GNAICYSIAPMay 13, 2025

Big Data and the Computational Social Science of Entrepreneurship and Innovation

arXiv:2505.08706v1h-index: 7
Originality Synthesis-oriented
AI Analysis

It tackles data analysis problems for scholars in entrepreneurship and innovation, but is incremental as it builds on existing big data and AI trends.

The chapter addresses the challenges of using large-scale social data and machine learning to study technological and commercial novelty, new venture origins, and technology competition, proposing methods like precision measurements and digital doubles to advance research.

As large-scale social data explode and machine-learning methods evolve, scholars of entrepreneurship and innovation face new research opportunities but also unique challenges. This chapter discusses the difficulties of leveraging large-scale data to identify technological and commercial novelty, document new venture origins, and forecast competition between new technologies and commercial forms. It suggests how scholars can take advantage of new text, network, image, audio, and video data in two distinct ways that advance innovation and entrepreneurship research. First, machine-learning models, combined with large-scale data, enable the construction of precision measurements that function as system-level observatories of innovation and entrepreneurship across human societies. Second, new artificial intelligence models fueled by big data generate 'digital doubles' of technology and business, forming laboratories for virtual experimentation about innovation and entrepreneurship processes and policies. The chapter argues for the advancement of theory development and testing in entrepreneurship and innovation by coupling big data with big models.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes