Up a level |
(2022) Formally Justifying MDL-based Inference of Cause and Effect.
(2021) A Weaker Faithfulness Assumption based on Triple Interactions.
(2021) Estimating Conditional Mutual Information for Discrete-Continuous Mixtures using Multi-Dimensional Adaptive Histograms.
(2021) Discovering Fully Oriented Causal Networks.
(2019) Identifiability of Cause and Effect using Regularized Regression.
(2019) Testing Conditional Independence on Discrete Data using Stochastic Complexity.
(2019) Approximating Algorithmic Conditional Independence for Discrete Data.
(2018) Stochastic Complexity for Testing Conditional Independence on Discrete Data.
(2018) Causal Inference on Multivariate and Mixed Type Data.
(2017) Telling Cause from Effect by MDL-based Local and Global Regression.
(2021) Integrative analysis of epigenetics data identifies gene-specific regulatory elements.
(2019) Telling Cause from Effect by Local and Global Regression.