🏠 Home
Prestatietests
📊 Alle benchmarks 🦖 Dinosaur v1 🦖 Dinosaur v2 ✅ To-Do List applicaties 🎨 Creatieve vrije pagina's 🎯 FSACB - Ultieme showcase 🌍 Vertaalbenchmark
Modellen
🏆 Top 10 modellen 🆓 Gratis modellen 📋 Alle modellen ⚙️ Kilo Code
Bronnen
💬 Promptbibliotheek 📖 AI-woordenlijst 🔗 Nuttige links

AI-woordenlijst

Het complete woordenboek van kunstmatige intelligentie

162
categorieën
2.032
subcategorieën
23.060
termen
📖
termen

Model-Agnostic Meta-Learning (MAML)

Meta-learning algorithm that optimizes the initial parameters of a model to enable rapid adaptation with few gradient steps on new tasks.

📖
termen

Task Distribution

Probabilistic distribution defining the set of tasks on which the agent meta-learns, essential for generalization to new similar tasks.

📖
termen

Inner Loop Optimization

Process of rapid adaptation of model parameters on a specific task using a few gradient steps during meta-learning.

📖
termen

Outer Loop Optimization

Update of meta-parameters by aggregating gradients from multiple tasks to improve the overall adaptation capability of the model.

📖
termen

Task Embedding

Compact vector representation of a task learned by the meta-learner to facilitate quick recognition and adaptation to similar tasks.

📖
termen

Meta-Gradient

Gradient calculated through the inner optimization process to update the model's meta-parameters in meta-learning algorithms.

📖
termen

Fast Adaptation

Goal of meta-learning that allows an agent to achieve optimal performance on a new task with minimum interactions.

📖
termen

Meta-Training

Training phase where the agent learns on a distribution of tasks to develop general adaptation capabilities.

📖
termen

Meta-Testing

Evaluation phase where the agent is tested on novel tasks to measure its generalization and rapid adaptation capabilities.

📖
termen

Episode-based Meta-RL

Meta-RL approach where learning is structured in episodes containing training and testing phases for each task.

📖
termen

Hierarchical Meta-Learning

Extension of meta-learning where meta-parameters are organized in multiple hierarchical levels for progressive adaptation to tasks.

📖
termen

Meta-Policy

Learned policy that generates or adapts other task-specific policies, rather than directly controlling the agent.

📖
termen

Contextual Meta-Learning

Variant of meta-learning where the context or task identity is explicitly provided to guide rapid adaptation.

📖
termen

Online Meta-Learning

Approach where meta-learning occurs continuously during interaction with the environment, without clear separation of meta-training phases.

📖
termen

Meta-Exploration

Exploration strategy optimized to quickly discover the characteristics of a new task by leveraging meta-learned knowledge.

📖
termen

Task Uncertainty

Uncertainty about the exact nature of a new task that meta-learning agents must handle to effectively adapt their behavior.

📖
termen

Meta-Regularization

Regularization techniques applied during meta-learning to improve robustness and generalization to new tasks.

📖
termen

Multi-Task Meta-Learning

Extension of meta-learning where the agent must simultaneously adapt to multiple related tasks by effectively sharing knowledge.

🔍

Geen resultaten gevonden