Full Proportional Justified Representation
Yusuf Hakan Kalayci, Jiasen Liu, David Kempe

TL;DR
This paper introduces and analyzes Full Proportional Justified Representation (FPJR), a new fairness criterion for multiwinner approval voting, demonstrating its properties, relationships with existing notions, and compatibility with efficient voting rules.
Contribution
The paper defines FPJR as a new proportionality notion, studies its properties, and shows its compatibility with certain efficient voting rules, expanding the understanding of fair committee selection.
Findings
FPJR shares advantages with PJR over EJR in proportionality axioms.
Efficient rules like greedy Monroe and equal shares satisfy FPJR.
PAV may violate FPJR, indicating independence from EJR.
Abstract
In multiwinner approval voting, forming a committee that proportionally represents voters' approval ballots is an essential task. The notion of justified representation (JR) demands that any large "cohesive" group of voters should be proportionally "represented". The "cohesiveness" is defined in different ways; two common ways are the following: (C1) demands that the group unanimously approves a set of candidates proportional to its size, while (C2) requires each member to approve at least a fixed fraction of such a set. Similarly, "representation" have been considered in different ways: (R1) the coalition's collective utility from the winning set exceeds that of any proportionally sized alternative, and (R2) for any proportionally sized alternative, at least one member of the coalition derives less utility from it than from the winning set. Three of the four possible combinations…
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Taxonomy
TopicsLogic, Reasoning, and Knowledge
MethodsSparse Evolutionary Training
