🏠 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

Decision Tree

Supervised predictive model that uses a tree-like structure to model decisions and their possible consequences through a series of tests on data features.

📖
istilah

Root Node

Starting point of a decision tree that represents the complete set of training data and contains the first split based on the most discriminative feature.

📖
istilah

Internal Node

Intermediate node in a decision tree that represents a test on a specific feature and divides the data into homogeneous subsets.

📖
istilah

Leaf

Terminal node of a decision tree that represents a final decision or class prediction, with no further possible splitting.

📖
istilah

Splitting Criterion

Quantitative method used to evaluate the quality of a split in a decision tree, aiming to maximize the homogeneity of the resulting subsets.

📖
istilah

Entropy

Mathematical measure of disorder or uncertainty in a dataset, used to quantify the impurity of a node in decision trees.

📖
istilah

Information Gain

Metric that measures the entropy reduction obtained by splitting a node according to a specific feature, used to select the best split.

📖
istilah

Gini Index

Impurity measure ranging between 0 and 1, calculating the probability that a randomly chosen element is incorrectly classified, an alternative to entropy in decision trees.

📖
istilah

Pruning

Technique for reducing the complexity of a decision tree by removing branches that provide little predictive power to prevent overfitting.

📖
istilah

Overfitting

Phenomenon where a model learns excessively the details and noise of the training data at the expense of its ability to generalize on new data.

📖
istilah

Tree Depth

Maximum number of splits from the root node to a leaf, a crucial parameter controlling the complexity and bias of the model.

📖
istilah

CART

Classification and Regression Trees algorithm that builds binary trees using the Gini index as a splitting criterion for classification.

📖
istilah

ID3

Pioneering decision tree algorithm using information gain as the splitting criterion, limited to categorical variables and binary splits.

📖
istilah

C4.5

Improvement on the ID3 algorithm that uses the information gain ratio to avoid bias towards features with many values.

📖
istilah

Target Variable

Variable to be predicted in a supervised learning problem, represented by the terminal leaves of the decision tree.

📖
istilah

Decision Rule

Logical set of IF-THEN conditions extracted from a path in the decision tree, allowing for the interpretation and explanation of the model's predictions.

📖
istilah

Variable Importance

Quantitative measure of each predictive feature's contribution to improving the purity of splits throughout the tree.

📖
istilah

Complexity Cost

Pruning parameter that penalizes tree size, balancing data fit and model simplicity to optimize generalization.

🔍

Tidak ada hasil ditemukan