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pref_voting is a Python packaging that contains tools to reason about election profiles and margin graphs, and implementations of a variety of preferential voting methods.

Project description

pref_voting

Installation

With pip package manager:

pip install pref_voting

Documentation

Online documentation is available at https://pref_voting.readthedocs.io.

Profiles and Voting Methods

A profile (of linear orders over the candidates) is created by initializing a Profile class object. This needs a list of rankings (each ranking is a tuple of numbers), the number of candidates, and a list giving the number of each ranking in the profile:

from pref_voting.profiles import Profile

rankings = [(0, 1, 2, 3), (2, 3, 1, 0), (3, 1, 2, 0), (1, 2, 0, 3), (1, 3, 2, 0)]
rcounts = [5, 3, 2, 4, 3]

prof = Profile(rankings, rcounts=rcounts)

The function generate_profile is used to generate a profile for a given number of candidates and voters:

from pref_voting.generate_profiles import generate_profile

# generate a profile using the Impartial Culture probability model
prof = generate_profile(3, 4) # prof is a Profile object

# generate a profile using the Impartial Anonymous Culture probability model
prof = generate_profile(3, 4, probmod = "IAC") # prof is a Profile object 
from pref_voting.profiles import Profile
from pref_voting.voting_methods import *

prof = Profile(rankings, num_cands, rcounts=rcounts)
print(f"{split_cycle.name} winners:  {split_cycle(prof)}")
split_cycle.display(prof)

Versions

  • v0.1.10 (2022-08-09): Initial release
  • v0.1.13 (2022-11-05): Minor updates and bug fixes
  • v0.1.14 (2022-12-19): Add plurality_scores to ProfileWithTies; add generate ceots function; bug fixes
  • v0.1.23 (2022-12-27): Add instant_runoff_for_truncated_linear_orders and functions to truncate overvotes in a ProfileWithTies, add smith_irv_put, document analysis functions
  • v0.1.25 (2023-1-11): Add condorcet_irv, condorcet_irv_put; Update documentation; add axioms.py; add display and equality to Ranking class; fix enumerate ceots functions
  • v0.1.27 (2023-2-07): Add Borda for ProfileWithTies
  • v0.2 (2023-2-15): Add Benham, add anonymize to Profile method, comment out numba to make compatible with Python 3.11, add add_unranked_candidates to ProfileWithTies
  • v0.2.1 (2023-2-15): Bug fixes
  • v0.2.3 (2023-4-2): Add plurality_with_runoff_with_explanation
  • v0.2.4 (2023-4-9): Update generate_truncated_profile so that it implements the IC probability model.
  • v0.2.5 (2023-5-10): Add axiom class, dominance axioms, and axiom_violations_data.

Questions?

Feel free to send me an email if you have questions about the project.

License

MIT

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