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Accountability and adaptive performance under uncertainty: A long-term view

Published online by Cambridge University Press:  01 January 2023

Welton Chang*
Affiliation:
3720 Walnut Street, University of Pennsylvania, Philadelphia PA, 19104.
Pavel Atanasov
Affiliation:
Pytho.
Shefali Patil
Affiliation:
University of Texas, Austin.
Barbara A. Mellers
Affiliation:
University of Pennsylvania
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Abstract

Accountability pressures are a ubiquitous feature of social systems: virtually everyone must answer to someone for something. Behavioral research has, however, warned that accountability, specifically a focus on being responsible for outcomes, tends to produce suboptimal judgments. We qualify this view by demonstrating the long-term adaptive benefits of outcome accountability in uncertain, dynamic environments. More than a thousand randomly assigned forecasters participated in a ten-month forecasting tournament in conditions of control, process, outcome or hybrid accountability. Accountable forecasters outperformed non-accountable ones. Holding forecasters accountable to outcomes (“getting it right”) boosted forecasting accuracy beyond holding them accountable for process (“thinking the right way”). The performance gap grew over time. Process accountability promoted more effective knowledge sharing, improving accuracy among observers. Hybrid (process plus outcome) accountability boosted accuracy relative to process, and improved knowledge sharing relative to outcome accountability. Overall, outcome and process accountability appear to make complementary contributions to performance when forecasters confront moderately noisy, dynamic environments where signal extraction requires both knowledge pooling and individual judgments.

Information

Type
Research Article
Creative Commons
Creative Common License - CCCreative Common License - BY
The authors license this article under the terms of the Creative Commons Attribution 3.0 License.
Copyright
Copyright © The Authors [2017] This is an Open Access article, distributed under the terms of the Creative Commons Attribution license (http://creativecommons.org/licenses/by/3.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.
Figure 0

Table 1: Demographic characteristics of subjects by experimental condition.

Figure 1

Table 2: Comparison of Brier scores for aggregated predictions by experimental condition. All conditions featured forecasting training, except the last row.

Figure 2

Figure 1: Accuracy of simple averages of forecasts over the course of a forecasting season by accountability condition.

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Table 3: Forecasting accuracy over time for simple averages. Higher values denote lower accuracy. Mixed-effects model coefficients, standard errors in parentheses. Process and hybrid accountability are compared to outcome accountability as the references.

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Table 4a: Forecasting accuracy over time among individual subjects. Higher values denote lower accuracy. Mixed-effects model coefficients, standard errors in parentheses. Process and hybrid accountability are compared to outcome accountability as the references.

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Table 4b: Forecasting accuracy over time among individual subjects. Higher values denote lower accuracy. Mixed-effects model coefficients, standard errors in parentheses. Process and hybrid accountability are compared to outcome accountability as the references.

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Figure 2: Persuasiveness and accuracy boost for analytical products generated by outcome, hybrid and process conditions. Persuasiveness is defined as the proportion of analytic product impressions resulting in belief updates. Accuracy boost is calculated as the mean Brier score improvement, before vs. after belief updates credited to key comments.

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Appendix: Supplementary Examples and Analyses
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