Statistical tasks such as density estimation and approximate Bayesian inference often involve densities with unknown normalising constants. Score-based methods, including score matching, are popular techniques as they are free of normalising constants. Although these methods enjoy theoretical guarantees, a little-known fact is that they suffer from practical failure modes when the unnormalised distribution of interest has isolated components -- they cannot discover isolated components or identify the correct mixing proportions between components. We demonstrate these findings using simple distributions and present heuristic attempts to address these issues. We hope to bring the attention of theoreticians and practitioners to these issues when developing new algorithms and applications.
翻译:诸如密度估计和近似贝叶斯推理等统计任务往往涉及密度和未知的正常常数。计分方法,包括得分比对,是流行技术,因为它们没有常数。虽然这些方法享有理论保障,但一个鲜为人知的事实是,当未标准化的利益分配具有孤立的组成部分时,它们会遭遇实际失败模式 -- -- 它们无法发现孤立的组成部分或查明各组成部分之间的正确混合比例。我们利用简单的分布和目前处理这些问题的超常尝试来证明这些结论。我们希望在开发新的算法和应用时,提请理论学家和从业者注意这些问题。