Preventing the Tragedy of the Commons Through Punishment of Over-Consumers and Encouragement of Under-Consumers
Conservation of Natural Resources
bepress|Physical Sciences and Mathematics|Mathematics
bepress|Life Sciences|Biology
Populations and Evolution (q-bio.PE)
Models, Theoretical
Game Theory
Punishment
Mathematics - Classical Analysis and ODEs
FOS: Biological sciences
Classical Analysis and ODEs (math.CA)
FOS: Mathematics
Cooperative Behavior
Quantitative Biology - Populations and Evolution
Ecosystem
DOI:
10.1007/s11538-012-9804-3
Publication Date:
2013-02-13T14:44:45Z
AUTHORS (3)
ABSTRACT
The conditions that can lead to the exploitative depletion of a shared resource, i.e, the tragedy of the commons, can be reformulated as a game of prisoner's dilemma: while preserving the common resource is in the best interest of the group, over-consumption is in the interest of each particular individual at any given point in time. One way to try and prevent the tragedy of the commons is through infliction of punishment for over-consumption and/or encouraging under-consumption, thus selecting against over-consumers. Here, the effectiveness of various punishment functions in an evolving consumer-resource system is evaluated within a framework of a parametrically heterogeneous system of ordinary differential equations (ODEs). Conditions leading to the possibility of sustainable coexistence with the common resource for a subset of cases are identified analytically using adaptive dynamics; the effects of punishment on heterogeneous populations with different initial composition are evaluated using the Reduction theorem for replicator equations. Obtained results suggest that one cannot prevent the tragedy of the commons through rewarding of under-consumers alone - there must also be an implementation of some degree of punishment that increases in a non-linear fashion with respect to over-consumption and which may vary depending on the initial distribution of clones in the population.
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