Citation
Discussion Paper Details
Please find the details for DP15308 in an easy to copy and paste format below:
Full Details | Bibliographic Reference
Full Details
Title: Urban economics in a historical perspective: Recovering data with machine learning
Author(s): Pierre-Philippe Combes, Laurent Gobillon and Yanos Zylberberg
Publication Date: September 2020
Keyword(s): History, Machine Learning and Urban Economics
Programme Area(s): International Trade and Regional Economics
Abstract: A recent literature has used a historical perspective to better understand fundamental questions of urban economics. However, a wide range of historical documents of exceptional quality remain underutilised: their use has been hampered by their original format or by the massive amount of information to be recovered. In this paper, we describe how and when the flexibility and predictive power of machine learning can help researchers exploit the potential of these historical documents. We first discuss how important questions of urban economics rely on the analysis of historical data sources and the challenges associated with transcription and harmonisation of such data. We then explain how machine learning approaches may address some of these challenges and we discuss possible applications.
For full details and related downloads, please visit: https://cepr.org/active/publications/discussion_papers/dp.php?dpno=15308
Bibliographic Reference
Combes, P, Gobillon, L and Zylberberg, Y. 2020. 'Urban economics in a historical perspective: Recovering data with machine learning'. London, Centre for Economic Policy Research. https://cepr.org/active/publications/discussion_papers/dp.php?dpno=15308