Domain Adaptation Causal Inference
Why are we interested in the causal structure of a data generating process.
Domain adaptation causal inference. Domain adaptation under target and conditional shift zhang et al 2013 multi source domain adaptation. In many cases these different distributions can be modeled as different contexts of a single underlying system in which each distribution corresponds to a different perturbation of the system. Second we derive new fami lies of representation algorithms for counterfactual infer. An important goal common to domain adaptation and causal inference is to make accurate predictions when the distributions for the source or training domain s and target or test domain s differ.
Domain adaptation by using causal inference to predict invariant conditional distributions sara magliacane thijs van ommen tom claassen stephan bongers philip versteeg joris m. An important goal common to domain adaptation and causal inference is to make accurate predictions when the distributions for the source or training domain s and target or test domain s differ. Causal inference and domain adaptation. A causal view zhang gong schölkopf 2015 invariant models for causal transfer learning rojas carulla et al 2016 domain adaptation as a problem of inference on graphical models zhang et al 2020.
This paper proposes a new approach to domain adaptation that relies on the identification of a separating feature set conditional on which the distribution of a variable of interest is invariant under a certain intervention. Advances in neural information processing systems 31 nips 2018 supplemental authors. The contributions of our paper are as follows. First we show how to formulate the problem of counterfactual infer ence as a domain adaptation problem and more specifically a covariate shift problem.
Mooij an important goal common to domain adaptation and causal inference is to make accurate predictions when the distributions for the source or training domain s and target or test domain s differ. Domain adaptation by using causal inference to predict invariant conditional distributions reviewer 1 summary. Overview speakers related info overview.