#2 | Veridical Data Science: The Practice of Responsible Data Analysis and Decision Making | 5 |
#3 | | 5 |
#4 | Supervised Machine Learning for Science: How to stop worrying and love your black box - Christoph Molnar
- Timo Freiesleben
| 4 |
#5 | Statistical Rethinking: A Bayesian Course with Examples in R and Stan | 0 |
#6 | INFORMATION THEORY, INFERENCE, AND LEARNING ALGORITHMS. | 0 |
#7 | | 4 |
#8 | Foundations of Info-Metrics: Modeling, Inference, and Imperfect Information | 4 |
#9 | Advances in Info-Metrics: Information and Information Processing across Disciplines | 4 |
#10 | Regression and Other Stories | 0 |
#11 | Bayesian Data Analysis - Andrew Gelman
- John B. Carlin
- Hal S. Stern
- Donald B. Rubin
| 0 |
#12 | A First Course in Causal Inference | 4 |
#13 | Causality Causality: Models, Reasoning and Inference | 5 |
#14 | Causal Inference and Discovery in Python: Unlock the secrets of modern causal machine learning with DoWhy, EconML, PyTorch and more | 0 |
#15 | Bernoulli's Fallacy: Statistical Illogic and the Crisis of Modern Science | 4 |
#16 | New Foundations for Information Theory: Logical Entropy and Shannon Entropy | 5 |
#17 | Probability Theory: The Logic of Science | 0 |
#18 | The Simple and Infinite Joy of Mathematical Statistics | 4 |
#19 | Modeling Mindsets: The Many Cultures Of Learning From Data | 4 |