List experiments are a widely used survey technique for estimating the prevalence of socially sensitive attitudes or behaviors. Their design, however, makes them vulnerable to bias: because treatment group respondents see a greater number of items (J + 1) than control group respondents (J), the treatment group mean may be mechanically inflated due simply to the greater number of items. The few previous studies that directly examine this do not arrive at definitive conclusions. We find clear evidence of inflation in an original dataset, though only among respondents with low educational attainment. Furthermore, we use available data from previous studies and find similar heterogeneous patterns. The evidence of heterogeneous effects has implications for the interpretation of previous research using list experiments, especially in developing world contexts. We recommend a simple solution: using a necessarily false placebo statement for the control group equalizes list lengths, thereby protecting against mechanical inflation without imposing costs or altering interpretations.
This article contributes to the study of ethnic diversity and public goods provision by assessing the role of the spatial distribution of ethnic groups. Through a new theory that we callspatial interdependence, we argue that the segregation of ethnic groups can reduce or even neutralize the “diversity penalty” in public goods provision that results from ethnic fractionalization. This is because local segregation allows communities to use disparities in the level of public goods compared with other communities as leverage when advocating for more public goods for themselves, thereby ratcheting up the level of public goods across communities. We test this prediction on highly disaggregated data from Indonesia and find strong support that, controlling for ethnic fractionalization, segregated communities have higher levels of public goods. This has an important and underexplored implication: decentralization disadvantages integrated communities vis-à-vis their more segregated counterparts.
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