LGCOMLJan 30

Neural-Inspired Posterior Approximation (NIPA)

arXiv:2601.22539v1h-index: 2
Originality Highly original
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This work addresses the computational bottleneck in Bayesian methods for machine learning practitioners, offering a novel approach to enhance efficiency and scalability in uncertainty estimation.

The paper tackled the challenge of scalable Bayesian inference by developing a sampling algorithm inspired by human neural systems, which combines model-based, model-free, and episodic-control modules to efficiently explore posterior distributions, enabling application to large-scale Bayesian deep learning with improved uncertainty quantification.

Humans learn efficiently from their environment by engaging multiple interacting neural systems that support distinct yet complementary forms of control, including model-based (goal-directed) planning, model-free (habitual) responding, and episodic memory-based learning. Model-based mechanisms compute prospective action values using an internal model of the environment, supporting flexible but computationally costly planning; model-free mechanisms cache value estimates and build heuristics that enable fast, efficient habitual responding; and memory-based mechanisms allow rapid adaptation from individual experience. In this work, we aim to elucidate the computational principles underlying this biological efficiency and translate them into a sampling algorithm for scalable Bayesian inference through effective exploration of the posterior distribution. More specifically, our proposed algorithm comprises three components: a model-based module that uses the target distribution for guided but computationally slow sampling; a model-free module that uses previous samples to learn patterns in the parameter space, enabling fast, reflexive sampling without directly evaluating the expensive target distribution; and an episodic-control module that supports rapid sampling by recalling specific past events (i.e., samples). We show that this approach advances Bayesian methods and facilitates their application to large-scale statistical machine learning problems. In particular, we apply our proposed framework to Bayesian deep learning, with an emphasis on proper and principled uncertainty quantification.

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