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The Binary Space Partitioning-Tree Process

机译:二元空间分区树过程

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The Mondrian process represents an elegant and powerful approach for space partition modelling. However, as it restricts the partitions to be axis-aligned, its modelling flexibility is limited. In this work, we propose a self-consistent Binary Space Partitioning (BSP)-Tree process to generalize the Mondrian process. The BSP-Tree process is an almost surely right continuous Markov jump process that allows uniformly distributed oblique cuts in a two-dimensional convex polygon. The BSP-Tree process can also be extended using a non-uniform probability measure to generate direction differentiated cuts. The process is also self-consistent, maintaining distributional invariance under a restricted subdomain. We use Conditional-Sequential Monte Carlo for inference using the tree structure as the high-dimensional variable. The BSP-Tree process’s performance on synthetic data partitioning and relational modelling demonstrates clear inferential improvements over the standard Mondrian process and other related methods.
机译:蒙德里安过程代表了一种优雅而强大的空间分区建模方法。但是,由于它将分区限制为轴向对齐,因此其建模灵活性受到限制。在这项工作中,我们提出了一个自洽的二进制空间划分(BSP)-树过程来概括蒙德里安过程。 BSP-Tree过程几乎可以肯定是连续的马尔可夫跳跃过程,它允许在二维凸多边形中均匀分布斜切。还可以使用非均匀概率度量来扩展BSP-Tree过程,以生成方向不同的切割。该过程也是自洽的,在受限子域下保持分布不变性。我们使用条件序列蒙特卡罗进行推理,并使用树结构作为高维变量。 BSP-Tree流程在综合数据分区和关系建模方面的性能证明了对标准Mondrian流程和其他相关方法的明显推断。

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