|国家预印本平台
首页|Seeing Through Green: Text-Based Classification and the Firm's Returns from Green Patents

Seeing Through Green: Text-Based Classification and the Firm's Returns from Green Patents

Seeing Through Green: Text-Based Classification and the Firm's Returns from Green Patents

来源:Arxiv_logoArxiv
英文摘要

This paper introduces Natural Language Processing for identifying ``true'' green patents from official supporting documents. We start our training on about 12.4 million patents that had been classified as green from previous literature. Thus, we train a simple neural network to enlarge a baseline dictionary through vector representations of expressions related to environmental technologies. After testing, we find that ``true'' green patents represent about 20\% of the total of patents classified as green from previous literature. We show heterogeneity by technological classes, and then check that `true' green patents are about 1\% less cited by following inventions. In the second part of the paper, we test the relationship between patenting and a dashboard of firm-level financial accounts in the European Union. After controlling for reverse causality, we show that holding at least one ``true'' green patent raises sales, market shares, and productivity. If we restrict the analysis to high-novelty ``true'' green patents, we find that they also yield higher profits. Our findings underscore the importance of using text analyses to gauge finer-grained patent classifications that are useful for policymaking in different domains.

Lapo Santarlasci、Armando Rungi、Antonio Zinilli

经济计划、经济管理环境科学技术现状环境管理

Lapo Santarlasci,Armando Rungi,Antonio Zinilli.Seeing Through Green: Text-Based Classification and the Firm's Returns from Green Patents[EB/OL].(2025-07-03)[2025-07-16].https://arxiv.org/abs/2507.02287.点此复制

评论