🏠 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

Weighted Density

Selection method combining model uncertainty measurement with a local density estimate to prioritize samples that are both uncertain and located in dense regions of the feature space.

📖
istilah

Uncertainty Sampling

Active learning strategy that selects samples for which the model exhibits the lowest confidence in its predictions, generally measured by entropy or decision margin.

📖
istilah

Query by Committee

Active learning approach using multiple models forming a committee, where samples causing the most disagreement among committee members are selected for annotation.

📖
istilah

Diversity-Based Sampling

Selection strategy seeking to maximize the diversity of annotated samples to effectively cover the feature space and avoid information redundancy.

📖
istilah

High-Density Points

Samples located in regions of the feature space with high data concentration, considered representative of the underlying data distribution.

📖
istilah

Mutual Information Criterion

Informational utility metric measuring the expected reduction in uncertainty on model parameters after annotating a specific sample.

📖
istilah

Confidence Margin

Difference between the predicted probabilities of the two most likely classes for a sample, used as an uncertainty indicator in active learning strategies.

📖
istilah

Hybrid Selection

Approach combining multiple selection criteria (uncertainty, density, diversity) through weighting or multi-objective optimization to identify the most informative samples.

📖
istilah

Outliers in Active Learning

Atypical or anomalous data points that density-based strategies seek to avoid, as their annotation provides little information about the general structure of the data.

📖
istilah

Kernel Weighting

Technique using kernel functions to estimate local density and weight the importance of samples according to their similarity with their neighbors in the feature space.

📖
istilah

Data Representativeness

Quality of a sample or subset to capture the essential characteristics of the overall data distribution, a key factor in effective sampling strategies.

📖
istilah

Feature Spaces

Multidimensional domain where each dimension represents a feature of the data, used to analyze similarity and density relationships between samples.

📖
istilah

Density-Uncertainty Criterion

Utility function combining a model uncertainty measure with a local density estimate to evaluate the information potential of each unlabeled sample.

📖
istilah

Multi-Objective Optimization

Mathematical framework enabling the simultaneous handling of multiple conflicting objectives such as uncertainty, density, and diversity in active selection strategies.

🔍

Tidak ada hasil ditemukan