Causal Claims in Economics

Authors: Prashant Garg, Thiemo Fetzer

Data, code, prompts, and workflow documentation are publicly available at our GitHub repository: https://github.com/prashgarg/CausalClaimsInEconomics
License: CC BY 4.0

Abstract: As economics scales, a key bottleneck is representing what papers claim in a comparable, aggregable form. We introduce evidence-annotated claim graphs that map each paper into a directed network of standardized economic concepts (nodes) and stated relationships (edges), with each edge labeled by evidentiary basis, including whether it is supported by causal inference designs or by non-causal evidence. Using a structured multi-stage AI workflow, we construct claim graphs for 44,852 economics papers from 1980-2023. The share of causal edges rises from 7.7% in 1990 to 31.7% in 2020. Measures of causal narrative structure and causal novelty are positively associated with top-five publication and long-run citations, whereas non-causal counterparts are weakly related or negative.

Submitted to arXiv on 12 Jan. 2025

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