基于社会网络事件的k均值聚类决策支持系统的最优门店位置检测

Mohamed Hamada, L. Naizabayeva
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引用次数: 2

摘要

如今,商业市场更加复杂,面临着许多挑战;它变得更具竞争性,被高风险模式所包围。寻求新技术和创新正成为消除决策过程复杂性和失效概率的重要而关键的问题。决策支持系统(DSS)是一个计算机化的系统,它包括数学和分析模型、知识库和用户界面,以帮助管理人员做出更好的决策。本研究旨在开发一个基于K-means聚类算法的决策支持系统,通过社交网络事件来检测最优的商店位置。此外,本研究还解释了如何使用“Octoparse API”作为web数据提取工具从社交网络频道“Instagram”中提取数据。k- means算法识别k个质心,并将每个数据点分配到最近的聚类。因此,我们分析了2019年1月1日开始发布的12754条帖子。清洗后的数据使用Minimax和K-means算法进行转换。作为输出,我们得到了json格式的数据文件,其中心放在地图上,以提供更好的理解。这项研究的结果是一个可视化的地图指向的地方,以确定一个特定的商店在选定地区的最佳位置。该决策支持工具的实用价值在于帮助用户做出更有价值、更准确的决策,从而降低业务决策无效的概率,最大限度地减少业务损失。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Decision Support System with K-Means Clustering Algorithm for Detecting the Optimal Store Location Based on Social Network Events
Nowadays, the business market is more complicated and comprises many challenges; it became more competitive and surrounded by high-risk patterns. Seeking for new technologies and adopting innovation is becoming an important and crucial issue to eliminate the complexity of the decision-making process and failure probability. Decision support system (DSS) is a computerized system that encompasses mathematical and analytical models, knowledge base and a user interface to help managers for making better decisions. This research aims to develop a decision support system based on K-means clustering algorithm to detect the optimal store location through social network events. Also, this research explains how to extract data from one social network channel "Instagram" using the "Octoparse API" as a web data extraction tool. K-means algorithm identifies k- number of centroids, and allocates every data point to the nearest cluster. As a result, we analyzed 12754 posts started on the 1st of January 2019. Cleaned data are transformed using Minimax and K-means algorithms. As an output, we have got json format data file with centres which are placed on the map to provide a better understanding. The Result of this research is a visualized map pointed with places to define the optimal location of a specific store at the selected region. The practical value of this DSS tool is to help users to make a more valuable and accurate decision which lead to a decrease in the probability of ineffective business decision and minimize the business losses.
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