Abstract
We present the Probabilistic Context Neighborhood model designed for two-dimensional lattices as a variation of a Markov random field assuming discrete values. In this model, the neighborhood structure has a fixed geometry but a variable order, depending on the neighbors’ values. Our model extends the Probabilistic Context Tree model, originally applicable to one-dimensional space. It retains advantageous properties, such as representing the dependence neighborhood structure as a graph in a tree format, facilitating an understanding of model complexity. Furthermore, we adapt the algorithm used to estimate the Probabilistic Context Tree to estimate the parameters of the proposed model. We illustrate the accuracy of our estimation methodology through simulation studies. Additionally, we apply the Probabilistic Context Neighborhood model to spatial real-world data, showcasing its practical utility.
Original language | English |
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Article number | 100830 |
Journal | Spatial Statistics |
Volume | 61 |
DOIs | |
State | Published - Jun 2024 |
Funding
The authors thank CAPES, Brazil and FAPEMIG, Brazil for their financial support.
Keywords
- Context algorithm
- Markov random fields
- Model selection
- Probabilistic context trees
- Pseudo-Bayesian information criterion
- Variable-neighborhood random fields