A Framework for Approval-based Budgeting Methods

09/12/2018
by   Piotr Faliszewski, et al.
0

We define and study a general framework for approval-based budgeting methods and compare certain methods within this framework by their axiomatic and computational properties. Furthermore, we visualize their behavior on certain Euclidean distributions and analyze them experimentally.

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