🏠 Beranda
Benchmark
📊 Semua Benchmark 🦖 Dinosaurus v1 🦖 Dinosaurus v2 ✅ Aplikasi To-Do List 🎨 Halaman Bebas Kreatif 🎯 FSACB - Showcase Utama 🌍 Benchmark Terjemahan
Model
🏆 Top 10 Model 🆓 Model Gratis 📋 Semua Model ⚙️ Kilo Code
Sumber Daya
💬 Perpustakaan Prompt 📖 Glosarium AI 🔗 Tautan Berguna

Glosarium AI

Kamus lengkap Kecerdasan Buatan

162
kategori
2.032
subkategori
23.060
istilah
📖
istilah

M1 Model

First semi-supervised model using a VAE for unlabeled data and a separate classifier for labeled data, optimized independently.

📖
istilah

M2 Model

Improved architecture where the label is integrated as a conditional latent variable, enabling controlled data generation and unified classification.

📖
istilah

Joint Optimization

Strategy for simultaneous optimization of the encoder, decoder, and classifier using both labeled and unlabeled data.

📖
istilah

Latent Variable Supervision

Technique where labels provide direct supervision on the latent space to guide the learning of discriminative representations.

📖
istilah

Hybrid Learning Objective

Loss function combining VAE reconstruction, KL regularization, and classification loss, weighted according to data type.

📖
istilah

Classifier Head

Classification module attached to the VAE encoder that predicts labels from the latent representation, trained on labeled data.

📖
istilah

Semi-supervised ELBO

Variant of the evidence lower bound adapted for partially labeled data incorporating classification terms.

📖
istilah

Representation Disentanglement

Property where the latent space naturally separates semantic variation factors from style factors, facilitated by partial supervision.

📖
istilah

Teacher-student VAE

Architecture where a teacher VAE supervises a student VAE to improve the stability of semi-supervised learning.

📖
istilah

Variational Semi-supervised Learning

Paradigm combining variational inference with partially supervised data for unified probabilistic modeling.

📖
istilah

Latent Classifier

Classifier operating directly in the VAE latent space, leveraging learned representations for better generalization.

📖
istilah

Auxiliary Task Learning

Multi-task learning where reconstruction serves as an auxiliary task to improve the main classification performance.

🔍

Tidak ada hasil ditemukan