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Incorporating Social Welfare in Program-Evaluation and Treatment Choice

The Review of Economics and Statistics 2026 108(2), 311-326 open access
Abstract We introduce a notion of money-metric social welfare for discrete choice under unrestricted heterogeneity and income effects. It is the maximized indirect utility under normalization of the outside option. It also equals the amount of income necessary to achieve a given level of utility, while certain choices are prohibited. We show that the distribution of this quantity is nonparametrically identified as a closed-form functional of average structural demand for the outside option, making it useful for cost-benefit analysis and optimal targeting. An illustration with private tuition subsidies in India shows that the income path of usage-maximizing subsidies differs significantly from welfare-maximizing ones.

Spatial Correlation, Trade, and Inequality: Evidence from the Global Climate

The Review of Economics and Statistics 2026 open access
Abstract Global phenomena, such as climate change, often have local impacts that are spatially correlated. We show that greater spatial correlation of productivities can increase international inequality by increasing the correlation between a country's productivity and its gains from trade. We confirm this prediction using a half-century of exogenous variation in the spatial correlation of agricultural productivities induced by a global climatic phenomenon. We introduce this general-equilibrium effect into projections of climate-change impacts that typically omit spatial linkages and therefore do not account for the global scope of climate change. We project greater international inequality, with higher welfare losses across Africa.

Investments and Innovation with Non-Rival Inputs: Evidence from Chinese Artificial Intelligence Startups

The Review of Economics and Statistics 2026 open access
Abstract We examine the effect of investments by large technology firms on innovation by AI startups. Large technology firms have substantial advantages in data, a key non-rival input for developing AI technology. We assemble a unique dataset containing approximately 9,800 AI-inventing startups in China. Using a triple-differences strategy, we find that AI startups receiving investments from large technology firms file more AI patent applications and develop more software products following the investment, relative to their counterparts receiving investments from other firms without data advantages. Finally, we provide novel evidence that the innovation effect works mainly through sharing non-rival data.

The Intended and Unintended Effects of Promoting Labor Market Mobility

The Review of Economics and Statistics 2026 108(2), 421-435 open access
Abstract We investigate the causal effects of financial incentives supporting geographical mobility among unemployed workers on their job search behavior and labor market outcomes. Exploiting regional variation in the promotion of mobility programs along administrative borders of German employment agency districts, we show that promoting mobility—as intended—causes job seekers to increase their search radius, apply for, and accept distant jobs. At the same time, local job search is reduced with adverse consequences for reemployment and earnings. A detailed analysis of the underlying mechanisms suggests spatial search frictions as the driver of the unintended adverse labor market effects.

Crime and Mismeasured Punishment: Marginal Treatment Effect with Misclassification

The Review of Economics and Statistics 2026 108(1), 44-56 open access
Abstract I partially identify the marginal treatment effect (MTE) when the treatment is misclassified. I explore two restrictions, allowing for dependence between the instrument and the misclassification decision. If the signs of the propensity scores’ derivatives are equal, I identify the MTE sign. If those derivatives are similar, I bound the MTE. To illustrate, I analyze the impact of alternative sentences (fines and community service versus no punishment) on recidivism in Brazil, where court appeals processes generate misclassification. The estimated misclassification bias may be as large as 10% of the largest possible MTE, and the bounds contain the correctly estimated MTE.

Disentangling Reputation from Selection Effects in Markets with Informational Asymmetries: A Field Experiment

The Review of Economics and Statistics 2026 open access
Abstract In markets with asymmetric information between sellers and buyers, feedback mechanisms are important to increase market efficiency and reduce the informational disadvantage of buyers. Feedback mechanisms might work because of self-selection of more trustworthy sellers into markets with such mechanisms or because of reputational concerns of sellers. We show in a field experiment how to disentangle self-selection from reputation effects. Based on 476 taxi rides with four different types of taxis, we find strong evidence for reputation effects but little support for self-selection effects. We discuss policy implications of our findings.

Intergenerational Mobility in the Land of Inequality

The Review of Economics and Statistics 2026 open access
Abstract We provide the first estimates of intergenerational income mobility using tax data for a large developing country, namely Brazil. We measure formal income from tax and payroll data, and we train machine learning models on census and survey data to predict informal income. We quantify the estimation bias resulting from income imputation and other sources of measurement error, and show that such bias remains negligible in our context. A 10 percentile increase in parental income rank is associated on average with a 5.5 percentile increase in child income rank, with considerable variation across sociodemographic groups and geographical areas.

Robust Design and Evaluation of Predictive Algorithms under Unobserved Confounding

The Review of Economics and Statistics 2026 open access
Abstract Predictive algorithms inform consequential decisions in settings with selective labels: outcomes are observed only for units selected by past decision makers. This creates an identification problem under unobserved confounding — when selected and unselected units differ in unobserved ways that affect outcomes. We propose a framework for robust design and evaluation of predictive algorithms that bounds how much outcomes may differ between selected and unselected units with the same observed characteristics. These bounds formalize common empirical strategies including proxy outcomes and instrumental variables. Our estimators work across bounding strategies and performance measures such as conditional likelihoods, mean squared error, and true/false positive rates. Using administrative data from a large Australian financial institution, we show that varying confounding assumptions substantially affects credit risk predictions and fairness evaluations across income groups.

How Big Is the Media Multiplier? Evidence from Dyadic News Data

The Review of Economics and Statistics 2026 108(3), 696-711 open access
Abstract This paper estimates the size of the media multiplier, an easily generalizable model-based measure of how far media coverage magnifies the economic response to shocks. We combine monthly aggregated and anonymized credit card activity data from 114 card-issuing countries in 5 destination countries with a large corpus of news coverage in issuing countries reporting on violent events in the destinations. To define and quantify the media multiplier, we estimate a model in which latent beliefs, shaped by either events or news coverage, drive card activity. According to the model, media coverage can more than triple the economic impact of an event. We document, through our model, that this effect is highly heterogeneous and depends on the broader media representation of countries in each other’s news. We speculate about the role of the media in driving international travel patterns.

Weak Identification in Low-Dimensional Factor Models with One or Two Factors

The Review of Economics and Statistics 2026 open access
Abstract This paper describes how to reparametrize low-dimensional factor models with one or two factors to fit weak identification theory developed for generalized method of moments models. Some identification-robust tests, here called “plug-in” tests, require a reparametrization to distinguish weakly identified parameters from strongly identified parameters. The reparametrizations in this paper make plug-in tests available for subvector hypotheses in low-dimensional factor models with one or two factors. Simulations show that the plug-in tests are less conservative than identification-robust tests that use the original parametrization. An empirical application to a factor model of parental investments in children is included.