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Measuring Industrial Policy: A Text-Based Approach

Juhász, Réka, Nathaniel Lane, Emily Oehlsen and Veronica Perez

No 20333, CEPR Discussion Papers from Centre for Economic Policy Research

Abstract: Since the 18th century, policymakers have debated the merits of industrial policy (IP). Yet, economists lack basic facts about its use due to measurement challenges. We propose a new approach to IP measurement based on information contained in policy text. We show how off-the-shelf supervised machine learning tools can be used to categorize industrial policies at scale. Using this approach, we validate longstanding concerns with earlier approaches to measurement which conflate IP with other types of policy. We apply our methodology to a global database of commercial policy descriptions, and provide a first look at IP use at the country, industry, and year levels (2010-2022). The new data on IP suggest that i) IP is on the rise; ii) modern IP tends to use subsidies and export promotion measures as opposed to tariffs; iii) rich countries heavily dominate IP use; iv) IP tends to target sectors with an established comparative advantage, particularly in high-income countries.

JEL-codes: C38 L52 O25 (search for similar items in EconPapers)
Date: 2025-06
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