面向创新搜索的自然语言处理:审视一种新兴的非人类创新中介

Natural language processing for innovation search – Reviewing an emerging non-human innovation intermediary

TECHNOVATION · 2023
被引 88 · 同刊同年前 6%
人大 AABS 3

中文导读

这篇综述分析了167篇学术文章,探讨自然语言处理如何在早期创新搜索中充当非人类中介,识别出18种创新实践,并指出方法选择取决于实践特征,对创新研究者和实践者重新思考AI在创新中的角色有参考价值。

Abstract

Applying artificial intelligence (AI), especially natural language processing (NLP), to harness large amounts of information from patent databases, online communities, social media, or crowdsourcing platforms is becoming increasingly popular to help organizations find promising solutions. In the era of non-human innovation intermediaries, we should begin to view NLP not only as a useful technology applied in different innovation practices but also as an intermediary orchestrating valuable information. Previous research has not taken this perspective, and knowledge about its intermediation activities and functions is limited. This study reviews 167 academic articles to better understand how NLP approaches can enrich intermediation in early-stage innovation search. It identifies 18 distinctive innovation practices taking over activities like forecasting trends, illustrating technology and idea landscapes, filtering out distinctive contributions, recombining domain-specific and analogous knowledge, or matching problems with solutions. While certain NLP capabilities complement each other, the analysis shows that the choice of the most appropriate approach depends on the characteristics of the innovation practice. Innovation researchers and practitioners should rethink current roles and responsibilities in AI-based innovation processes. As seen in the recent emergence of large language models (LLMs), the rapidly evolving field offers many future research opportunities and practical benefits.

创新管理自然语言处理知识管理人工智能