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Glossario IA

Il dizionario completo dell'Intelligenza Artificiale

162
categorie
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sottocategorie
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termini
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Continual Meta-Learning

Learning paradigm that combines the principles of meta-learning with the constraints of continual learning to optimize model adaptation to new tasks without forgetting previous knowledge.

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Meta-Gradient Optimization

Technique that uses gradients of gradients to dynamically adjust model optimization parameters during continual learning, thereby improving its adaptation capacity.

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Continual MAML

Extension of Model-Agnostic Meta-Learning specifically designed for continual learning scenarios, where the model learns to adapt quickly to new tasks while preserving performance on old tasks.

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Continual Reptile Algorithm

Variant of the Reptile algorithm adapted for continual learning, using bi-level optimization to maintain an optimal initialization point suited to sequences of successive tasks.

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Episodic Memory Meta-Learning

Architecture that combines episodic memories to store examples from past tasks with meta-learning mechanisms to optimize effective reuse of this knowledge during new tasks.

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Continual Fast Adaptation

Ability of a model to quickly adjust to new data distributions using few examples, while maintaining this competence across a continuous sequence of tasks.

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Continual Meta-Optimizer

Neural network or algorithm that learns to optimize the weights of another model in a continual learning context, adapting itself to changes in task distribution.

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Gradient-Based Continual Meta-Learning

Gradient-based meta-learning approach specifically designed to handle the challenges of continual learning, including mechanisms to avoid catastrophic forgetting.

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Continual Meta-Reinforcement Learning

Framework that applies meta-learning principles to continual reinforcement learning, enabling the agent to learn how to learn effectively in changing environments.

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Continual Meta-Knowledge

Structured storage and organization of meta-learned knowledge by the model, facilitating transfer and adaptation to new tasks in a lifelong learning context.

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Meta-Optimized Transfer Learning

Transfer learning technique where transfer strategies are themselves optimized by meta-learning to maximize effectiveness in continual learning scenarios.

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Meta-Strategies for Catastrophic Forgetting

Set of meta-learned techniques to prevent or mitigate catastrophic forgetting, dynamically adapting regularizations and consolidation mechanisms according to task characteristics.

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Continual Meta-Feature Learning

Process of continual learning of meta-informative features that capture relationships between successive tasks, facilitating rapid adaptation to similar new tasks.

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Continual Meta-Regularization

Regularization mechanism whose parameters are themselves learned by meta-learning to dynamically adapt to knowledge preservation requirements in continual learning.

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Hierarchical Continual Meta-Learning

Multi-level architecture where different levels learn different meta-abstractions, optimizing adaptation to both intra-task and inter-task variations in a continual context.

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Continual Multi-Task Meta-Learning

Approach that simultaneously optimizes performance on multiple tasks while learning meta-knowledge to facilitate rapid acquisition of new tasks in a continuous stream.

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Continual Meta-Representation Learning

Learning of latent representations that are optimized to facilitate rapid adaptation to new tasks while preserving their relevance for accumulated knowledge.

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Continual Meta-Curriculum Learning

Approach where the learning curriculum is itself optimized through meta-learning to maximize the efficiency of skill acquisition in a continual learning context.

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