Upper Bounds for Local Learning Coefficients of Three-Layer Neural Networks
arXiv cs.LG / 3/16/2026
📰 NewsIdeas & Deep AnalysisModels & Research
Key Points
- The authors derive an upper-bound formula for the local learning coefficient at singular points in three-layer neural networks, advancing Bayesian asymptotics for singular learning models.
- The formula functions as a counting rule under budget and demand-supply constraints and is applicable to a broad class of analytic activation functions, including swish and polynomial activations.
- For one-dimensional input, the upper bound matches the known learning coefficient, partially resolving discrepancies from prior results.
- The result offers a systematic perspective on how the network's weight parameters shape the learning coefficient across activation functions and architectures.
Related Articles
The massive shift toward edge computing and local processing
Dev.to
Self-Refining Agents in Spec-Driven Development
Dev.to
Week 3: Why I'm Learning 'Boring' ML Before Building with LLMs
Dev.to
The Three-Agent Protocol Is Transferable. The Discipline Isn't.
Dev.to

has anyone tried this? Flash-MoE: Running a 397B Parameter Model on a Laptop
Reddit r/LocalLLaMA