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Glossario IA

Il dizionario completo dell'Intelligenza Artificiale

162
categorie
2.032
sottocategorie
23.060
termini
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termini

Continual Meta-Learning

Hybrid approach combining the principles of meta-learning and continual learning to enable models to acquire new skills while retaining previously learned knowledge.

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Meta-Replay Buffer

Adaptive buffer that selectively stores past experiences based on their meta-information to optimize future continual learning.

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Task-Agnostic Continual Learning

Learning scenario where the model must perform on all learned tasks without knowing the current task identity during inference.

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Continual Adaptation

Ability of a meta-learned model to dynamically adapt to new data distributions without complete retraining.

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Memory Synapse

Neuro-inspired mechanism allowing neural connections to selectively retain relevant information from previous tasks.

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Continual Meta-Optimization

Continuous optimization process of hyperparameters and meta-parameters to maintain optimal balance between stability and plasticity.

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Task Distribution Shift

Gradual or abrupt change in task distribution during continual learning, requiring meta-cognitive adaptation.

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Meta-Continual Learning

Formal framework where meta-learning itself is performed continually, adapting fast learning capabilities over time.

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Lifelong Meta-Learning

Long-term vision of continuous meta-learning aimed at developing systems capable of learning to learn throughout their operational lifecycle.

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Continual Transfer Learning

Sequential transfer of knowledge between tasks where the model learns to effectively generalize learned representations to new contexts.

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Meta-Knowledge Distillation

Process of compressing meta-knowledge acquired during continuous learning into a more compact model without performance loss.

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