Comparison of K-Means & K-Means++ Clustering Models using Singular Value Decomposition (SVD) in Menu Engineering

Nina Setiyawati, Dwi Hosanna Bangkalang, Hindriyanto Dwi Purnomo
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Abstract

The menu is one of the most fundamental aspects of business continuity in the culinary industry. One of the tools that can be used for menu analysis is menu engineering. Menu engineering is an analytical tool that assists restaurants, companies, and small and medium-sized enterprises (SMEs) in assessing and making decisions on marketing strategies, menu design, and sales so that it can produce maximum profit. In this study, several menu engineering models were proposed, and the performance of these models was analyzed. This study used a dataset from the Point of Sales (POS) application in an SME engaged in the culinary field. This research consists of three stages. First, pre-processing the data, comparing the models, and evaluating the models using the Davies Bouldin index. At the model comparison stage, four models are being compared: K-Means, K-Means++, K-Means using Singular Value Decomposition (SVD), and K-Means++ using SVD. SVD is used in the dataset transformation process. K-Means and K-Means++ algorithms are used for grouping menu items. The experiments show that the K-Means++ model with SVD produced the most optimal cluster in this research. The model produced an average cluster distance value of 0.002; the smallest Davies-Bouldin Index (DBI) value is 0.141. Therefore, using the K-Means++ model with SVD in menu engineering analysis produces clusters containing menu items with high similarity and significant distance between groups. The results obtained from the proposed model can be used as a basis for strategic decision-making of managing price, marketing strategy, etc., for SMEs, especially in the culinary business.
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K-Means的比较菜单工程中基于奇异值分解的k - means++聚类模型
菜单是烹饪行业业务连续性的最基本方面之一。可以用于菜单分析的工具之一是菜单工程。菜单工程是一种分析工具,帮助餐馆、公司和中小型企业(sme)评估和制定营销策略、菜单设计和销售决策,从而产生最大的利润。本文提出了几种菜单工程模型,并对这些模型的性能进行了分析。本研究使用了一家从事烹饪领域的中小企业的销售点(POS)应用程序的数据集。本研究分为三个阶段。首先,对数据进行预处理,比较模型,并使用Davies Bouldin指数对模型进行评价。在模型比较阶段,将比较四种模型:K-Means、k - means++、使用奇异值分解(SVD)的K-Means和使用SVD的k - means++。在数据集转换过程中使用奇异值分解。K-Means和k - means++算法用于对菜单项进行分组。实验表明,在本研究中,带有SVD的k - means++模型产生了最优的聚类。该模型产生的平均聚类距离值为0.002;davis - bouldin指数(DBI)最小值为0.141。因此,在菜单工程分析中使用k - means++模型与SVD相结合,可以产生包含相似度高、组间距离显著的菜单项的聚类。从所提出的模型中获得的结果可以作为中小企业管理价格,营销策略等战略决策的基础,特别是在烹饪业务中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
JOIV International Journal on Informatics Visualization
JOIV International Journal on Informatics Visualization Decision Sciences-Information Systems and Management
CiteScore
1.40
自引率
0.00%
发文量
100
审稿时长
16 weeks
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