🏠 Trang chủ
Benchmark
📊 Tất cả benchmark 🦖 Khủng long v1 🦖 Khủng long v2 ✅ Ứng dụng To-Do List 🎨 Trang tự do sáng tạo 🎯 FSACB - Trình diễn cuối cùng 🌍 Benchmark dịch thuật
Mô hình
🏆 Top 10 mô hình 🆓 Mô hình miễn phí 📋 Tất cả mô hình ⚙️ Kilo Code
Tài nguyên
💬 Thư viện prompt 📖 Thuật ngữ AI 🔗 Liên kết hữu ích

Thuật ngữ AI

Từ điển đầy đủ về Trí tuệ nhân tạo

162
danh mục
2.032
danh mục con
23.060
thuật ngữ
📖
thuật ngữ

MAML (Model-Agnostic Meta-Learning)

Meta-learning algorithm that learns initial model parameters enabling fast adaptation to new tasks with few examples through gradient optimization.

📖
thuật ngữ

Meta-LSTM

LSTM variant that meta-learns its own update parameters, enabling dynamic adaptation of model weights based on task-specific characteristics.

📖
thuật ngữ

SNAIL (Simple Neural Attentive Learner)

Hybrid architecture combining temporal convolutions and attention mechanisms to learn from example sequences and rapidly adapt to new tasks.

📖
thuật ngữ

Meta-SGD

Extension of MAML that learns not only initial parameters but also parameter-specific learning rates for more flexible adaptation to new tasks.

📖
thuật ngữ

Reptile

Simplified meta-learning algorithm that interpolates between initial weights and weights after a few optimization steps on the current task.

📖
thuật ngữ

TADAM (Task-Dependent Adaptive Metric)

Method combining prototypical networks with a task-aware attention module to dynamically adapt the embedding space based on task characteristics.

📖
thuật ngữ

LEAP (Learning to Evaluate)

Framework that meta-learns an evaluation function to compare models across different tasks, directly optimizing meta-generalization performance rather than individual task losses.

📖
thuật ngữ

L2L (Learning to Learn)

Paradigm where a neural meta-optimizer learns to update the parameters of another network, discovering problem-specific adaptive optimization algorithms.

📖
thuật ngữ

R2D2 (Recursive Reward Decomposition)

Meta-reinforcement learning method using a hierarchical decomposition of rewards to learn reusable policies across different tasks.

📖
thuật ngữ

Meta-Transfer Learning

Approach combining meta-learning and transfer learning to learn transferable representations while preserving the ability to quickly adapt to new data distributions.

📖
thuật ngữ

Meta-RL (Meta-Reinforcement Learning)

Field where the agent learns to learn fast adaptation policies for new reinforcement learning tasks by exploiting regularities across environments.

🔍

Không tìm thấy kết quả