An intervention may have an effect on units other than those to which it was administered. This phenomenon is called interference and it usually goes unmodeled. In this paper, we propose to combine Lauritzen-Wermuth-Frydenberg and Andersson-Madigan-Perlman chain graphs to create a new class of causal models that can represent both interference and non-interference relationships for Gaussian distributions. Specifically, we define the new class of models, introduce global and local and pairwise Markov properties for them, and prove their equivalence. We also propose an algorithm for maximum likelihood parameter estimation for the new models, and report experimental results. Finally, we show how to compute the effects of interventions in the n...
We offer a complete characterization of the set of distributions that could be induced by local inte...
When constructing Bayesian networks with domain experts, network engineers often use the noisy-OR mo...
Doctor of PhilosophyDepartment of StatisticsMichael HigginsIn causal inference, an experiment exhibi...
An intervention may have an effect on units other than those to which it was administered. This phen...
Causal inference studies the causal relationships between factors by modeling the underlying data ge...
Suppose that we observe a population of causally connected units. On each unit at each time-point on...
Causal interaction models such as the noisy-or model, are used in Bayesian networks to simplify prob...
We consider the problem of estimating causal DAG models from a mix of observational and intervention...
We study the framework for semi-parametric estimation and statistical inference for the sample avera...
This paper is concerned with estimating the effects of actions from causal assumptions, represented ...
We consider the estimation of joint causal effects from observational data. In particular, we propos...
We propose a penalized log-likelihood method for estimating causal Bayesian networks using a mix of ...
textabstractThis paper aims to solve an often noted incompatibility between graphical chain models w...
We begin by discussing causal independence models and generalize these models to causal interaction ...
One of the basic aims of science is to unravel the chain of cause and effect of particular systems. ...
We offer a complete characterization of the set of distributions that could be induced by local inte...
When constructing Bayesian networks with domain experts, network engineers often use the noisy-OR mo...
Doctor of PhilosophyDepartment of StatisticsMichael HigginsIn causal inference, an experiment exhibi...
An intervention may have an effect on units other than those to which it was administered. This phen...
Causal inference studies the causal relationships between factors by modeling the underlying data ge...
Suppose that we observe a population of causally connected units. On each unit at each time-point on...
Causal interaction models such as the noisy-or model, are used in Bayesian networks to simplify prob...
We consider the problem of estimating causal DAG models from a mix of observational and intervention...
We study the framework for semi-parametric estimation and statistical inference for the sample avera...
This paper is concerned with estimating the effects of actions from causal assumptions, represented ...
We consider the estimation of joint causal effects from observational data. In particular, we propos...
We propose a penalized log-likelihood method for estimating causal Bayesian networks using a mix of ...
textabstractThis paper aims to solve an often noted incompatibility between graphical chain models w...
We begin by discussing causal independence models and generalize these models to causal interaction ...
One of the basic aims of science is to unravel the chain of cause and effect of particular systems. ...
We offer a complete characterization of the set of distributions that could be induced by local inte...
When constructing Bayesian networks with domain experts, network engineers often use the noisy-OR mo...
Doctor of PhilosophyDepartment of StatisticsMichael HigginsIn causal inference, an experiment exhibi...