Title
Data-Driven Incentive Alignment in Capitation Schemes
Author(s)
Mark Braverman Mark Braverman (Princeton University)
Sylvain Chassang Sylvain Chassang (Princeton University)
Abstract
This paper explores whether Big Data, taking the form of extensive but high dimensional records, can reduce the cost of adverse selection in government-run capitation schemes, such as Medicare Advantage, or school voucher programs. We argue that using data to improve the ex ante precision of capitation regressions is unlikely to be helpful. Even if types become essentially observable, the high dimensionality of covariates makes it infeasible to precisely estimate the cost of serving a given type. This gives an informed private operator scope to select types that are relatively cheap to serve. Instead, we argue that data can be used to align incentives by forming unbiased and non-manipulable ex post estimates of a private operator’s gains from selection.
Creation Date
2016-08
Section URL ID
Paper Number
073_2015
URL
https://www.sylvainchassang.org/assets/papers/strategic_capitation.pdf
File Function
Jel
D81
Keyword(s)
adverse selection, big data, capitation, observable but not interpretable, health-care regulation, detail-free mechanism design, model selection
Suppress
false
Series
10