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Artykuły w czasopismach na temat "Debiased machine learning"
Ahrens, Achim, Christian B. Hansen, Mark E. Schaffer i Thomas Wiemann. "ddml: Double/debiased machine learning in Stata". Stata Journal: Promoting communications on statistics and Stata 24, nr 1 (marzec 2024): 3–45. http://dx.doi.org/10.1177/1536867x241233641.
Pełny tekst źródłaChernozhukov, Victor, Denis Chetverikov, Mert Demirer, Esther Duflo, Christian Hansen i Whitney Newey. "Double/Debiased/Neyman Machine Learning of Treatment Effects". American Economic Review 107, nr 5 (1.05.2017): 261–65. http://dx.doi.org/10.1257/aer.p20171038.
Pełny tekst źródłaChen, Jau-er, Chien-Hsun Huang i Jia-Jyun Tien. "Debiased/Double Machine Learning for Instrumental Variable Quantile Regressions". Econometrics 9, nr 2 (2.04.2021): 15. http://dx.doi.org/10.3390/econometrics9020015.
Pełny tekst źródłaChernozhukov, Victor, Whitney K. Newey i Rahul Singh. "Automatic Debiased Machine Learning of Causal and Structural Effects". Econometrica 90, nr 3 (2022): 967–1027. http://dx.doi.org/10.3982/ecta18515.
Pełny tekst źródłaLiu, Molei, Yi Zhang i Doudou Zhou. "Double/debiased machine learning for logistic partially linear model". Econometrics Journal 24, nr 3 (11.06.2021): 559–88. http://dx.doi.org/10.1093/ectj/utab019.
Pełny tekst źródłaChernozhukov, Victor, Denis Chetverikov, Mert Demirer, Esther Duflo, Christian Hansen, Whitney Newey i James Robins. "Double/debiased machine learning for treatment and structural parameters". Econometrics Journal 21, nr 1 (16.01.2018): C1—C68. http://dx.doi.org/10.1111/ectj.12097.
Pełny tekst źródłaChang, Neng-Chieh. "Double/debiased machine learning for difference-in-differences models". Econometrics Journal 23, nr 2 (4.02.2020): 177–91. http://dx.doi.org/10.1093/ectj/utaa001.
Pełny tekst źródłaFu, Runshan, Yan Huang i Param Vir Singh. "Crowds, Lending, Machine, and Bias". Information Systems Research 32, nr 1 (1.03.2021): 72–92. http://dx.doi.org/10.1287/isre.2020.0990.
Pełny tekst źródłaJung, Yonghan, Jin Tian i Elias Bareinboim. "Estimating Identifiable Causal Effects through Double Machine Learning". Proceedings of the AAAI Conference on Artificial Intelligence 35, nr 13 (18.05.2021): 12113–22. http://dx.doi.org/10.1609/aaai.v35i13.17438.
Pełny tekst źródłaTsai, Yun-Da, Cayon Liow, Yin Sheng Siang i Shou-De Lin. "Toward More Generalized Malicious URL Detection Models". Proceedings of the AAAI Conference on Artificial Intelligence 38, nr 19 (24.03.2024): 21628–36. http://dx.doi.org/10.1609/aaai.v38i19.30161.
Pełny tekst źródłaRozprawy doktorskie na temat "Debiased machine learning"
Zhao, Pan. "Topics in causal inférence and policy learning with applications to precision medicine". Electronic Thesis or Diss., Université de Montpellier (2022-....), 2024. http://www.theses.fr/2024UMONS029.
Pełny tekst źródłaCausality is a fundamental concept in science and philosophy, and with the increasing complexity of data collection and structure, statistics plays a pivotal role in inferring causes and effects. This thesis delves into advanced causal inference methods, with a focus on policy learning, instrumental variables (IV), and difference-in-differences (DiD) approaches.The IV and DiD methods are critical tools widely used by researchers in fields like epidemiology, medicine, biostatistics, econometrics, and quantitative social sciences. However, these methods often face challenges due to restrictive assumptions, such as the IV's requirement to have no direct effect on the outcome other than through the treatment, and the parallel trends assumption in DiD, which may be violated in the presence of unmeasured confounding.In that context, this thesis introduces an innovative instrumented DiD approach to policy learning, which combines these two natural experiments to relax some of the key assumptions of conventional IV and DiD methods. To the best of our knowledge, the thesis presents the first comprehensive study of policy learning under the DiD setting. The direct policy search approach is proposed to learn optimal policies, based on the conditional average treatment effect estimators using instrumented DiD. Novel identification results for optimal policies under unmeasured confounding are established. Moreover, a range of estimators, including a Wald estimator, inverse probability weighting (IPW) estimators, and semiparametric efficient and multiply robust estimators, are introduced. Theoretical guarantees for these multiply robust policy learning approaches are provided, including the cubic rate of convergence for parametric policies and valid statistical inference with flexible machine learning algorithms for nuisance parameter estimation. These methods are further extended to the panel data setup.The majority of causal inference methods in the literature heavily depend on three standard causal assumptions to identify causal effects and optimal policies. While there has been progress in relaxing the consistency and unconfoundedness assumptions, addressing the violations of the positivity assumption has seen limited advancements.In that context, this thesis presents a novel policy learning framework that does not rely on the positivity assumption, instead focusing on dynamic and stochastic policies that are practical for real-world applications. Incremental propensity score policies, which adjust propensity scores by individualized parameters, are proposed, requiring only the consistency and unconfoundedness assumptions. This approach enhances the concept of incremental intervention effects, adapting it to individualized treatment policy contexts, and employs semiparametric theory to develop efficient influence functions and debiased machine learning estimators. Methods to optimize policy by maximizing the value function under specific constraints are also introduced.Additionally, the optimal individualized treatment regime (ITR) learned from a source population may not generalize well to a target population due to covariate shifts. A transfer learning framework is proposed for ITR estimation in heterogeneous populations with right-censored survival data, which is common in clinical studies and motivated by medical applications. This framework characterizes the efficient influence function (EIF) and proposes a doubly robust estimator for the targeted value function, accommodating a broad class of survival distribution functionals. For a pre-specified class of ITRs, a cubic rate of convergence for the estimated parameter indexing the optimal ITR is established. The use of cross-fitting procedures ensures the consistency and asymptotic normality of the proposed optimal value estimator, even with flexible machine learning methods for nuisance parameter estimation
Tien, Jia-Jyun, i 田家駿. "Debiased Machine Learning for Instrumental Variable Quantile Regressions". Thesis, 2019. http://ndltd.ncl.edu.tw/handle/94n2s2.
