🏠 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

Directed Acyclic Graph (DAG)

Graphical representation of causal relationships between variables where nodes represent variables and directed edges indicate direct causal influence without possible cycles.

📖
termini

Average Treatment Effect (ATE)

Expected average difference between potential outcomes with and without treatment across the entire population, fundamental measure of causal impact in intervention evaluation.

📖
termini

Mediation Analysis

Causal method decomposing the total effect of a treatment into direct effect and indirect effect through intermediate variables (mediators) to understand mechanisms of action.

📖
termini

Rubin Causal Model

Theoretical framework based on potential outcomes where each unit has counterfactual outcomes for each treatment state, foundation of modern causal inference.

📖
termini

Regression Discontinuity Method

Quasi-experimental design exploiting eligibility thresholds to estimate local causal effects by comparing units just above and below the cutoff point.

📖
termini

Causal Score

Function summarizing the information necessary for confounding bias adjustment, generalization of propensity score including information about causal relationships between variables.

📖
termini

Pearl's Causality

Causality approach based on directed acyclic graphs and do-calculus, allowing formal representation of causal knowledge and counterfactual reasoning.

📖
termini

Conditional Average Treatment Effect (CATE)

Average causal effect conditioned on specific unit characteristics, allowing identification of heterogeneities in treatment effects to personalize interventions.

📖
termini

Front-door criterion

Causal identification strategy using an observable mediator that blocks all paths between treatment and outcome, allowing causal estimation even in the presence of unmeasured confounding.

📖
termini

Randomization test

Experimental validation of causal relationships through random allocation of treatment, systematically eliminating confounding biases and providing the most robust causal evidence.

🔍

Nessun risultato trovato