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Democracy, Public Support, and Measurement Uncertainty – CORRIGENDUM

Published online by Cambridge University Press:  25 April 2024

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Abstract

Type
Corrigendum
Copyright
© The Author(s), 2024. Published by Cambridge University Press on behalf of American Political Science Association

The authors regret that three operations raise controversies, and thus make the following updates:

NONREPRESENTATIVE SURVEYS

In the 2002 and 2005 Pew Global Attitudes Surveys, the codebooks identify a total of nineteen national surveys with samples that are biased toward urban areas. We included all of these national surveys in our expanded sample. Data from these nineteen national surveys are now excluded from our data.

NON-RESPONSES

In the original paper, we treated these non-responses as “missing at random”—that is, that the distribution of attitudes among those who did not respond was similar to that among those who did—and applied listwise deletion, excluding the non-responses from the sample.

In some cases (for example, the Americas Barometer survey of Canada in 2010; see Hu, Tai, and Solt Reference Tai, Hu and Solt2022), non-responses are the result of split samples, where many respondents were not even presented with the survey item in question. In such cases, they are missing at random—respondents were explicitly randomly assigned to the split samples that excluded the relevant item—and so listwise deletion is appropriate. We therefore continue to exclude from the sample those respondents who were not even asked the relevant question. These cases are rare, though; most non-responses in these surveys are the result of refusal, “don’t know,” and other non-responsive answers.

For these remaining cases, we now incorporate the measurement uncertainty due to non-response as follows. The number of democracy-supporting responses and the total sample size was imputed four times—that is, using in turn each of these four assumptions about the distribution of non-responses described above—for each country-year-item in the source survey data. The latent variable was then estimated using each of these imputations, and the resulting draws combined as in model-based multiple imputation. The result is a distribution of draws that reflects the measurement uncertainty in the latent variable, avoiding the strong assumptions of either single imputation or listwise deletion.

SURVEY WEIGHTS

In our data collection, we employ each survey’s weights, but did not appreciate that some surveys’ weights are not standardized; that is, applying them caused (occasionally dramatic) changes in the sample size. As the sample size is an important input in the latent variable model—smaller samples yield larger uncertainty in the population mean, which then propagates into the estimate of democratic support—this is undesirable. We now standardize survey weights to have a mean of one before applying them and so ensure that these weights preserve the sample size.

RESULTS AFTER THE OPERATION UPDATES

Figure 1 and Figure 2 represent the results of the main analysis of the article with the corrected data. Applying these corrections does not yield substantive differences in the results of our analyses and so does not affect the conclusions reached.

Figure 1. The Effect of Public Support on Democracy with Uncertainty (Revised Results)

Note: Replications of Claassen (Reference Claassen2020a), Table 1, 128.

Figure 2. The Effect of Democracy on Change in Public Support with Uncertainty (Revised Results)

Note: Replications of Claassen (Reference Claassen2020b), Table 1, 47, Table 2, 49. Models denoted ‘ECM’ are error-correction models; those marked ‘FD’ are first-difference models.

In particular, Figure 1 presents the reanalyses of the hypothesis that public support influences the level of democracy (Claassen Reference Claassen2020b, Table 1). The lighter, lefthand set of results replicate the analysis of Claassen (Reference Claassen2020b), including its exclusion of measurement uncertainty by using only the point estimates of public democratic support and the other variables measured with quantified error (i.e., democracy and corruption), and they reproduce that article’s findings. The middle results introduce a single change: the uncertainty in the measurement of public support and these other variables is taken into account. In all four models, the positive coefficients for democratic support are no longer statistically significant. The darker, righthand results also incorporate uncertainty but additionally replace the estimates of democratic support with those based on our expanded dataset; this change works to increase the number of observations analyzed as well. Although the confidence intervals shrink considerably, the coefficient estimates move much closer to zero: the hypothesis git.

Figure 2 examine the thermostatic model of democratic support per Claassen (Reference Claassen2020a, 47, Table 1, 49, Table 2). The negative coefficient estimates for change in liberal democracy in the lefthand set of results, which do not take uncertainty into account, imply that the immediate effect of a increase in the level of democracy is a decline in public support for democracy and of a decrease in democracy an expansion of support—that democratic support indeed does respond thermostatically to democracy. However, the middle results demonstrate that this thermostatic effect, too, does not hold after the measurement uncertainty is accounted for. And again, the righthand results reveal that the additional data of our extension do not provide support for the original conclusion.

The associated supplementary materials and replication data are already updated in the Dataverse (Tai, Hu, and Solt Reference Tai, Hu and Solt2022).

References

REFERENCES

Claassen, Christopher. 2020a. “Does Public Support Help Democracy Survive?American Journal of Political Science 64 (1): 118–34.CrossRefGoogle Scholar
Claassen, Christopher. 2020b. “In the Mood for Democracy? Democratic Support as Thermostatic Opinion.” American Political Science Review 114 (1): 3653.CrossRefGoogle Scholar
Hu, Yue, Tai, Yuehong Cassandra, and Solt, Frederick. 2022. “On Data ‘Janitor Work’ in Political Science: The Case of Thermostatic Support for Democracy.” Working Paper, June 21, 2022. https://doi.org/10.31235/osf.io/kd7mu.CrossRefGoogle Scholar
Tai, Yuehong ’Cassandra’, Hu, Yue, and Solt, Frederick. 2022. “Replication Data for: Democracy, Public Support, and Measurement Uncertainty.” Harvard Dataverse. Dataset. https://doi.org/10.7910/DVN/XAUF3H.CrossRefGoogle Scholar
Figure 0

Figure 1. The Effect of Public Support on Democracy with Uncertainty (Revised Results)Note: Replications of Claassen (2020a), Table 1, 128.

Figure 1

Figure 2. The Effect of Democracy on Change in Public Support with Uncertainty (Revised Results)Note: Replications of Claassen (2020b), Table 1, 47, Table 2, 49. Models denoted ‘ECM’ are error-correction models; those marked ‘FD’ are first-difference models.