Bayesian nonparametric space partition (BNSP) models provide a variety of strategies for partitioning a $D$-dimensional space into a set of blocks. In this way, the data points lie in the same block would share certain kinds of homogeneity. BNSP models can be applied to various areas, such as regression/classification trees, random feature construction, relational modeling, etc. In this survey, we investigate the current progress of BNSP research through the following three perspectives: models, which review various strategies for generating the partitions in the space and discuss their theoretical foundation `self-consistency'; applications, which cover the current mainstream usages of BNSP models and their potential future practises; and challenges, which identify the current unsolved problems and valuable future research topics. As there are no comprehensive reviews of BNSP literature before, we hope that this survey can induce further exploration and exploitation on this topic.
翻译:BNSP模型可以应用于各个领域,例如回归/分类树、随机地貌构造、关系型建模等。在这次调查中,我们从以下三个角度调查BNSP研究目前的进展:模型,审查产生空间空间分隔的各种战略,并讨论其理论基础“自一致性”;应用,涵盖BNSP模型目前的主流用途及其潜在的未来实践;挑战,确定目前尚未解决的问题和宝贵的未来研究课题。由于以前没有全面审查BNSP文献,我们希望这一调查能够引起对这一专题的进一步探讨和探讨。