ScholarGate
Msaidizi

Linganisha mbinu

Pitia mbinu ulizochagua bega kwa bega; safu zinazotofautiana zinaangaziwa.

Athari za Matibabu Zisizo Fanana (CATE / Meta-Wajifunzi)×Algoriti za ugunduzi wa kisababishi (PC, FCI, LiNGAM)×
NyanjaUhitimisho wa KisababishiUhitimisho wa Kisababishi
FamiliaRegression modelRegression model
Mwaka wa asili20182000
MwanzilishiWager & Athey (causal forest); Künzel et al. (meta-learners)Spirtes, Glymour & Scheines (PC/FCI); Shimizu et al. (LiNGAM)
AinaCausal machine-learning frameworkCausal structure learning
Chanzo asiliaWager, S. & Athey, S. (2018). Estimation and Inference of Heterogeneous Treatment Effects using Random Forests. Journal of the American Statistical Association. DOI ↗Spirtes, P., Glymour, C., & Scheines, R. (2000). Causation, Prediction, and Search (2nd ed.). MIT Press. ISBN: 978-0262194402
Majina mbadalaconditional average treatment effect, CATE, meta-learners, causal forestPC algorithm, FCI algorithm, LiNGAM, causal structure learning
Zinazohusiana55
MuhtasariHeterogeneous Treatment Effects is a machine-learning framework that estimates how a treatment effect varies across individuals — the conditional average treatment effect (CATE). It bundles meta-learner strategies such as the T-Learner, S-Learner, X-Learner and R-Learner alongside the causal forest of Wager and Athey (2018) and Künzel et al. (2019).Causal discovery is a family of algorithms that automatically learn a directed acyclic graph (DAG) describing causal structure directly from observational data. The constraint-based PC and FCI algorithms were developed by Spirtes, Glymour and Scheines (2000), while the LiNGAM model of Shimizu et al. (2006) exploits linear non-Gaussian structure to orient edges.
ScholarGateSeti ya data
  1. v1
  2. 2 Vyanzo
  3. PUBLISHED
  1. v1
  2. 2 Vyanzo
  3. PUBLISHED

Nenda kwenye utafutaji Pakua slaidi

ScholarGateLinganisha mbinu: Heterogeneous Treatment Effects · Causal Discovery Algorithms. Imepatikana 2026-06-19 kutoka https://scholargate.app/sw/compare