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#56 Causal & Probabilistic Machine Learning, with Robert Osazuwa Ness

Learning Bayesian Statistics

CHAPTER

How to Reason About Recommendations

The author has written a paper on integrating mark off processes with stuctural causa, monelling and abel's counterfactural inference in complex systems. His work is not his most popular but he felt perticularly satisfied once he sumitted it. He says that the style of reasoning we use to reason about regret is lacking from or models because we can't validate them. But if you're trying to do machine learning style papers, there aren't any bench marks for such things as 'what would have happened had i not married shan'

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