Keynote: The Mathematics of Causal Inference: with Reflections on Machine Learning
The development of graphical models and the logic of counterfactuals have had a marked effect on the way scientists treat problems involving cause-effect relationships. Practical problems requiring causal information, which long were regarded as either metaphysical or unmanageable can now be solved using elementary mathematics. Moreover, problems that were thought to be purely statistical, are beginning to benefit from analyzing their causal roots.
Видео Keynote: The Mathematics of Causal Inference: with Reflections on Machine Learning канала Microsoft Research
Видео Keynote: The Mathematics of Causal Inference: with Reflections on Machine Learning канала Microsoft Research
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