Abstract
Bayesian nonparametric space partition (BNSP) models provide a variety of strategies for partitioning a D-dimensional space into a set of blocks, such that the data within the same block share certain kinds of homogeneity. BNSP models are applicable to many areas, including regression/classification trees, random feature construction, and relational modelling. This survey provides the first comprehensive review of this subject. We explore the current progress of BNSP research through three perspectives: (1) Partition strategies, where we review the various techniques for generating partitions and discuss their theoretical foundation - self-consistency; (2) Applications, where we detail the current mainstream usages of BNSP models and identify some potential future applications; and (3) Challenges, where we discuss current unsolved problems and possible avenues for future research.
Cite
CITATION STYLE
Fan, X., Li, B., Luo, L., & Sisson, S. A. (2021). Bayesian Nonparametric Space Partitions: A Survey. In IJCAI International Joint Conference on Artificial Intelligence (pp. 4408–4415). International Joint Conferences on Artificial Intelligence. https://doi.org/10.24963/ijcai.2021/602
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