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Glosarium AI

Kamus lengkap Kecerdasan Buatan

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Causal Deep Learning

Branch of deep learning that integrates principles of causal theory to discover and model cause-and-effect relationships in data, beyond simple correlations.

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Propensity Score Matching

Technique where treated and untreated units are matched based on similar propensity scores to create a pseudo-randomized trial and estimate the causal effect.

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Causal Neural Network

Neural network architecture explicitly designed to incorporate causal constraints or structures, to improve generalization and interpretability of predictions.

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Causal Structure Discovery

Set of algorithms that aim to automatically learn the causal graph (cause-and-effect relationships) from observational data, often based on conditional independence tests.

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Rubin Causality

Approach to causality based on the potential outcomes framework, where each unit has potential outcomes for each treatment state, of which only one is observed.

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Potential Outcomes Model

Formalism where the causal effect is defined as the difference between potential outcomes under treatment and control for the same unit, foundation of Rubin causality.

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Heterogeneous Treatment Effect (HTE)

Variation of the causal effect of an intervention across different subpopulations or individuals, which deep causal models seek to estimate accurately.

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Instrumental Variable (IV)

Variable used to estimate a causal effect in the presence of unmeasured confounding, correlated with the treatment variable but not directly with the outcome, except through the treatment.

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