Machine Learning Based Policy to Ease Information Asymmetry in Non-Point Pollution Management

Author(s)Fooks, Jacob R.
Author(s)Messer, Kent D.
Author(s)Suter, Jordan F.
Date Accessioned2017-03-27T13:58:36Z
Date Available2017-03-27T13:58:36Z
Publication Date2017-03
AbstractThis research examines how an artificial neural network incorporating high-frequency monitoring data and natural system dynamics can inform policies that regulate an environmental externality with inherent information asymmetry. Using an experiment with both students and agricultural producers we study strategic behavior under various policies and measure participants’ relative values for different levels of information accuracy under such policies. First, we show that a neural-network-based recursive filter can be applied to monitoring data to estimate an individual polluter’s contribution to the ambient level of pollution, in essence, turning nonpoint sources into estimated point sources. We then test the implications of this result using an economic experiment that explores the effects of spatial relationships and the information structure of policies on behavior and preferences. The results of the experiments show that participants change their emissions in response to both policy and information treatments and that there are no significant differences in behavior between professional and student participants. However, we find that the agricultural producers are more willing than student participants to pay for policies that more accurately target the individual sources of pollution. This latter result suggests a strong preference for polluter-pay policies instead of ambient-based policies amongst producers, even if they do not necessarily lead to higher total profits.en_US
SponsorUSDA Economic Research Service, University of Delaware, Colorado State Universityen_US
URLhttp://udspace.udel.edu/handle/19716/21174
Languageen_USen_US
PublisherDepartment of Applied Economics and Statistics, University of Delaware, Newark, DE.en_US
Part of SeriesAPEC RR17-02;
KeywordsNonpoint source pollution, experimental economics, neural networken_US
TitleMachine Learning Based Policy to Ease Information Asymmetry in Non-Point Pollution Managementen_US
TypeWorking Paperen_US
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