Recent work has discussed the limitations of counterfactual explanations to recommend actions for algorithmic recourse, and argued for the need of taking causal relationships between features into consideration. Unfortunately, in practice, the true underlying structural causal model is generally unknown. In this work, we first show that it is impossible to guarantee recourse without access to the true structural equations. To address this limitation, we propose two probabilistic approaches to select optimal actions that achieve recourse with high probability given limited causal knowledge (e.g., only the causal graph). The first captures uncertainty over structural equations under additive Gaussian noise, and uses Bayesian model averaging t...
Higher-level cognition depends on the ability to learn models of the world. We can characterize this...
Being able to provide counterfactual interventions - sequences of actions we would have had to take ...
A variety of questions in causal inference can be represented as probability distributions over hypo...
Algorithmic recourse aims to provide actionable recommendations to individuals to obtain a more favo...
We study the problem of using causal models to improve the rate at which good interventions can be l...
The big question that motivates this dissertation is the following: under what con-ditions and to wh...
this paper is to summarize recent advances in causal reasoning, especially those that use causal gra...
Counterfactual frameworks have grown popular in machine learning for both explaining algorithmic dec...
Bandits and Markov Decision Processes are powerful sequential decision making paradigms that have be...
Algorithmic fairness is typically studied from the perspective of predictions. Instead, here we inve...
We explore relationships between machine learning (ML) and causal inference. We focus on improvement...
A recent method for causal discovery is in many cases able to infer whether X causes Y or Y causes X...
Causal inference provides a set of principles and tools that allows one to combine data and knowledg...
The field of causal learning has grown in the past decade, establishing itself as a major focus in a...
Causal knowledge is sought after throughout data-driven fields due to its explanatory power and pote...
Higher-level cognition depends on the ability to learn models of the world. We can characterize this...
Being able to provide counterfactual interventions - sequences of actions we would have had to take ...
A variety of questions in causal inference can be represented as probability distributions over hypo...
Algorithmic recourse aims to provide actionable recommendations to individuals to obtain a more favo...
We study the problem of using causal models to improve the rate at which good interventions can be l...
The big question that motivates this dissertation is the following: under what con-ditions and to wh...
this paper is to summarize recent advances in causal reasoning, especially those that use causal gra...
Counterfactual frameworks have grown popular in machine learning for both explaining algorithmic dec...
Bandits and Markov Decision Processes are powerful sequential decision making paradigms that have be...
Algorithmic fairness is typically studied from the perspective of predictions. Instead, here we inve...
We explore relationships between machine learning (ML) and causal inference. We focus on improvement...
A recent method for causal discovery is in many cases able to infer whether X causes Y or Y causes X...
Causal inference provides a set of principles and tools that allows one to combine data and knowledg...
The field of causal learning has grown in the past decade, establishing itself as a major focus in a...
Causal knowledge is sought after throughout data-driven fields due to its explanatory power and pote...
Higher-level cognition depends on the ability to learn models of the world. We can characterize this...
Being able to provide counterfactual interventions - sequences of actions we would have had to take ...
A variety of questions in causal inference can be represented as probability distributions over hypo...