingness of association rules. Therefore, a number of subjective measures of interestingness have been put forward, such as unexpectedness
8、 13, action ability 1 and rule templates 10. Finally, the most recent stream of research advocates the evaluation of the interestingness of associations in the light of the micro-economic framework of the retailer 9. More specifically, a pattern in the data is considered interesting only to the exte
9、nt in which it can be used in the decision-making process of the enterprise to increase its utility.It is in this latter stream of research that the authors have previously developed a model for product selection called PROFSET 3, that takes into account both quantitative and qualitative elements of
10、 retail domain knowledge in order to determine the set of products that yields maximum cross-selling profits. The key idea of the model is that products should not be selected based on their individual profitability, but rather on the total profitability that they generate, including profits from cr
11、oss-selling. However, in its previous form, one major drawback of the model was its inability to deal with supermarket data (i.e., large baskets). To overcome this limitation, in this paper we will propose an important generalization of the existing PROFSET model that will effectively deal with larg
12、e baskets. Furthermore, we generalize the model to include category management principles specified by the retailer in order to make the output of the model even more realistic.The remainder of the paper is organized as follows. In Section 2 we will focus on the limitations of the previous PROFSET m
13、odel for product selection. In Section 3, we will introduce the generalized PROFSET model. Section 4 will be devoted to the empirical implementation of the model and its results on real-world supermarket data. Finally, Section 5 will be reserved for conclusions and further research.2 The PROFSET Mod
14、elThe key idea of the PROFSET model is that when evaluating the business value of a product, one should not only look at the individual profits generated by that product (the naive approach), but one must also take into account the profits due to cross-selling effects with other products in the asso
15、rtment. Therefore, to evaluate product profitability, it is essential to look at frequent sets rather than at individual product items since the former represent frequently co-occurring product combinations in the market baskets of the customer. As was also stressed by Cabena et al. 5, one disadvant
16、age of associations discovery is that there is no provision for taking into account the business value of an association. The PROFSET model was a first attempt to solve this problem. Indeed, in terms of the associations discovered, the sale of an expensive bottle of wine with oysters accounts for as
17、 much as the sale of a carton of milk with cereal. This example illustrates that, when evaluating the interestingness of associations, the micro-economic framework of the retailer should be incorporated. PROFSET was developed to maximize cross-selling opportunities by evaluating the profit margin ge
18、nerated per frequent set of products, rather than per product. In the next Section we will discuss the limitations of the previous PROFSET model. More details can be found elsewhere 3.2.1 LimitationsThe previous PROFSET model was specifically developed for market basket data from automated convenien
19、ce stores. Data sets of this origin are characterized by small market baskets (size 2 or 3) because customers typically do not purchase many items during a single shopping visit. Therefore, the profit margin generated per frequent purchase combination (X) could accurately be approximated by adding t
20、he profit margins of the market baskets (Tj) containing the same set of items, i.e. X = Tj. However, for supermarket data, the existing formulation of the PROFSET model poses significant problems since the size of market baskets typically exceeds the size of frequent item sets. Indeed, in supermarke
21、t data, frequent item sets mostly do not contain more than 7 different products, whereas the size of the average market basket is typically 10 to 15. As a result, the existing profit allocation heuristic cannot be used anymore since it would cause the model to heavily underestimate the profit potent
22、ial from cross-selling effects between products. However, getting rid of this heuristic is not trivial and it will be discussed in detail in Section 3.1.A second limitation of the existing PROFSET model relates to principles of category management. Indeed, there is an increasing trend in retailing t
23、o manage product categories as separate strategic business units 6. In other words, because of the trend to offer more products, retailers can no longer evaluate and manage each product individually. Instead, they define product categories and define marketing actions (such as promotions or store la
24、yout) on the level of these categories. The generalized PROFSET model takes this domain knowledge into account and therefore offers the retailer the ability to specify product categories and place restrictions on them.3 The Generalized PROFSET ModelIn this section, we will highlight the improvements
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