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scaledsystems

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Semantic Fidelity: A Glossary for Meaning Drift in Recursive AI Systems [pdf]

github.com
2 points·by scaledsystems·bulan lalu·0 comments

Cognitive Drift and Co-Cognition: How AI Reshapes Human Thought [pdf]

ia801602.us.archive.org
3 points·by scaledsystems·2 bulan yang lalu·1 comments

Language Is Cognitive Exhaust: How AI Reconstructs Thought from Text [pdf]

dn720908.ca.archive.org
3 points·by scaledsystems·2 bulan yang lalu·0 comments

Model Drift in AI Systems: A Framework for Detection, Auditing, and Mitigation [pdf]

ia802900.us.archive.org
3 points·by scaledsystems·2 bulan yang lalu·0 comments

Why do LLM outputs get worse even when metrics stay stable? [pdf]

huggingface.co
4 points·by scaledsystems·2 bulan yang lalu·0 comments

Why Retrieval-Augmented Generation Still Gets Meaning Wrong [pdf]

github.com
1 points·by scaledsystems·3 bulan yang lalu·0 comments

Why do language models feel worse even as benchmarks improve? [pdf]

huggingface.co
2 points·by scaledsystems·3 bulan yang lalu·0 comments

The Compression Paradox in AI: Meaning Breaks Before Models Hallucinate

figshare.com
3 points·by scaledsystems·3 bulan yang lalu·0 comments

[untitled]

1 points·by scaledsystems·5 bulan yang lalu·0 comments

The Failure Mode That Lets AI Keep Going Without Ever Fixing Itself

figshare.com
1 points·by scaledsystems·5 bulan yang lalu·1 comments

comments

scaledsystems
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scaledsystems
·2 bulan yang lalu·discuss
This paper defines Cognitive Drift and Co-Cognition as a framework for understanding how AI-mediated reasoning changes human thought. It focuses on what happens when cognition becomes distributed across people, prompts, and outputs. The paper gives language for patterns like AI dependency, externalized memory, recursive thinking, and the feeling that thinking with AI is different from simply using a tool.
scaledsystems
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scaledsystems
·2 bulan yang lalu·discuss
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scaledsystems
·2 bulan yang lalu·discuss
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scaledsystems
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scaledsystems
·3 bulan yang lalu·discuss
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scaledsystems
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scaledsystems
·5 bulan yang lalu·discuss
Modern systems increasingly remain operational while producing outcomes that feel hollow or disconnected from reality. This paper proposes Reality Drift: a structural failure mode where representations, metrics, and models drift away from reality faster than corrective constraints can bind them. The result is systems that continue functioning while losing the ability to self-correct.
scaledsystems
·5 bulan yang lalu·discuss
Large language models can keep producing confident, well-structured answers even when they’re wrong. Because mistakes don’t slow them down or force revision, errors tend to accumulate quietly instead of triggering correction. This piece explains why that happens and why fluency alone is a weak indicator of alignment.