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Krikamol Muandet: A Measure-Theoretic Axiomatisation of Causality

- Speaker: Krikamol Muandet (CISPA)
- Discussant: Ricardo Silva (UCL)
- Q&A moderator: Junhyung Park
- Title: A Measure-Theoretic Axiomatisation of Causality
- Abstract: Causality is a central concept in a wide range of research areas, yet there is still no universally agreed axiomatisation of causality. We view causality both as an extension of probability theory and as a study of \textit{what happens when one intervenes on a system}, and argue in favour of taking Kolmogorov's measure-theoretic axiomatisation of probability as the starting point towards an axiomatisation of causality. To that end, we propose the notion of a \textit{causal space}, consisting of a probability space along with a collection of transition probability kernels, called \textit{causal kernels}, that encode the causal information of the space. Our proposed framework is not only rigorously grounded in measure theory, but it also sheds light on long-standing limitations of existing frameworks including, for example, cycles, latent variables and stochastic processes.

Видео Krikamol Muandet: A Measure-Theoretic Axiomatisation of Causality канала Online Causal Inference Seminar
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27 марта 2024 г. 10:49:49
00:57:58
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