Created
August 19, 2023 12:55
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Optimization code to find distribution with optimum distortion with respect to proportional fairness (Paper "Optimized Distortion and Proportional Fairness in Voting" by Soroush Ebadian, Anson Kahng, Dominik Peters, and Nisarg Shah)
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import cvxpy as cp | |
import math | |
def compute_hi(rankings): | |
"""Compute h_i(a) for all voters and alternatives.""" | |
hi = [] | |
for ranking in rankings: | |
h = {} | |
for a in ranking: | |
h[a] = set(ranking[:ranking.index(a)+1]) | |
hi.append(h) | |
return hi | |
def optimize(rankings): | |
n = len(rankings) | |
m = len(rankings[0]) | |
A = list(rankings[0]) | |
# Compute p_a values | |
top_choices = [ranking[0] for ranking in rankings] | |
p_a = [top_choices.count(a)/len(rankings) for a in A] | |
# Compute h_i(a) | |
hi = compute_hi(rankings) | |
x = cp.Variable(m, nonneg=True) | |
constraints = [cp.sum(x) == 1] | |
beta = 2 * (1 + math.log(2*m)) | |
for i in range(m): | |
constraints.append(x[i] >= p_a[i]/beta) | |
# Objective function | |
payoff = [] | |
for a in A: | |
sum_term = sum([cp.inv_pos(cp.sum([x[A.index(alt)] for alt in hi[i][a]])) for i in range(n)]) | |
payoff.append(sum_term/n) | |
objective = cp.Minimize(cp.maximum(*payoff)) | |
prob = cp.Problem(objective, constraints) | |
prob.solve() | |
return x.value | |
# Example 2.5 from paper | |
rankings = [[1,2,3], [2,1,3], [1,3,2]] | |
optimize(rankings) # approximately [0.5857 0.4142 0] |
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