Bayesian modeling and related books:
-
The Elements of Statistical Learning: Data Mining, Inference, and Prediction.
-
C.P. Robert: The Bayesian choice (advanced)
-
Gelman, Carlin, Stern, Rubin: Bayesian data analysis (nice easy older book)
-
Congdon: Applied Bayesian modelling; Bayesian statistical modelling (relatively nice books for references)
-
Casella, Robert: Introducing Monte Carlo methods with R (nice book about MCMC)
-
Robert, Casella: Monte Carlo Statistical Methods
-
some parts of Bishop: Pattern recognition and machine learning (very nice book for engineers)
-
Puppy book from Kruschke
Correlation does not imply causation
More online lectures, courses, papers, books, etc. on Causality:
-
Coursera:
-
Powerful Concepts in Social Science playlists, Duke
-
4 lectures on causality by J.Peters (8 h), MIT Statistics and Data Science Center, 2017
-
Causality tutorial by D.Janzing and S.Weichwald (4 h), Conference on Cognitive Computational Neuroscience 2019
-
Course on causality by S.Bauer and B.Schölkopf (3 h), Machine Learning Summer School 2020
-
Course on causality by D.Janzing and B.Schölkopf (3 h), Machine Learning Summer School 2013
-
Causal Structure Learning,Christina Heinze-Deml, Marloes H. Maathuis, Nicolai Meinshausen, 2017
-
JUDEA PEARL, MADELYN GLYMOUR, NICHOLAS P. JEWELL CAUSAL INFERENCE IN STATISTICS: A PRIMER
-
Causality in cognitive neuroscience: concepts, challenges, and distributional robustness
-
Investigating Causal Relations by Econometric Models and Cross-spectral Methods, 1969
-
Fast Greedy Equivalence Search (FGES) Algorithm for Continuous Variables
-
Greedy Fast Causal Inference (GFCI) Algorithm for Continuous Variables
Casual Machine Learning (Papers):
- Causal Decision Trees, Jiuyong Li, Saisai Ma, Thuc Duy Le, Lin Liu and Jixue Liu, 2015
- Discovery of Causal Rules Using Partial Association, 2012
- Causal Inference in Data Science From Prediction to Causation, 2016
Experimental designs for casual learning:
- Matching
- Incident user design
- Active comparator
- Instrumental variables estimation
- Difference-in-differences
- Regression discontinuity design
- Modeling
Resources:
- DGL library
- Survey paper: D Bacciua et all (June 2020) A Gentle Introduction to Deep Learning for Graphs
- Survey paper: Z Wu et all (Dec 2019) A Comprehensive Survey on Graph Neural Networks
- [Series of posts](https://towardsdatascience.com/@michael.bronstein https://arxiv.org/abs/1901.00596)
- "Introduction to Graph Neural Networks" Zhiyuan Liu, Jie Zhou
- Lectures:
- Follow related workshops, they release keynote videos, e.g.: https://www.aminer.cn/dl4g_www2020
- Follow individual researchers, e.g. Jure Leskovec, Petar Veličković - a few lectures around "graph neural networks" online