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model hallucinations

The phenomenon of generating false or factually incorrect data represents one of the most profound challenges in working with neural network architectures. In this collection, we examine «hallucinations» not merely as a software glitch, but as a subject for multidisciplinary analysis. The materials focus on the mechanisms behind these distortions: from the scarcity of high-quality training datasets to the specifics of probabilistic token prediction.

NeuroBlog

What Happens When a Neural Network 'Gets Tired'?

Artificial intelligence AI Emotions

What happens to an artificial intelligence when it becomes overloaded, contradictory, and can no longer cope – and why is it so frighteningly similar to us?

Helen Chang Apr 30, 2026

Researchers tested how resilient visual language models are to misleading geographical cues – and the results were quite telling.

Capital Onewww.capitalone.com Mar 17, 2026

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