🏠 Home
Benchmark
📊 Tutti i benchmark 🦖 Dinosauro v1 🦖 Dinosauro v2 ✅ App To-Do List 🎨 Pagine libere creative 🎯 FSACB - Ultimate Showcase 🌍 Benchmark traduzione
Modelli
🏆 Top 10 modelli 🆓 Modelli gratuiti 📋 Tutti i modelli ⚙️ Kilo Code
Risorse
💬 Libreria di prompt 📖 Glossario IA 🔗 Link utili

Glossario IA

Il dizionario completo dell'Intelligenza Artificiale

162
categorie
2.032
sottocategorie
23.060
termini
📖
termini

Graph Convolutional Network (GCN)

Neural network architecture that applies convolution operations on graph data structures by aggregating features from neighboring nodes to learn node representations.

📖
termini

Neighborhood Aggregation

Process of combining features from neighboring nodes to update a target node's representation, typically through mean, sum, or max operations.

📖
termini

Spectral Methods

Approach based on graph spectral theory using eigenvalue decomposition of the Laplacian to define convolution operations on graphs.

📖
termini

Spatial Methods

Direct approach applying convolution operations in node space by physically aggregating neighbor features without spectral transformation.

📖
termini

Graph Laplacian

Matrix representing the structure of a graph, defined as the difference between the degree matrix and the adjacency matrix, fundamental for spectral methods.

📖
termini

Feature Propagation

Mechanism by which node features propagate through the graph via successive convolution layers, capturing neighborhood information at different scales.

📖
termini

Semi-Supervised Learning

Learning paradigm where GCNs use both labeled and unlabeled data to improve classification performance on graphs.

📖
termini

Node Classification

Fundamental task where GCNs predict node labels using the graph structure and features of neighboring nodes.

📖
termini

Link Prediction

Application of GCNs to predict the existence of links between node pairs by learning representations that capture connection probability.

📖
termini

Graph Classification

Classification task at the whole graph level where a GCN learns a global representation of the graph to predict a label for the entire structure.

📖
termini

Graph Attention Network (GAT)

Variant of GCNs incorporating attention mechanisms to dynamically compute edge importance weights during feature aggregation.

📖
termini

Over-smoothing

Phenomenon where node representations become indistinguishable after multiple convolution layers, losing their individual discriminability.

📖
termini

Graph Sampling

Technique for sampling subgraphs or neighborhoods to efficiently train GCNs on large-scale graphs.

📖
termini

Graph Pooling

Hierarchical reduction operation that combines or eliminates nodes to create coarser graph representations for graph-level classification.

📖
termini

Heterogeneous GCN

Extension of GCNs designed to handle graphs containing multiple types of nodes and/or edges with type-specific aggregation mechanisms.

📖
termini

Temporal GCN

Variant of GCNs that captures the dynamic evolution of graphs over time by integrating recurrent or temporal mechanisms with graph convolution.

🔍

Nessun risultato trovato