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Main Authors: Durmus, Esin, Nguyen, Karina, Liao, Thomas I., Schiefer, Nicholas, Askell, Amanda, Bakhtin, Anton, Chen, Carol, Hatfield-Dodds, Zac, Hernandez, Danny, Joseph, Nicholas, Lovitt, Liane, McCandlish, Sam, Sikder, Orowa, Tamkin, Alex, Thamkul, Janel, Kaplan, Jared, Clark, Jack, Ganguli, Deep
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2306.16388
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author Durmus, Esin
Nguyen, Karina
Liao, Thomas I.
Schiefer, Nicholas
Askell, Amanda
Bakhtin, Anton
Chen, Carol
Hatfield-Dodds, Zac
Hernandez, Danny
Joseph, Nicholas
Lovitt, Liane
McCandlish, Sam
Sikder, Orowa
Tamkin, Alex
Thamkul, Janel
Kaplan, Jared
Clark, Jack
Ganguli, Deep
author_facet Durmus, Esin
Nguyen, Karina
Liao, Thomas I.
Schiefer, Nicholas
Askell, Amanda
Bakhtin, Anton
Chen, Carol
Hatfield-Dodds, Zac
Hernandez, Danny
Joseph, Nicholas
Lovitt, Liane
McCandlish, Sam
Sikder, Orowa
Tamkin, Alex
Thamkul, Janel
Kaplan, Jared
Clark, Jack
Ganguli, Deep
contents Large language models (LLMs) may not equitably represent diverse global perspectives on societal issues. In this paper, we develop a quantitative framework to evaluate whose opinions model-generated responses are more similar to. We first build a dataset, GlobalOpinionQA, comprised of questions and answers from cross-national surveys designed to capture diverse opinions on global issues across different countries. Next, we define a metric that quantifies the similarity between LLM-generated survey responses and human responses, conditioned on country. With our framework, we run three experiments on an LLM trained to be helpful, honest, and harmless with Constitutional AI. By default, LLM responses tend to be more similar to the opinions of certain populations, such as those from the USA, and some European and South American countries, highlighting the potential for biases. When we prompt the model to consider a particular country's perspective, responses shift to be more similar to the opinions of the prompted populations, but can reflect harmful cultural stereotypes. When we translate GlobalOpinionQA questions to a target language, the model's responses do not necessarily become the most similar to the opinions of speakers of those languages. We release our dataset for others to use and build on. Our data is at https://huggingface.co/datasets/Anthropic/llm_global_opinions. We also provide an interactive visualization at https://llmglobalvalues.anthropic.com.
format Preprint
id arxiv_https___arxiv_org_abs_2306_16388
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Towards Measuring the Representation of Subjective Global Opinions in Language Models
Durmus, Esin
Nguyen, Karina
Liao, Thomas I.
Schiefer, Nicholas
Askell, Amanda
Bakhtin, Anton
Chen, Carol
Hatfield-Dodds, Zac
Hernandez, Danny
Joseph, Nicholas
Lovitt, Liane
McCandlish, Sam
Sikder, Orowa
Tamkin, Alex
Thamkul, Janel
Kaplan, Jared
Clark, Jack
Ganguli, Deep
Computation and Language
Artificial Intelligence
Large language models (LLMs) may not equitably represent diverse global perspectives on societal issues. In this paper, we develop a quantitative framework to evaluate whose opinions model-generated responses are more similar to. We first build a dataset, GlobalOpinionQA, comprised of questions and answers from cross-national surveys designed to capture diverse opinions on global issues across different countries. Next, we define a metric that quantifies the similarity between LLM-generated survey responses and human responses, conditioned on country. With our framework, we run three experiments on an LLM trained to be helpful, honest, and harmless with Constitutional AI. By default, LLM responses tend to be more similar to the opinions of certain populations, such as those from the USA, and some European and South American countries, highlighting the potential for biases. When we prompt the model to consider a particular country's perspective, responses shift to be more similar to the opinions of the prompted populations, but can reflect harmful cultural stereotypes. When we translate GlobalOpinionQA questions to a target language, the model's responses do not necessarily become the most similar to the opinions of speakers of those languages. We release our dataset for others to use and build on. Our data is at https://huggingface.co/datasets/Anthropic/llm_global_opinions. We also provide an interactive visualization at https://llmglobalvalues.anthropic.com.
title Towards Measuring the Representation of Subjective Global Opinions in Language Models
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2306.16388