For whom will the Bayesian agents vote?
Within an agent-based model where moral classifications are socially learned, we ask if a population of agents behaves in a way that may be compared with conservative or liberal positions in the real political spectrum. We assume that agents first experience a formative period, in which they...
Main Authors: | , , |
---|---|
Format: | Article |
Language: | English |
Published: |
Frontiers Media S.A.
2015-04-01
|
Series: | Frontiers in Physics |
Subjects: | |
Online Access: | http://journal.frontiersin.org/Journal/10.3389/fphy.2015.00025/full |
id |
doaj-aaf9ad0a8634486b979936f562269db9 |
---|---|
record_format |
Article |
spelling |
doaj-aaf9ad0a8634486b979936f562269db92020-11-25T00:12:19ZengFrontiers Media S.A.Frontiers in Physics2296-424X2015-04-01310.3389/fphy.2015.00025138558For whom will the Bayesian agents vote?Nestor eCaticha0Jonatas eCesar1Renato eVicente2University of Sao PauloUniversity of Sao PauloUniversity of São PauloWithin an agent-based model where moral classifications are socially learned, we ask if a population of agents behaves in a way that may be compared with conservative or liberal positions in the real political spectrum. We assume that agents first experience a formative period, in which they adjust their learning style acting as supervised Bayesian adaptive learners. The formative phase is followed by a period of social influence by reinforcement learning. By comparing data generated by the agents with data from a sample of 15000 Moral Foundation questionnaires we found the following. 1. The number of information exchanges in the formative phase correlates positively with statistics identifying liberals in the social influence phase. This is consistent with recent evidence that connects the dopamine receptor D4-7R gene, political orientation and early age social clique size. 2. The learning algorithms that result from the formative phase vary in the way they treat novelty and corroborative information with more conservative-like agents treating it more equally than liberal-like agents. This is consistent with the correlation between political affiliation and the Openness personality trait reported in the literature. 3. Under the increase of a model parameter interpreted as an external pressure, the statistics of liberal agents resemble more those of conservative agents, consistent with reports on the consequences of external threats on measures of conservatism. We also show that in the social influence phase liberal-like agents readapt much faster than conservative-like agents when subjected to changes on the relevant set of moral issues. This suggests a verifiable dynamical criterium for attaching liberal or conservative labels to groups.http://journal.frontiersin.org/Journal/10.3389/fphy.2015.00025/fullagent-based modelsBayesian learningSociophysicsopinion dynamicsmoral foundations |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Nestor eCaticha Jonatas eCesar Renato eVicente |
spellingShingle |
Nestor eCaticha Jonatas eCesar Renato eVicente For whom will the Bayesian agents vote? Frontiers in Physics agent-based models Bayesian learning Sociophysics opinion dynamics moral foundations |
author_facet |
Nestor eCaticha Jonatas eCesar Renato eVicente |
author_sort |
Nestor eCaticha |
title |
For whom will the Bayesian agents vote? |
title_short |
For whom will the Bayesian agents vote? |
title_full |
For whom will the Bayesian agents vote? |
title_fullStr |
For whom will the Bayesian agents vote? |
title_full_unstemmed |
For whom will the Bayesian agents vote? |
title_sort |
for whom will the bayesian agents vote? |
publisher |
Frontiers Media S.A. |
series |
Frontiers in Physics |
issn |
2296-424X |
publishDate |
2015-04-01 |
description |
Within an agent-based model where moral classifications are socially learned, we ask if a population of agents behaves in a way that may be compared with conservative or liberal positions in the real political spectrum. We assume that agents first experience a formative period, in which they adjust their learning style acting as supervised Bayesian adaptive learners. The formative phase is followed by a period of social influence by reinforcement learning. By comparing data generated by the agents with data from a sample of 15000 Moral Foundation questionnaires we found the following. 1. The number of information exchanges in the formative phase correlates positively with statistics identifying liberals in the social influence phase. This is consistent with recent evidence that connects the dopamine receptor D4-7R gene, political orientation and early age social clique size. 2. The learning algorithms that result from the formative phase vary in the way they treat novelty and corroborative information with more conservative-like agents treating it more equally than liberal-like agents. This is consistent with the correlation between political affiliation and the Openness personality trait reported in the literature. 3. Under the increase of a model parameter interpreted as an external pressure, the statistics of liberal agents resemble more those of conservative agents, consistent with reports on the consequences of external threats on measures of conservatism. We also show that in the social influence phase liberal-like agents readapt much faster than conservative-like agents when subjected to changes on the relevant set of moral issues. This suggests a verifiable dynamical criterium for attaching liberal or conservative labels to groups. |
topic |
agent-based models Bayesian learning Sociophysics opinion dynamics moral foundations |
url |
http://journal.frontiersin.org/Journal/10.3389/fphy.2015.00025/full |
work_keys_str_mv |
AT nestorecaticha forwhomwillthebayesianagentsvote AT jonatasecesar forwhomwillthebayesianagentsvote AT renatoevicente forwhomwillthebayesianagentsvote |
_version_ |
1725399801942507520 |