Case Studies And Causal Inference

Case Studies and Causal Inference: An Integrative Framework  eBooks & eLearning

Posted by ChrisRedfield at July 18, 2015
Case Studies and Causal Inference: An Integrative Framework

Ingo Rohlfing - Case Studies and Causal Inference: An Integrative Framework
Published: 2012-10-30 | ISBN: 0230240704 | PDF | 272 pages | 2.53 MB

Case Studies and Causal Inference: An Integrative Framework  eBooks & eLearning

Posted by insetes at April 20, 2022
Case Studies and Causal Inference: An Integrative Framework

Case Studies and Causal Inference: An Integrative Framework By Ingo Rohlfing
2012 | 272 Pages | ISBN: 0230240704 | PDF | 3 MB

Multimethod Research, Causal Mechanisms, and Case Studies: An Integrated Approach  eBooks & eLearning

Posted by arundhati at Sept. 12, 2017
Multimethod Research, Causal Mechanisms, and Case Studies: An Integrated Approach

Gary Goertz, "Multimethod Research, Causal Mechanisms, and Case Studies: An Integrated Approach"
2017 | ISBN-10: 0691174113, 0691174121 | 312 pages | PDF, EPUB | 1,5 + 4 MB
Causal Inference in R: Decipher complex relationships with advanced R techniques for data-driven decision-making

Causal Inference in R: Decipher complex relationships with advanced R techniques for data-driven decision-making
English | 2024 | ISBN: 1837639027 | 382 pages | EPUB (True) | 9.84 MB
Causal Inference in R: Decipher complex relationships with advanced R techniques for data-driven decision-making

Causal Inference in R: Decipher complex relationships with advanced R techniques for data-driven decision-making by Subhajit Das
English | November 29, 2024 | ISBN: 1837639027 | 382 pages | PDF | 4.02 Mb
Causal Inference in R: Decipher complex relationships with advanced R techniques for data-driven decision-making

Causal Inference in R: Decipher complex relationships with advanced R techniques for data-driven decision-making by Subhajit Das
English | November 29, 2024 | ISBN: 1837639027 | 382 pages | EPUB | 10 Mb
Causal Inference in R: Decipher complex relationships with advanced R techniques for data-driven decision-making

Causal Inference in R: Decipher complex relationships with advanced R techniques for data-driven decision-making by Subhajit Das
English | November 29th, 2024 | ISBN: 1837639027 | 382 pages | True PDF | 4.02 MB

Decipher complex relationships with advanced R techniques for data-driven decision-making. Instant delivery. Top rated Data products.

Targeted Learning: Causal Inference for Observational and Experimental Data  eBooks & eLearning

Posted by AvaxGenius at Feb. 10, 2020
Targeted Learning: Causal Inference for Observational and Experimental Data

Targeted Learning: Causal Inference for Observational and Experimental Data by Mark J. van der Laan
English | PDF | 2011 | 675 Pages | ISBN : 1441997814 | 6 MB

The statistics profession is at a unique point in history. The need for valid statistical tools is greater than ever; data sets are massive, often measuring hundreds of thousands of measurements for a single subject. The field is ready to move towards clear objective benchmarks under which tools can be evaluated. Targeted learning allows (1) the full generalization and utilization of cross-validation as an estimator selection tool so that the subjective choices made by humans are now made by the machine, and (2) targeting the fitting of the probability distribution of the data toward the target parameter representing the scientific question of interest.
Causal Inference in R: Decipher complex relationships with advanced R techniques for data-driven decision-making

Subhajit Das, "Causal Inference in R: Decipher complex relationships with advanced R techniques for data-driven decision-making"
English | ISBN: 1837639027 | 2024 | EPUB | 382 pages | 6 MB

Bayesian Nonparametrics for Causal Inference and Missing Data  eBooks & eLearning

Posted by GFX_MAN at July 5, 2023
Bayesian Nonparametrics for Causal Inference and Missing Data

Bayesian Nonparametrics for Causal Inference and Missing Data
English | 2023 | ISBN: 9780429324222 | 262 pages | PDF | 5.2 MB

Bayesian Nonparametrics for Causal Inference and Missing Data provides an overview of flexible Bayesian nonparametric (BNP) methods for modeling joint or conditional distributions and functional relationships, and their interplay with causal inference and missing data. This book emphasizes the importance of making untestable assumptions to identify estimands of interest, such as missing at random assumption for missing data and unconfoundedness for causal inference in observational studies. Unlike parametric methods, the BNP approach can account for possible violations of assumptions and minimize concerns about model misspecification. The overall strategy is to first specify BNP models for observed data and then to specify additional uncheckable assumptions to identify estimands of interest.