Probabilistic Tree Inference Enabled by FDSOI Ferroelectric FETs

arXiv cs.LG / 4/8/2026

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Key Points

  • The paper proposes probabilistic Bayesian decision tree (BDT) inference for AI domains that require uncertainty quantification, interpretability, and noise resilience.
  • It addresses limitations of prior CPU/GPU and multi-component analog approaches by introducing a monolithic FDSOI FeFET hardware platform that integrates analog content-addressable memory (ACAM) and a Gaussian random number generator (GRNG).
  • The design uses ferroelectric polarization in FeFETs for compact, energy-efficient multi-bit ACAM storage and leverages tunneling and floating-body charge effects to generate high-quality entropy for GRNG.
  • Reported system evaluations show robust uncertainty estimation and interpretability under dataset noise and device variation, including over 40% higher MNIST classification accuracy versus conventional decision trees.
  • The authors claim large performance/efficiency gains, with speedups exceeding two orders of magnitude versus CPU/GPU and energy-efficiency improvements over four orders of magnitude, supporting use in resource-constrained, safety-critical settings.

Abstract

Artificial intelligence applications in autonomous driving, medical diagnostics, and financial systems increasingly demand machine learning models that can provide robust uncertainty quantification, interpretability, and noise resilience. Bayesian decision trees (BDTs) are attractive for these tasks because they combine probabilistic reasoning, interpretable decision-making, and robustness to noise. However, existing hardware implementations of BDTs based on CPUs and GPUs are limited by memory bottlenecks and irregular processing patterns, while multi-platform solutions exploiting analog content-addressable memory (ACAM) and Gaussian random number generators (GRNGs) introduce integration complexity and energy overheads. Here we report a monolithic FDSOI-FeFET hardware platform that natively supports both ACAM and GRNG functionalities. The ferroelectric polarization of FeFETs enables compact, energy-efficient multi-bit storage for ACAM, and band-to-band tunneling in the gate-to-drain overlap region and subsequent hole storage in the floating body provides a high-quality entropy source for GRNG. System-level evaluations demonstrate that the proposed architecture provides robust uncertainty estimation, interpretability, and noise tolerance with high energy efficiency. Under both dataset noise and device variations, it achieves over 40% higher classification accuracy on MNIST compared to conventional decision trees. Moreover, it delivers more than two orders of magnitude speedup over CPU and GPU baselines and over four orders of magnitude improvement in energy efficiency, making it a scalable solution for deploying BDTs in resource-constrained and safety-critical environments.