Karina Nyugen’s scientific contributions

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Publications (1)


Figure 4: With Linguistic Prompting, LLM does not appear to be more representative of the corresponding non-Western countries.
Figure 6: Distribution of topics in the data. Majority of the questions are classified into "Politics and policy" and "Regions and countries".
Figure 7: An example where cross-national promoting changes the model's responses, but the model responses do not become more representative of the responses of the participants from Turkey. Corresponding model generations are in Table 7.
Figure 9: An example where the model's response changes when provided with a cross-national prompt, assigning 99.1% probability to the response "Generally bad".
Towards Measuring the Representation of Subjective Global Opinions in Language Models
  • Preprint
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June 2023

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195 Reads

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5 Citations

Esin Durmus

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Karina Nyugen

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Thomas I. Liao

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[...]

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Deep Ganguli

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.

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Citations (1)


... The first study. In 2023, scientists developed the "Chinese Room of Increased Complexity" technology to create algorithmic copies of citizens of any country [11]. This was followed by the Wuhan experiment to predict the US presidential election in 2024 based on the analysis of the AI model of preferences of simulacra rather than people. ...

Reference:

1(45) (2025): International Journal of Innovative Technologies in Social Science CITATION Nataliya Onishchenko, Oleksii Kostenko, Dmytro Zhuravlov. (2025) AI Technologies to The Question of The "Policy" of Legal Regulation at The Present Stage. Essential and Instrumental Factors
Towards Measuring the Representation of Subjective Global Opinions in Language Models