考察企业采用自然语言处理和大数据分析应用的维度

Examining the Dimensions of Adopting Natural Language Processing and Big Data Analytics Applications in Firms

IEEE Transactions on Engineering Management · 2022
被引 18
ABS 3

中文导读

基于动态能力理论,构建并验证了企业采用大数据分析和自然语言处理应用的影响因素模型,发现这些应用通过提升运营效率来改善企业整体绩效。

Abstract

Big data analytics (BDA) is an advanced analytic technique used with very large and diverse sets of data from different sources. Natural language processing (NLP) is a technology that interfaces with different fields such as computer science, linguistics, and human-computer interactions. Over the past few years, there is a growing number of firms, which are using different BDA and NLP applications in their businesses. Only a few of the research have investigated different dimensions of NLP and BDA and their impacts on the overall organizational performance. There is a growing interest among researchers and practitioners in understanding the consequences for firms that adopt BDA and NLP applications. In this context, the aim of this article is to determine the factors for the usage of BDA and NLP applications in business. With the help of dynamic capability view theory and existing literature, a theoretical model was developed conceptually. Later, the model was validated using structural equation modeling approach considering 1287 samples from 23 firms, primarily based in Asia and Europe, which use NLP and BDA applications. The article finds that NLP and BDA applications help the firms to improve their operational efficiency, which in turn improves the overall firm performance.

大数据分析自然语言处理企业绩效动态能力