基于层次分析法的小微企业集群识别

Netsanet Jote, B. Beshah, D. Kitaw, A. Abraham
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引用次数: 2

摘要

微型和小型企业(MSEs)集群是一组在特定地理位置运营的小型企业,生产类似的产品或服务,相互合作和竞争,相互学习以解决内部问题,制定共同战略以克服外部挑战,并通过发达的网络到达远程市场。近年来,确定中小微企业集群已成为中小微企业发展的关键战略决策。然而,这些决策的本质通常是复杂的,并且涉及相互冲突的标准。本文的目的是建立一个基于层次分析法的中小微企业聚类识别模型。结果表明,地理邻近性、行业集中度、市场潜力、支持服务、资源潜力和潜在企业家等定量和定性因素是集群识别的关键因素。在本文中,语言价值被用来评估因素的等级和权重。然后,提出AHP模型来处理聚类选择问题。最后,通过实例验证了该方法的有效性。还进行了敏感性分析以证明结果的合理性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AHP-based micro and small enterprises' cluster identification
Micro and Small Enterprises' (MSEs) cluster is a group of small firms operating in a defined geographic location, producing similar products or services, cooperating and competing with one another, learning from each other to solve internal problems, setting common strategies to overcome external challenges, and reaching distance markets through developed networks. During recent years, identifying MSEs cluster has become a key strategic decision. However, the nature of these decisions is usually complex and involves conflicting criteria. The aim of this paper is to develop an AHP-based MSEs cluster identification model. As a result, quantitative and qualitative factors including geographical proximity, sectorial concentration, market potential, support services, resource potential and potential entrepreneurs are found to be critical factors in cluster identification. In this paper, linguistic values are used to assess the ratings and weights of the factors. Then, AHP model will be proposed in dealing with the cluster selection problems. Finally, a case study was taken to prove and validate the procedure of the proposed method. A sensitivity analysis is also performed to justify the results.
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