利用 K-Means 聚类算法加强促销策略映射以提高销售额

Ahmad Fathurrozi, Tri Ginanjar Laksana
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引用次数: 0

摘要

为了提高销售额,企业必须改进促销策略的协调性。企业有能力在有需求的地方推广其商品。促进货物交付将使客户更容易进行采购和销售交易。企业战略性分配货物的能力使其能够扩大业务。与同一行业的企业总数相比,潜在客户有更多的选择。要做到这一点,就必须利用多种多样的促销媒体来促进产品和服务的销售。优化促销策略是向客户展示商品的第一阶段,也是至关重要的阶段,因为它直接影响到企业将获得的利益。迄今为止,销售过程尚未受到促销方法的影响。本研究的目的是在数据挖掘程序中使用 K-Means 聚类算法来优化客户数据的分类,CRISP-DM 用于理解和准备数据、构建模型、评估模型和部署模型。CRISP-DM 方法专门用于构建聚类。一种名为 K-Means 的非层次聚类技术可根据数据的相似程度将其分为多个组。该程序有助于为宣传目的确定适当的位置映射。研究结果可作为决策依据,以便利用生成的聚类最大限度地提高促销技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Promotional Strategy Mapping Using the K-Means Clustering Algorithm to Raise Sales
To enhance sales, organizations must improve the alignment of their promotional tactics. Enterprises have the ability to promote their goods in locations where there is demand for them. Facilitating the delivery of the goods would enhance the ease with which clients can carry out their purchases and sales transactions. A corporation's ability to strategically allocate its goods enables it to expand its operations. Prospective clients have a greater array of choices at their disposal than the total number of enterprises operating within the same sector. This is accomplished by using a diverse range of promotional media to enhance the sales of products and services. Optimizing promotional strategies is the first and critical stage in presenting items to clients, as it directly impacts the benefits that the firm will get. So far, the sales process has not been affected by the promotional method. The objective of this research was to use the K-Means Clustering algorithm in a data mining procedure to optimize the categorization of customer data, CRISP-DM is used for the purpose of comprehending and preparing data, constructing models, evaluating them, and deploying them. The CRISP-DM method is employed specifically for the construction of clusters. A non-hierarchical clustering technique called K-Means divides data into many groups according on how similar they are. The program facilitates the determination of appropriate location mapping for promotional purposes. The study results may serve as a foundation for decision-making in order to maximize promotional techniques, using the generated clusters.
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