Paper ID: 2502.14155 • Published Feb 19, 2025
Giving AI Personalities Leads to More Human-Like Reasoning
Animesh Nighojkar, Bekhzodbek Moydinboyev, My Duong, John Licato
TL;DR
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In computational cognitive modeling, capturing the full spectrum of human
judgment and decision-making processes, beyond just optimal behaviors, is a
significant challenge. This study explores whether Large Language Models (LLMs)
can emulate the breadth of human reasoning by predicting both intuitive, fast
System 1 and deliberate, slow System 2 processes. We investigate the potential
of AI to mimic diverse reasoning behaviors across a human population,
addressing what we call the {\em full reasoning spectrum problem}. We designed
reasoning tasks using a novel generalization of the Natural Language Inference
(NLI) format to evaluate LLMs' ability to replicate human reasoning. The
questions were crafted to elicit both System 1 and System 2 responses. Human
responses were collected through crowd-sourcing and the entire distribution was
modeled, rather than just the majority of the answers. We used
personality-based prompting inspired by the Big Five personality model to
elicit AI responses reflecting specific personality traits, capturing the
diversity of human reasoning, and exploring how personality traits influence
LLM outputs. Combined with genetic algorithms to optimize the weighting of
these prompts, this method was tested alongside traditional machine learning
models. The results show that LLMs can mimic human response distributions, with
open-source models like Llama and Mistral outperforming proprietary GPT models.
Personality-based prompting, especially when optimized with genetic algorithms,
significantly enhanced LLMs' ability to predict human response distributions,
suggesting that capturing suboptimal, naturalistic reasoning may require
modeling techniques incorporating diverse reasoning styles and psychological
profiles. The study concludes that personality-based prompting combined with
genetic algorithms is promising for enhancing AI's \textit{human-ness} in
reasoning.