AI RESEARCH

Towards Reliable Simulation-based Inference

arXiv CS.LG

ArXi:2603.08947v1 Announce Type: cross Scientific knowledge expands by observing the world, hypothesizing some theories about it, and testing them against collected data. When those theories take the form of statistical models, statistical analyses are involved in the process of testing and refining scientific hypotheses. In this thesis, we focus on statistical models that take the form of scientific simulators and provide background about how machine learning can be used for statistical analyses in this context.