Many open problems in machine learning are intrinsically related to causality, however, the use of causal analysis in machine learning is still in its early stage. Within a general reinforcement learning setting, we consider the problem of building a general reinforcement learning agent which uses experience to construct a causal graph of the environment, and use this graph to inform its policy. Our approach has three characteristics: First, we learn a simple, coarse-grained causal graph, in which the variables reflect states at many time instances, and the interventions happen at the level of policies, rather than individual actions. Secondly, we use mediation analysis to obtain an optimization target. By minimizing this target, we define ...
Abstract Background Reinforcement learning (RL) provides a promising technique to solve complex sequ...
We study the problem of using causal models to improve the rate at which good interventions can be l...
Neural networks have proven to be effective at solving a wide range of problems but it is often uncl...
Causal inference provides a set of principles and tools that allows one to combine data and knowledg...
This chapter reviews the diverse roles that causal knowledge plays in reinforcement learning. The fi...
Reinforcement learning is an essential paradigm for solving sequential decision problems under uncer...
Prominent theories in cognitive science propose that humans understand and represent the knowledge o...
The two fields of machine learning and graphical causality arose and are developed separately. Howev...
Learning to perform a task in an environment with sparse feedback is a difficult problem. While seve...
As a pivotal component to attaining generalizable solutions in human intelligence, reasoning provide...
Learning efficiently a causal model of the environment is a key challenge of model-based RL agents o...
We explore relationships between machine learning (ML) and causal inference. We focus on improvement...
Mediation analysis learns the causal effect transmitted via mediator variables between treatments an...
This dissertation studies how the mechanism-based view of causality can assist in construction and u...
The field of causal learning has grown in the past decade, establishing itself as a major focus in a...
Abstract Background Reinforcement learning (RL) provides a promising technique to solve complex sequ...
We study the problem of using causal models to improve the rate at which good interventions can be l...
Neural networks have proven to be effective at solving a wide range of problems but it is often uncl...
Causal inference provides a set of principles and tools that allows one to combine data and knowledg...
This chapter reviews the diverse roles that causal knowledge plays in reinforcement learning. The fi...
Reinforcement learning is an essential paradigm for solving sequential decision problems under uncer...
Prominent theories in cognitive science propose that humans understand and represent the knowledge o...
The two fields of machine learning and graphical causality arose and are developed separately. Howev...
Learning to perform a task in an environment with sparse feedback is a difficult problem. While seve...
As a pivotal component to attaining generalizable solutions in human intelligence, reasoning provide...
Learning efficiently a causal model of the environment is a key challenge of model-based RL agents o...
We explore relationships between machine learning (ML) and causal inference. We focus on improvement...
Mediation analysis learns the causal effect transmitted via mediator variables between treatments an...
This dissertation studies how the mechanism-based view of causality can assist in construction and u...
The field of causal learning has grown in the past decade, establishing itself as a major focus in a...
Abstract Background Reinforcement learning (RL) provides a promising technique to solve complex sequ...
We study the problem of using causal models to improve the rate at which good interventions can be l...
Neural networks have proven to be effective at solving a wide range of problems but it is often uncl...