CLNov 11, 2023

Intentional Biases in LLM Responses

arXiv:2311.07611v18 citationsh-index: 5Has Code
Originality Synthesis-oriented
AI Analysis

This incremental work addresses the problem of enabling creative media applications by exploring intentional biases in LLMs.

The study intentionally introduced biases into large language models like Falcon-7b and GPT-4 to create personas for interactive media, finding that GPT-4's guardrails hinder the construction of diverse viewpoints.

In this study we intentionally introduce biases into large language model responses in an attempt to create specific personas for interactive media purposes. We explore the differences between open source models such as Falcon-7b and the GPT-4 model from Open AI, and we quantify some differences in responses afforded by the two systems. We find that the guardrails in the GPT-4 mixture of experts models with a supervisor, while useful in assuring AI alignment in general, are detrimental in trying to construct personas with a variety of uncommon viewpoints. This study aims to set the groundwork for future exploration in intentional biases of large language models such that these practices can be applied in the creative field, and new forms of media.

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