The real-world testing of decisions made using causal machine learning models is an essential prerequisite for their successful application. We focus on evaluating and improving contextual treatment assignment decisions: these are personalised treatments applied to e.g. customers, each with their own contextual information, with the aim of maximising a reward. In this paper we introduce a model-agnostic framework for gathering data to evaluate and improve contextual decision making through Bayesian Experimental Design. Specifically, our method is used for the data-efficient evaluation of the regret of past treatment assignments. Unlike approaches such as A/B testing, our method avoids assigning treatments that are known to be highly sub-opt...
This PhD is concerned with the causal Bayesian framework account of probabilistic judgement (Krynski...
In sequential decision problems in an unknown environment, the decision maker often faces a dilemma ...
This paper studies the problem of performing a sequence of optimal interventions in a causal dynamic...
The practical utility of causality in decision-making is widespread and brought about by the intertw...
We design and implement an adaptive experiment (a ``contextual bandit'') to learn a targeted treatme...
Randomised field experiments, such as A/B testing, have long been the gold standard for evaluating s...
I consider the type of statistical experiment commonly referred to as adaptive trials, in which the ...
Causal inference provides a set of principles and tools that allows one to combine data and knowledg...
We study the problem of causal discovery through targeted interventions. Starting from few observati...
Copyright © 2019 ASME. This research studies the use of predetermined experimental plans in a live s...
Modern learning systems like recommendation engines, computational advertising systems, online param...
We explore relationships between machine learning (ML) and causal inference. We focus on improvement...
Reinforcement Learning (RL) is a computational approach to reward-driven learning in sequential deci...
We propose and implement a Bayesian optimal design procedure. Our procedure takes as its primitives ...
Scientists perform experiments to collect evidence supporting one or another hypothesis or theory. E...
This PhD is concerned with the causal Bayesian framework account of probabilistic judgement (Krynski...
In sequential decision problems in an unknown environment, the decision maker often faces a dilemma ...
This paper studies the problem of performing a sequence of optimal interventions in a causal dynamic...
The practical utility of causality in decision-making is widespread and brought about by the intertw...
We design and implement an adaptive experiment (a ``contextual bandit'') to learn a targeted treatme...
Randomised field experiments, such as A/B testing, have long been the gold standard for evaluating s...
I consider the type of statistical experiment commonly referred to as adaptive trials, in which the ...
Causal inference provides a set of principles and tools that allows one to combine data and knowledg...
We study the problem of causal discovery through targeted interventions. Starting from few observati...
Copyright © 2019 ASME. This research studies the use of predetermined experimental plans in a live s...
Modern learning systems like recommendation engines, computational advertising systems, online param...
We explore relationships between machine learning (ML) and causal inference. We focus on improvement...
Reinforcement Learning (RL) is a computational approach to reward-driven learning in sequential deci...
We propose and implement a Bayesian optimal design procedure. Our procedure takes as its primitives ...
Scientists perform experiments to collect evidence supporting one or another hypothesis or theory. E...
This PhD is concerned with the causal Bayesian framework account of probabilistic judgement (Krynski...
In sequential decision problems in an unknown environment, the decision maker often faces a dilemma ...
This paper studies the problem of performing a sequence of optimal interventions in a causal dynamic...