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Thermodynamic Regulation of Finite-Time Gibbs Training in Energy-Based Models: A Restricted Boltzmann Machine Study

arXiv:2603.02525v1 Announce Type: new Abstract: Restricted Boltzmann Machines (RBMs) are typically trained using finite-length Gibbs chains under a fixed sampling temperature. This practice implicitly assumes that the stochastic regime remains valid as the energy landscape evolves during learning. We argue that this assumption can become structurally fragile under finite-time training dynamics. This fragility arises because, in nonconvex energy-based models, fixed-temperature finite-time training can generate admissible trajectories with effective-field amplification and conductance collapse. As a result, the Gibbs sampler may asymptotically freeze, the negative phase may localize, and, without sufficiently strong regularization, parameters may exhibit deterministic linear drift. To address this instability, we introduce an endogenous thermodynamic regulation framework in which temperature evolves as a dynamical state variable coupled to measurable sampling statistics. Under standard

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G\"orkem Can S\"uleymano\u{g}lu
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arXiv:2603.02525v1 Announce Type: new Abstract: Restricted Boltzmann Machines (RBMs) are typically trained using finite-length Gibbs chains under a fixed sampling temperature. This practice implicitly assumes that the stochastic regime remains valid as the energy landscape evolves during learning. We argue that this assumption can become structurally fragile under finite-time training dynamics. This fragility arises because, in nonconvex energy-based models, fixed-temperature finite-time training can generate admissible trajectories with effective-field amplification and conductance collapse. As a result, the Gibbs sampler may asymptotically freeze, the negative phase may localize, and, without sufficiently strong regularization, parameters may exhibit deterministic linear drift. To address this instability, we introduce an endogenous thermodynamic regulation framework in which temperature evolves as a dynamical state variable coupled to measurable sampling statistics. Under standard local Lipschitz conditions and a two-time-scale separation regime, we establish global parameter boundedness under strictly positive L2 regularization. We further prove local exponential stability of the thermodynamic subsystem and show that the regulated regime mitigates inverse-temperature blow-up and freezing-induced degeneracy within a forward-invariant neighborhood. Experiments on MNIST demonstrate that the proposed self-regulated RBM substantially improves normalization stability and effective sample size relative to fixed-temperature baselines, while preserving reconstruction performance. Overall, the results reinterpret RBM training as a controlled non-equilibrium dynamical process rather than a static equilibrium approximation.

Executive Summary

This article proposes a novel thermodynamic regulation framework for training Restricted Boltzmann Machines (RBMs), addressing the instability of finite-time Gibbs training. The framework introduces a dynamic temperature variable coupled to sampling statistics, ensuring global parameter boundedness and local exponential stability. Experiments on MNIST demonstrate improved normalization stability and effective sample size. The results reinterpret RBM training as a controlled non-equilibrium dynamical process, offering a new perspective on energy-based models.

Key Points

  • Introduction of endogenous thermodynamic regulation for RBM training
  • Dynamic temperature variable coupled to measurable sampling statistics
  • Establishment of global parameter boundedness and local exponential stability

Merits

Improved Stability

The proposed framework mitigates inverse-temperature blow-up and freezing-induced degeneracy, leading to improved normalization stability and effective sample size.

Demerits

Complexity

The introduction of a dynamic temperature variable and the associated mathematical framework may increase the complexity of the training process.

Expert Commentary

The proposed thermodynamic regulation framework offers a significant advancement in the training of RBMs, addressing a long-standing issue of instability in finite-time Gibbs training. The mathematical rigor and experimental validation demonstrate the effectiveness of this approach. However, further research is needed to fully explore the implications of this framework and its potential applications in other areas of machine learning. The connection to non-equilibrium thermodynamics also highlights the growing intersection of machine learning and physics, which may lead to new breakthroughs in both fields.

Recommendations

  • Further exploration of the thermodynamic regulation framework in other energy-based models
  • Investigation of the potential applications of this framework in areas such as generative modeling and reinforcement learning

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