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Can we predict firms’ innovativeness? The identification of innovation performers in an Italian region through a supervised learning approach

机译:我们可以预测公司的创新性吗?通过有监督的学习方法识别意大利地区的创新表现者

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摘要

The study shows the feasibility of predicting firms’ expenditures in innovation, as reported in the Community Innovation Survey, applying a supervised machine-learning approach on a sample of Italian firms. Using an integrated dataset of administrative records and balance sheet data, designed to include all informative variables related to innovation but also easily accessible for most of the cohort, random forest algorithm is implemented to obtain a classification model aimed to identify firms that are potential innovation performers. The performance of the classifier, estimated in terms of AUC, is 0.794. Although innovation investments do not always result in patenting, the model is able to identify 71.92% of firms with patents. More encouraging results emerge from the analysis of the inner working of the model: predictors identified as most important—such as firm size, sector belonging and investment in intangible assets—confirm previous findings of literature, but in a completely different framework. The outcomes of this study are considered relevant for both economic analysts, because it demonstrates the potential of data-driven models for understanding the nature of innovation behaviour, and practitioners, such as policymakers or venture capitalists, who can benefit by evidence-based tools in the decision-making process.
机译:该研究表明,根据“社区创新调查”的报告,预测有企业在创新方面的支出是可行的,该方法对意大利公司的样本采用了监督式机器学习方法。使用行政记录和资产负债表数据的集成数据集,该数据集旨在包括与创新相关的所有信息变量,但对于大多数同类群体也很容易获得,实施了随机森林算法,以获得旨在识别具有潜在创新能力的公司的分类模型。 。根据AUC估算,分类器的性能为0.794。尽管创新投资不一定总能获得专利,但是该模型能够识别出拥有专利的公司占71.92%。通过对模型内部工作的分析,得出了更令人鼓舞的结果:被确定为最重要的预测变量,例如公司规模,部门所有权和无形资产投资,确认了文献的先前发现,但采用了完全不同的框架。这项研究的结果被认为与经济分析家都息息相关,因为它证明了数据驱动模型潜在的潜力,可以理解创新行为的本质,​​而实践者(例如政策制定者或风险资本家)也可以从基于证据的工具中受益。决策过程。

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    Ilaria Gandin; Claudio Cozza;

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  • 年(卷),期 -1(14),6
  • 年度 -1
  • 页码 e0218175
  • 总页数 16
  • 原文格式 PDF
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