Pełny tekst źródła國立臺灣大學
經濟學研究所
107
The aim of this paper is to investigate estimation and inference on a low-dimensional causal parameter in the presence of high-dimensional controls in an instrumental variable quantile regression. The estimation and inference are based on the Neyman-type orthogonal moment conditions, that are relatively insensitive to the estimation of the nuisance parameters. The Monte Carlo experiments show that the econometric procedure performs well. We also apply the procedure to reinvestigate two empirical studies:the quantile treatment effect of 401(k) participation on accumulated wealth, and the distributional effect of job-training program participation on trainee earnings.
Części książek na temat "Debiased machine learning"
Zhang, Yihong, Lina Yao i Takahiro Hara. "Integrating Social Environment in Machine Learning Model for Debiased Recommendation". W Lecture Notes of the Institute for Computer Sciences, Social Informatics and Telecommunications Engineering, 219–30. Cham: Springer Nature Switzerland, 2024. http://dx.doi.org/10.1007/978-3-031-63992-0_14.
Pełny tekst źródłaYang, Jingran, Lingfeng Zhang i Min Zhang. "Making Fair Classification via Correlation Alignment". W Frontiers in Artificial Intelligence and Applications. IOS Press, 2024. http://dx.doi.org/10.3233/faia240570.
Pełny tekst źródłaZhang, Bohui, Albert Meroño Peñuela i Elena Simperl. "Towards Explainable Automatic Knowledge Graph Construction with Human-in-the-Loop". W Frontiers in Artificial Intelligence and Applications. IOS Press, 2023. http://dx.doi.org/10.3233/faia230091.
Pełny tekst źródłaStreszczenia konferencji na temat "Debiased machine learning"
Guo, Congying, Yang Yan i Qian Wei. "Popularity Debiased Entity Linking by Adversarial Attack". W ICMLSC 2022: 2022 The 6th International Conference on Machine Learning and Soft Computing. New York, NY, USA: ACM, 2022. http://dx.doi.org/10.1145/3523150.3523162.
Pełny tekst źródłaBajons, Robert. "Evaluating Player Performances in Football: A Debiased Machine Learning Approach". W ICoMS 2023: 2023 6th International Conference on Mathematics and Statistics. New York, NY, USA: ACM, 2023. http://dx.doi.org/10.1145/3613347.3613368.
Pełny tekst źródłaZhang, Wencan, Mariella Dimiccoli i Brian Y. Lim. "Debiased-CAM to mitigate image perturbations with faithful visual explanations of machine learning". W CHI '22: CHI Conference on Human Factors in Computing Systems. New York, NY, USA: ACM, 2022. http://dx.doi.org/10.1145/3491102.3517522.
Pełny tekst źródłaRaporty organizacyjne na temat "Debiased machine learning"
Chernozhukov, Victor, Denis Chetverikov, Mert Demirer, Esther Duflo, Christian Hansen, Whitney Newey i James Robins. Double/Debiased Machine Learning for Treatment and Structural Parameters. Cambridge, MA: National Bureau of Economic Research, czerwiec 2017. http://dx.doi.org/10.3386/w23564.
Pełny tekst źródłaNewey, Whitney K., Christian Hansen, Esther Duflo, James Robins, Victor Chernozhukov, Mert Demirer i Denis Chetverikov. Double/debiased machine learning for treatment and structural parameters. The IFS, czerwiec 2017. http://dx.doi.org/10.1920/wp.cem.2017.2817.
Pełny tekst źródłaLee, Ying-Ying, i Kyle Colangelo. Double debiased machine learning nonparametric inference with continuous treatments. The IFS, październik 2019. http://dx.doi.org/10.1920/wp.cem.2019.5419.
Pełny tekst źródłaLee, Ying-Ying, i Kyle Colangelo. Double debiased machine learning nonparametric inference with continuous treatments. The IFS, grudzień 2019. http://dx.doi.org/10.1920/wp.cem.2019.7219.
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