Logit bias

Logit bias refers to the intentional adjustment of the logit values in machine learning models to influence prediction probabilities. It is commonly used in natural language processing and classification tasks to control or steer model outputs.

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Hyper-deep ensembles

Hyper-deep ensembles are advanced machine learning models that combine multiple deep neural networks to improve predictive performance, robustness, and uncertainty estimation. They extend traditional ensemble methods by leveraging very large or highly complex models in a coordinated manner.

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