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The value of big data for analyzing growth dynamics of technology-based new ventures

机译:分析基于技术的新企业生长动态的大数据的价值

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摘要

This study demonstrates that web-search traffic information, in particular, Google Trends data, is a credible novel source of high-quality and easy-to-access data for analyzing technology-based new ventures (TBNVs) growth trajectories. Utilizing the diverse sample of 241 US-based TBNVs, we comparatively analyze the relationship between companies' evolution curves represented by search activity on the one hand and by valuations achieved through rounds of venture investments on another. The results suggest that TBNV's growth dynamics are positively and strongly correlated with its web search traffic across the sample. This correlation is more robust when a company is a) more successful (in terms of valuation achieved) - especially if it is a "unicorn"; b) consumer-oriented (i.e., b2c); and 3) develops products in the form of a digital platform. Further analysis based on fuzzy-set Qualitative Comparative Analysis (fsQCA) shows that for the most successful companies ("unicorns") and consumer-oriented digital platforms (i.e., b2c digital platform companies) proposed approach may be extremely reliable, while for other high-growth TBNVs it is useful for analyzing their growth dynamics, albeit to a more limited degree. The proposed methodological approach opens a wide range of possibilities for analyzing, researching and predicting the growth of recently formed growth-oriented companies, in practice and academia.
机译:本研究表明,网页搜索流量信息,特别是Google趋势数据,是一种可信的新颖性高质量和易于访问数据来源,用于分析基于技术的新创业(TBNV)生长轨迹。利用241个基于US的TBNV的不同样本,我们相互分析了一方面搜索活动所代表的公司进化曲线之间的关系,并通过对另一方面的风险投资实现的估值。结果表明,TBNV的增长动态与样本中的网络搜索流量有正相关和强烈相关。当一家公司是一个人更成功时(在估值方面取得了估值) - 特别是如果它是“独角兽”; b)以消费者为本(即,B2C); 3)以数字平台的形式开发产品。基于模糊定性比较分析(FSQCA)的进一步分析表明,对于最成功的公司(“Unicorns”)和消费者的数字平台(即B2C数字平台公司)提出的方法可能是非常可靠的,而其他高-GROWTH TBNV可以分析其生长动态非常有用,尽管是更有限的程度。拟议的方法方法开辟了各种各样的可能性,用于分析,研究和预测最近形成的生长化公司,实践和学术界的增长。

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