🏠 Ana Sayfa
Benchmarklar
📊 Tüm Benchmarklar 🦖 Dinozor v1 🦖 Dinozor v2 ✅ To-Do List Uygulamaları 🎨 Yaratıcı Serbest Sayfalar 🎯 FSACB - Nihai Gösteri 🌍 Çeviri Benchmarkı
Modeller
🏆 En İyi 10 Model 🆓 Ücretsiz Modeller 📋 Tüm Modeller ⚙️ Kilo Code
Kaynaklar
💬 Prompt Kütüphanesi 📖 YZ Sözlüğü 🔗 Faydalı Bağlantılar

YZ Sözlüğü

Yapay Zekanın tam sözlüğü

162
kategoriler
2.032
alt kategoriler
23.060
terimler
📖
terimler

Multi-Head Self-Attention (MHSA)

Mechanism allowing the model to focus on different parts of the image simultaneously by computing multiple attention matrices in parallel, thus capturing various types of spatial relationships.

📖
terimler

Layer Scale

Regularization technique introduced in deep ViTs where learnable weights are applied to residual outputs to stabilize the training of initial layers.

📖
terimler

Windowed Attention

Attention mechanism restricted to local non-overlapping windows of the image, reducing computational complexity from O(n²) to O(n) where n is the number of patches.

📖
terimler

Shifted Window Attention

Technique where attention windows are shifted between layers to enable cross-window connections, thereby improving the model's ability to model long-range relationships.

📖
terimler

DeiT (Data-efficient Image Transformer)

Variant of ViT trainable with more modest amounts of data through a knowledge distillation strategy where a distillation token is added to learn from a CNN teacher.

📖
terimler

Distillation Token

Additional token in DeiT that learns to mimic the predictions of a teacher model (often a CNN), facilitating knowledge transfer and improving performance with less data.

📖
terimler

Masked Autoencoder (MAE)

Self-supervised approach for ViT where random patches of the image are masked (up to 75%) and the model learns to reconstruct them, revealing surprising learning capabilities.

📖
terimler

Patch Merging

Operation in hierarchical transformers that combines groups of 2x2 adjacent patches to create lower-resolution tokens, thereby increasing depth and receptive field.

📖
terimler

Relative Position Bias

Bias added to attention scores that depends on the relative positions of patches, improving the model's ability to understand spatial relationships without absolute position encoding.

📖
terimler

Hybrid Architecture

Approach combining an initial convolutional network for feature extraction with a transformer for global processing, used in early ViT implementations to reduce data requirements.

📖
terimler

Token Labeling

Training strategy where each patch receives a supervised label instead of a single label per image, forcing the model to learn richer and more localized representations.

🔍

Sonuç bulunamadı