On Neural Networks as Infinite Tree-Structured Probabilistic Graphical Models
- URL: http://arxiv.org/abs/2305.17583v4
- Date: Fri, 08 Nov 2024 19:27:14 GMT
- Title: On Neural Networks as Infinite Tree-Structured Probabilistic Graphical Models
- Authors: Boyao Li, Alexandar J. Thomson, Houssam Nassif, Matthew M. Engelhard, David Page,
- Abstract summary: We propose an innovative solution by constructing infinite tree-structured PGMs that correspond exactly to neural networks.
Our research reveals that DNNs, during forward propagation, indeed perform approximations of PGM inference that are precise in this alternative PGM structure.
- Score: 44.676210493587256
- License:
- Abstract: Deep neural networks (DNNs) lack the precise semantics and definitive probabilistic interpretation of probabilistic graphical models (PGMs). In this paper, we propose an innovative solution by constructing infinite tree-structured PGMs that correspond exactly to neural networks. Our research reveals that DNNs, during forward propagation, indeed perform approximations of PGM inference that are precise in this alternative PGM structure. Not only does our research complement existing studies that describe neural networks as kernel machines or infinite-sized Gaussian processes, it also elucidates a more direct approximation that DNNs make to exact inference in PGMs. Potential benefits include improved pedagogy and interpretation of DNNs, and algorithms that can merge the strengths of PGMs and DNNs.
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