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 Bayesian Learning






Causal discovery from observational and interventional data across multiple environments

Neural Information Processing Systems

A fundamental problem in many sciences is the learning of causal structure underlying a system, typically through observation and experimentation. Commonly, one even collects data across multiple domains, such as gene sequencing from different labs, or neural recordings from different species.



Flow Matching for Scalable Simulation-Based Inference

Neural Information Processing Systems

Figure 1: Comparison of network architectures (left) and flow trajectories (right). Discrete flows (NPE, top) require a specialized architecture for the density estimator. Continuous flows (FMPE, bottom) are based on a vector field parametrized with an unconstrained architecture.


Flow Matching for Scalable Simulation-Based Inference

Neural Information Processing Systems

Figure 1: Comparison of network architectures (left) and flow trajectories (right). Discrete flows (NPE, top) require a specialized architecture for the density estimator. Continuous flows (FMPE, bottom) are based on a vector field parametrized with an unconstrained architecture.


Coherent Soft Imitation Learning Joe Watson Sandy H. Huang Nicolas Heess

Neural Information Processing Systems

Imitation learning methods seek to learn from an expert either through behavioral cloning (BC) for the policy or inverse reinforcement learning (IRL) for the reward. Such methods enable agents to learn complex tasks from humans that are difficult to capture with hand-designed reward functions.