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Hauptverfasser: Ying, Jiahao, Cao, Yixin, Xiong, Kai, He, Yidong, Cui, Long, Liu, Yongbin
Format: Preprint
Veröffentlicht: 2023
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2309.17415
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author Ying, Jiahao
Cao, Yixin
Xiong, Kai
He, Yidong
Cui, Long
Liu, Yongbin
author_facet Ying, Jiahao
Cao, Yixin
Xiong, Kai
He, Yidong
Cui, Long
Liu, Yongbin
contents This study investigates the behaviors of Large Language Models (LLMs) when faced with conflicting prompts versus their internal memory. This will not only help to understand LLMs' decision mechanism but also benefit real-world applications, such as retrieval-augmented generation (RAG). Drawing on cognitive theory, we target the first scenario of decision-making styles where there is no superiority in the conflict and categorize LLMs' preference into dependent, intuitive, and rational/irrational styles. Another scenario of factual robustness considers the correctness of prompt and memory in knowledge-intensive tasks, which can also distinguish if LLMs behave rationally or irrationally in the first scenario. To quantify them, we establish a complete benchmarking framework including a dataset, a robustness evaluation pipeline, and corresponding metrics. Extensive experiments with seven LLMs reveal their varying behaviors. And, with role play intervention, we can change the styles, but different models present distinct adaptivity and upper-bound. One of our key takeaways is to optimize models or the prompts according to the identified style. For instance, RAG models with high role play adaptability may dynamically adjust the interventions according to the quality of retrieval results -- being dependent to better leverage informative context; and, being intuitive when external prompt is noisy.
format Preprint
id arxiv_https___arxiv_org_abs_2309_17415
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Intuitive or Dependent? Investigating LLMs' Behavior Style to Conflicting Prompts
Ying, Jiahao
Cao, Yixin
Xiong, Kai
He, Yidong
Cui, Long
Liu, Yongbin
Computation and Language
This study investigates the behaviors of Large Language Models (LLMs) when faced with conflicting prompts versus their internal memory. This will not only help to understand LLMs' decision mechanism but also benefit real-world applications, such as retrieval-augmented generation (RAG). Drawing on cognitive theory, we target the first scenario of decision-making styles where there is no superiority in the conflict and categorize LLMs' preference into dependent, intuitive, and rational/irrational styles. Another scenario of factual robustness considers the correctness of prompt and memory in knowledge-intensive tasks, which can also distinguish if LLMs behave rationally or irrationally in the first scenario. To quantify them, we establish a complete benchmarking framework including a dataset, a robustness evaluation pipeline, and corresponding metrics. Extensive experiments with seven LLMs reveal their varying behaviors. And, with role play intervention, we can change the styles, but different models present distinct adaptivity and upper-bound. One of our key takeaways is to optimize models or the prompts according to the identified style. For instance, RAG models with high role play adaptability may dynamically adjust the interventions according to the quality of retrieval results -- being dependent to better leverage informative context; and, being intuitive when external prompt is noisy.
title Intuitive or Dependent? Investigating LLMs' Behavior Style to Conflicting Prompts
topic Computation and Language
url https://arxiv.org/abs/2309.17415