Prominent theories in cognitive science propose that humans understand and represent the knowledge of the world through causal relationships. In making sense of the world, we build causal models in our mind to encode cause-effect relations of events and use these to explain why new events happen by referring to counterfactuals — things that did not happen. In this paper, we use causal models to derive causal explanations of the behaviour of model-free reinforcement learning agents. We present an approach that learns a structural causal model during reinforcement learning and encodes causal relationships between variables of interest. This model is then used to generate explanations of behaviour based on counterfactual analysis of the causal...
People have the fascinating ability to infer causality by observing other humans’ actions. We modell...
According to the transitive dynamics model, people can construct causal structures by linking togeth...
Causal models are playing an increasingly important role in machine learning, particularly in the re...
This chapter reviews the diverse roles that causal knowledge plays in reinforcement learning. The fi...
Causal inference provides a set of principles and tools that allows one to combine data and knowledg...
Many open problems in machine learning are intrinsically related to causality, however, the use of c...
Correctly assessing the consequences of events is essential for a successful interaction with the wo...
Reinforcement learning is an essential paradigm for solving sequential decision problems under uncer...
We present a cognitive model of the human ability to acquire causal relationships. We report on expe...
"I choose this restaurant because they have vegan sandwiches" could be a typical explanation we woul...
Reinforcement Learning (RL) approaches are becoming increasingly popular in various key disciplines,...
Non-cognitive and behavioral phenomena, including gaming the system, off-task behavior, and affect, ...
We present a novel form of explanation for Reinforcement Learning, based around the notion of intend...
Agents situated in a dynamic environment with an ini-tially unknown causal structure, which, moreove...
International audienceExplainable Artificial Intelligence (XAI), i.e., the development of more trans...
People have the fascinating ability to infer causality by observing other humans’ actions. We modell...
According to the transitive dynamics model, people can construct causal structures by linking togeth...
Causal models are playing an increasingly important role in machine learning, particularly in the re...
This chapter reviews the diverse roles that causal knowledge plays in reinforcement learning. The fi...
Causal inference provides a set of principles and tools that allows one to combine data and knowledg...
Many open problems in machine learning are intrinsically related to causality, however, the use of c...
Correctly assessing the consequences of events is essential for a successful interaction with the wo...
Reinforcement learning is an essential paradigm for solving sequential decision problems under uncer...
We present a cognitive model of the human ability to acquire causal relationships. We report on expe...
"I choose this restaurant because they have vegan sandwiches" could be a typical explanation we woul...
Reinforcement Learning (RL) approaches are becoming increasingly popular in various key disciplines,...
Non-cognitive and behavioral phenomena, including gaming the system, off-task behavior, and affect, ...
We present a novel form of explanation for Reinforcement Learning, based around the notion of intend...
Agents situated in a dynamic environment with an ini-tially unknown causal structure, which, moreove...
International audienceExplainable Artificial Intelligence (XAI), i.e., the development of more trans...
People have the fascinating ability to infer causality by observing other humans’ actions. We modell...
According to the transitive dynamics model, people can construct causal structures by linking togeth...
Causal models are playing an increasingly important role in machine learning, particularly in the re...