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Main Authors: Sivaprasad, Sarath, Kaushik, Pramod, Abdelnabi, Sahar, Fritz, Mario
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2402.11005
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author Sivaprasad, Sarath
Kaushik, Pramod
Abdelnabi, Sahar
Fritz, Mario
author_facet Sivaprasad, Sarath
Kaushik, Pramod
Abdelnabi, Sahar
Fritz, Mario
contents Large Language Models (LLMs) are increasingly utilized in autonomous decision-making, where they sample options from vast action spaces. However, the heuristics that guide this sampling process remain under explored. We study this sampling behavior and show that this underlying heuristics resembles that of human decision-making: comprising a descriptive component (reflecting statistical norm) and a prescriptive component (implicit ideal encoded in the LLM) of a concept. We show that this deviation of a sample from the statistical norm towards a prescriptive component consistently appears in concepts across diverse real-world domains like public health, and economic trends. To further illustrate the theory, we demonstrate that concept prototypes in LLMs are affected by prescriptive norms, similar to the concept of normality in humans. Through case studies and comparison with human studies, we illustrate that in real-world applications, the shift of samples toward an ideal value in LLMs' outputs can result in significantly biased decision-making, raising ethical concerns.
format Preprint
id arxiv_https___arxiv_org_abs_2402_11005
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle A Theory of Response Sampling in LLMs: Part Descriptive and Part Prescriptive
Sivaprasad, Sarath
Kaushik, Pramod
Abdelnabi, Sahar
Fritz, Mario
Computation and Language
Artificial Intelligence
Large Language Models (LLMs) are increasingly utilized in autonomous decision-making, where they sample options from vast action spaces. However, the heuristics that guide this sampling process remain under explored. We study this sampling behavior and show that this underlying heuristics resembles that of human decision-making: comprising a descriptive component (reflecting statistical norm) and a prescriptive component (implicit ideal encoded in the LLM) of a concept. We show that this deviation of a sample from the statistical norm towards a prescriptive component consistently appears in concepts across diverse real-world domains like public health, and economic trends. To further illustrate the theory, we demonstrate that concept prototypes in LLMs are affected by prescriptive norms, similar to the concept of normality in humans. Through case studies and comparison with human studies, we illustrate that in real-world applications, the shift of samples toward an ideal value in LLMs' outputs can result in significantly biased decision-making, raising ethical concerns.
title A Theory of Response Sampling in LLMs: Part Descriptive and Part Prescriptive
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2402.11005