Improving Causal Effect Estimation of Weighted RegressionBased Estimator using Neural Networks

Shaha, Plabon, Zadid, Talha Islam, Rahman, Ismat, Khan, Md. Mosaddek

arXiv.org Artificial Intelligence 

The do-calculus is a set of inference directives that helps the transformation of these interventions into more interpretable Estimating causal effects from observational data informs us about probabilistic sentences, and as such, enables an user to derive or which factors are important in an autonomous system, and enables confirm causal claims about interventions [14]. Results inferred us to take better decisions. This is important because it has applications from do-calculus is well understood on the whole but its application in selecting a treatment in medical systems or making is still questionable [10]. This is because do-calculus assumes that better strategies in industries or making better policies for our the distributions being used are error-free, but in practice, we do not government or even the society. Unavailability of complete data, have sufficient samples to confirm that. In case of limited samples, coupled with high cardinality of data, makes this estimation task a popular criterion, namely back-door criterion, is employed to computationally intractable.