The likelihood function plays a crucial role in statistical inference and experimental design. However, it is computationally intractable for several important classes of statistical models, including energy-based models and simulator-based models. Contrastive learning is an intuitive and computationally feasible alternative to likelihood-based learning. We here first provide an introduction to contrastive learning and then show how we can use it to derive methods for diverse statistical problems, namely parameter estimation for energy-based models, Bayesian inference for simulator-based models, as well as experimental design.
翻译:可能性功能在统计推论和实验设计中起着关键作用,但是,对于若干重要的统计模型类别,包括基于能源的模型和模拟模型,这一功能在计算上是难以操作的。对比学习是直觉和计算上可行的替代基于可能性的学习的替代方法。我们在这里首先介绍对比学习,然后说明我们如何能够利用它来找出解决不同统计问题的方法,即基于能源模型的参数估计、模拟模型的贝耶斯推断以及实验设计。