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Using online textual data, principal component analysis and artificial neural networks to study business and innovation practices in technology-driven firms

机译:使用在线文本数据,主成分分析和人工神经网络来研究技术驱动型企业的业务和创新实践

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摘要

In this paper we introduce a method that combines principal component analysis, correlation analysis, K-means clustering and self organizing maps for the quantitative semantic analysis of textual data focusing on the relationship between firms' co-creation activities, the perception of their innovation and the articulation of the attributes of their product-enabled services. Principal component analysis was used to identify the components of firms' value co-creation activities and service value attributes; correlation analysis was used to examine the relationship between the degree of involvement in specific co-creation activities, the online articulation affirms' service value attributes and the perception of their innovativeness. K-means and self organizing map (SOM) are used to cluster firms with regards to their involvement in co-creation and new service development, and, additionally, as complementary tools for studying the relationship between co-creation and new service development.
机译:在本文中,我们介绍了一种结合主成分分析,相关性分析,K-means聚类和自组织映射的方法,用于文本数据的定量语义分析,重点是企业共同创造活动,创新意识和创新之间的关系。阐明其产品支持服务的属性。主成分分析用于确定企业价值共同创造活动和服务价值属性的成分。相关分析用于检验参与特定共同创造活动的程度,在线表达肯定服务价值属性和对其创新性的感知之间的关系。 K-均值和自组织图(SOM)用于将公司参与联合创造和新服务开发的过程聚在一起,此外,还用作研究共同创造和新服务开发之间关系的补充工具。

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