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Development of an Integrated Intelligent Product Assortment Optimization Model for Apparel Retailing.

机译:服装零售的集成智能产品分类优化模型的开发。

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摘要

Product assortment planning of today's apparel retail industry mainly rests on the experience and subjective assessment of the decision maker in the company. Facing the increasingly fierce competition and fast changing customer demand, retailers have stringent demands for optimizing product assortment by using intelligent and effective methods. The purpose of this research is to develop data mining-based methodologies for assortment planning of apparel retailing.;An effective framework for apparel product assortment planning was developed through integrating three types of problems, namely customer segmentation, customer preference identification, and product assortment optimization. On the basis of data mining technologies, these three problems were formulated mathematically and solved by effective methodologies.;Clustering analysis was used to segment customers based on their behaviouristic data. A novel fuzzy c-means algorithm was proposed to tackle the issues of obtaining the optimal value of the fuzzy weighting exponent m and selecting the appropriate number of clusters. After applying the method to the RFM data about customers, retailers can obtain more reasonable and valuable results of customer segmentation as the method takes more factors into consideration and uses the intrinsic characteristics of the data.;The rough set approach was used to identify customers' preferred attributes. A weighted-incorporated rule identification algorithm was developed to solve the augmented formulation of rough set rule reduction. By employing this method, decision rules can be extracted for each homogeneous cluster of data records and relationships between different clusters.;Considering different customer segments and preferences, an improved practical model based on an underlying multinomial logit (MNL) choice model for customers' selection of products is developed for optimizing retailers' expected profits from customers with heterogeneous preferences. The model provides retailers with a basis for several strategic decisions, including: (1) the optimal set of products offered in the market and their estimated sales; and (2) customers' preference structure influencing the optimal assortment with corresponding expected profits.;Based on the historical transaction data from the local apparel retail company, experiments were conducted to evaluate the performance of the proposed methodologies. The experimental results demonstrate the effectiveness of the proposed methodologies for the apparel product assortment planning.
机译:当今服装零售行业的产品分类计划主要取决于公司决策者的经验和主观评估。面对日益激烈的竞争和快速变化的客户需求,零售商对使用智能有效方法优化产品分类的严格要求。这项研究的目的是开发基于数据挖掘的服装零售分类计划方法。通过整合三种类型的问题,即客户细分,客户偏好识别和产品分类优化,开发了一套有效的服装产品分类计划框架。 。在数据挖掘技术的基础上,对这三个问题进行了数学公式化,并通过有效的方法进行了解决。聚类分析用于根据客户的行为数据对客户进行细分。提出了一种新颖的模糊c-均值算法,以解决获得模糊加权指数m的最优值和选择适当数量的聚类的问题。在将该方法应用于有关客户的RFM数据之后,零售商可以获得更合理,更有价值的客户细分结果,因为该方法考虑了更多因素并利用了数据的内在特征。首选属性。开发了一种加权合并规则识别算法,以解决粗糙集规则约简的扩充公式。通过使用这种方法,可以为每个同类的数据记录群集以及不同群集之间的关系提取决策规则。考虑到不同的客户细分和偏好,基于底层多项式Lo​​git(MNL)选择模型的改进的实用模型用于客户选择开发产品的目的是为了优化零售商从具有不同偏好的客户那里获得的预期利润。该模型为零售商提供了一些战略决策的基础,其中包括:(1)市场上提供的最佳产品及其估计销售额; (2)顾客的偏好结构会影响相应的期望利润的最佳分类。基于本地服装零售公司的历史交易数据,进行了实验以评估所提出方法的性能。实验结果证明了所提出的方法对服装产品分类计划的有效性。

著录项

  • 作者

    Chu, Liyun.;

  • 作者单位

    Hong Kong Polytechnic University (Hong Kong).;

  • 授予单位 Hong Kong Polytechnic University (Hong Kong).;
  • 学科 Business Administration Marketing.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 107 p.
  • 总页数 107
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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