May 5, 2024
A Framework for Centralizing forces in AI
Emiel Robben, Sixuan Pei, Yuan Wei, Nils Müller
There are many forces that the LLM revolution brings with it that either centralize or decentralize specific structures in society. We decided to look at one of these, and write a research design proposal that can be readily executed. This survey can be distributed and can give insight into how different LLMs can lead to user empowerment. By analyzing how different users are empowered by different LLMs, we can estimate which LLMs work to give the most value to people, and empower them with the powerful tool that is information, giving more people more agency in the organizations they are part of. This is the core of bottom-up democratization.
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@misc {
title={
A Framework for Centralizing forces in AI
},
author={
Emiel Robben, Sixuan Pei, Yuan Wei, Nils Müller
},
date={
5/5/24
},
organization={Apart Research},
note={Research submission to the research sprint hosted by Apart.},
howpublished={https://apartresearch.com}
}
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We evaluate four OpenAI models (gpt-4.1-mini, gpt-4.1, gpt-5-nano, gpt-5-mini) across 30 comparison questions spanning 10 product categories, comparing responses between baseline (truthful) and adversarial (injected) conditions. Our results reveal significant variation: gpt-4.1-mini showed 45.5% deception rate, while gpt-4.1 demonstrated complete resistance. Even frontier gpt-5 models exhibited non-zero deception rates (3.3–7.1%), confirming that adversarial injection remains effective against current models.
These findings underscore the need for robust defenses before deploying LLMs in high-stakes recommendation contexts.
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Activation monitoring reveals that prompt framing affects a model's internal state before generation begins.
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Large language models (LLMs) with web browsing capabilities are vulnerable to adversarial content injection—where malicious actors embed deceptive claims in web pages to manipulate model outputs. We investigate whether frontier LLMs can be deceived into providing incorrect product recommendations when exposed to adversarial pages.
We evaluate four OpenAI models (gpt-4.1-mini, gpt-4.1, gpt-5-nano, gpt-5-mini) across 30 comparison questions spanning 10 product categories, comparing responses between baseline (truthful) and adversarial (injected) conditions. Our results reveal significant variation: gpt-4.1-mini showed 45.5% deception rate, while gpt-4.1 demonstrated complete resistance. Even frontier gpt-5 models exhibited non-zero deception rates (3.3–7.1%), confirming that adversarial injection remains effective against current models.
These findings underscore the need for robust defenses before deploying LLMs in high-stakes recommendation contexts.
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SycophantSee - Activation-based diagnostics for prompt engineering: monitoring sycophancy at prompt and generation time
Activation monitoring reveals that prompt framing affects a model's internal state before generation begins.
Read More
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Large language models (LLMs) with web browsing capabilities are vulnerable to adversarial content injection—where malicious actors embed deceptive claims in web pages to manipulate model outputs. We investigate whether frontier LLMs can be deceived into providing incorrect product recommendations when exposed to adversarial pages.
We evaluate four OpenAI models (gpt-4.1-mini, gpt-4.1, gpt-5-nano, gpt-5-mini) across 30 comparison questions spanning 10 product categories, comparing responses between baseline (truthful) and adversarial (injected) conditions. Our results reveal significant variation: gpt-4.1-mini showed 45.5% deception rate, while gpt-4.1 demonstrated complete resistance. Even frontier gpt-5 models exhibited non-zero deception rates (3.3–7.1%), confirming that adversarial injection remains effective against current models.
These findings underscore the need for robust defenses before deploying LLMs in high-stakes recommendation contexts.
Read More
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SycophantSee - Activation-based diagnostics for prompt engineering: monitoring sycophancy at prompt and generation time
Activation monitoring reveals that prompt framing affects a model's internal state before generation begins.
Read More

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