The Prestige Of Economics

Inflation has dropped every month under Donald Trump. Economists and media are hardest hit. Economists in particular were predicting higher inflation due to Trump’s tariffs.

They were wrong. Again.

The credibility and prestige of social science depends in large part on its ability to replicate its findings and to predict and to explain. If you can’t replicate, predict or explain, what use are you? What is your cash value? What is your pragmatic contribution to real people? If you can’t replicate, predict or explain, why should I defer to you as an expert? How much are macro-economists able to replicate their findings? Do their macro-economic predictions hold up? Do they have the most useful explanations?

Grok says:

Macroeconomics faces significant challenges in replication, prediction, and explanation, which impact its credibility compared to natural sciences. Below, I address each aspect based on available evidence and analysis.

Replication in Macroeconomics

Replication in macroeconomics is limited and often problematic:

Data and Methodology Issues: Macroeconomic studies frequently rely on large, complex datasets (e.g., national accounts, GDP, unemployment rates) that can vary across countries or over time due to revisions or differing definitions. Replicating results is difficult when data sources are not standardized or when methodologies (e.g., econometric models) are not fully transparent. A 2018 study by Vilhuber and Chang found that only about 20% of macroeconomic studies published in top journals provided sufficient data and code for direct replication.

Low Replication Rates: Efforts to replicate macroeconomic findings, such as those in the American Economic Review or Journal of Political Economy, show mixed results. A 2016 project by the Center for Open Science attempted to replicate 18 macroeconomic studies and found that only 11 (61%) produced results consistent with the originals, often with weaker effect sizes. Issues like p-hacking, selective reporting, and model specification choices contribute to this.

Structural Challenges: Macroeconomic phenomena (e.g., recessions, inflation) are influenced by unique historical contexts, making controlled experiments impossible. This reduces the ability to test findings under identical conditions, unlike in microeconomics or lab-based sciences.

Predictive Power of Macroeconomic Models

Macroeconomic predictions often struggle to hold up:

Historical Performance: Large-scale macroeconomic models, like those used by central banks (e.g., DSGE models) or institutions like the IMF, have a mixed track record. For instance, a 2014 study by Edge and Gürkaynak found that Federal Reserve forecasts for GDP growth and inflation were no more accurate than simple benchmark models (e.g., random walks) over short horizons (1-2 years). Long-term forecasts (5+ years) are even less reliable due to structural economic shifts.

Notable Failures: The 2008 financial crisis exposed weaknesses in mainstream macroeconomic models, which largely failed to predict the crisis or its severity. Post-crisis analyses, such as Blanchard’s 2018 critique, highlighted that models underestimated systemic risks and relied on unrealistic assumptions (e.g., rational expectations, efficient markets).

Complexity and Uncertainty: Macroeconomic systems are inherently complex, with nonlinear dynamics and exogenous shocks (e.g., pandemics, geopolitical events). This makes precise predictions difficult. For example, the Congressional Budget Office’s long-term GDP forecasts have error margins of ±2-3% annually, compounding over time.

Some Successes: Short-term forecasts for stable economies (e.g., quarterly GDP growth in the U.S.) can be reasonably accurate when based on high-frequency data and nowcasting techniques. A 2020 study by Giannone et al. showed that nowcasting models reduced forecast errors by 20-30% compared to traditional methods.

Explanatory Power

Macroeconomics excels at post-hoc explanation but struggles with universal laws:

Theoretical Frameworks: Models like IS-LM, Solow growth, or New Keynesian frameworks provide coherent explanations for phenomena like business cycles or inflation. However, these models often rely on simplifying assumptions (e.g., representative agents) that limit their real-world applicability.

Contested Explanations: Different schools of thought (e.g., Keynesian, Monetarist, Austrian) offer competing explanations for the same phenomena, with no consensus on which is correct. For instance, the causes of stagflation in the 1970s remain debated, with explanations ranging from supply shocks to monetary policy failures.

Context Dependence: Explanations are often specific to time and place, reducing generalizability. For example, Phillips curve models, which link unemployment and inflation, broke down in the 1970s and required significant revisions.

Broader Implications for Credibility

Compared to Natural Sciences: Macroeconomics’ reliance on observational data and inability to conduct controlled experiments make it less robust than physics or chemistry. Its replication rates (around 60% in some studies) are lower than in psychology (50-70%) or biomedical sciences (70-80%), though higher than some fields like sociology.

Public Perception: Repeated predictive failures, especially during crises, erode trust. Surveys, like a 2019 YouGov poll, show that only 25% of the public trust economists’ forecasts, compared to 60% for meteorologists.

Progress and Reform: Post-2008, macroeconomists have improved models by incorporating financial frictions, heterogeneity, and behavioral factors. Open science practices, like data sharing and pre-registration, are also gaining traction, though adoption remains uneven.

Conclusion

Macroeconomists face significant hurdles in replicating findings due to data inconsistencies, methodological opacity, and context-specific phenomena, with successful replication rates around 60% in top studies. Predictive accuracy is modest, particularly for long-term forecasts or during crises, though short-term nowcasting shows promise. Explanatory power is strong in theory but weakened by competing paradigms and context dependence. These challenges undermine macroeconomics’ prestige relative to harder sciences

About Luke Ford

I've written five books (see Amazon.com). My work has been covered in the New York Times, the Los Angeles Times, and on 60 Minutes. I teach Alexander Technique in Beverly Hills (Alexander90210.com).
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