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TOWARD A BETTER MEASURE OF BUSINESS PROXIMITY: TOPIC MODELING FOR INDUSTRY INTELLIGENCE

机译:更好地衡量业务邻近性:行业智能的主题建模

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摘要

In this article, we propose a new data-analytic approach to measure firms' dyadic business proximity. Specifically, our method analyzes the unstructured texts that describe firms' businesses using the statistical learning technique of topic modeling, and constructs a novel business proximity measure based on the output. When compared with existent methods, our approach is scalable for large datasets and provides finer granularity on quantifying firms' positions in the spaces of product, market, and technology. We then validate our business proximity measure in the context of industry intelligence and show the measure's effectiveness in an empirical application of analyzing mergers and acquisitions in the U. S. high technology industry. Based on the research, we also build a cloud-based information system to facilitate competitive intelligence on the high technology industry.
机译:在本文中,我们提出了一种新的数据分析方法来衡量企业的二元业务接近度。具体来说,我们的方法使用主题建模的统计学习技术来分析描述公司业务的非结构化文本,并根据输出结果构造一种新颖的业务接近度度量。与现有方法相比,我们的方法可扩展用于大型数据集,并且在量化公司在产品,市场和技术空间中的位置时,提供了更精细的粒度。然后,我们在行业情报的背景下验证我们的业务接近性度量,并在分析美国高科技行业中的并购的经验应用中显示该度量的有效性。基于这项研究,我们还构建了一个基于云的信息系统,以促进高科技行业的竞争情报。

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