Finite-Width Neural Tangent Kernels from Feynman Diagrams
- URL: http://arxiv.org/abs/2508.11522v2
- Date: Tue, 26 Aug 2025 13:11:12 GMT
- Title: Finite-Width Neural Tangent Kernels from Feynman Diagrams
- Authors: Max Guillen, Philipp Misof, Jan E. Gerken,
- Abstract summary: We introduce Feynman diagrams for computing finite-width corrections to NTK statistics.<n>We demonstrate the feasibility of our framework by extending stability results for deep networks from preactivations to NTKs.
- Score: 3.6731536660959985
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Neural tangent kernels (NTKs) are a powerful tool for analyzing deep, non-linear neural networks. In the infinite-width limit, NTKs can easily be computed for most common architectures, yielding full analytic control over the training dynamics. However, at infinite width, important properties of training such as NTK evolution or feature learning are absent. Nevertheless, finite width effects can be included by computing corrections to the Gaussian statistics at infinite width. We introduce Feynman diagrams for computing finite-width corrections to NTK statistics. These dramatically simplify the necessary algebraic manipulations and enable the computation of layer-wise recursive relations for arbitrary statistics involving preactivations, NTKs and certain higher-derivative tensors (dNTK and ddNTK) required to predict the training dynamics at leading order. We demonstrate the feasibility of our framework by extending stability results for deep networks from preactivations to NTKs and proving the absence of finite-width corrections for scale-invariant nonlinearities such as ReLU on the diagonal of the Gram matrix of the NTK. We validate our results with numerical experiments.
Related papers
- Efficient kernel surrogates for neural network-based regression [0.8030359871216615]
We study the performance of the Conjugate Kernel (CK), an efficient approximation to the Neural Tangent Kernel (NTK)
We show that the CK performance is only marginally worse than that of the NTK and, in certain cases, is shown to be superior.
In addition to providing a theoretical grounding for using CKs instead of NTKs, our framework suggests a recipe for improving DNN accuracy inexpensively.
arXiv Detail & Related papers (2023-10-28T06:41:47Z) - Speed Limits for Deep Learning [67.69149326107103]
Recent advancement in thermodynamics allows bounding the speed at which one can go from the initial weight distribution to the final distribution of the fully trained network.
We provide analytical expressions for these speed limits for linear and linearizable neural networks.
Remarkably, given some plausible scaling assumptions on the NTK spectra and spectral decomposition of the labels -- learning is optimal in a scaling sense.
arXiv Detail & Related papers (2023-07-27T06:59:46Z) - Gradient Descent in Neural Networks as Sequential Learning in RKBS [63.011641517977644]
We construct an exact power-series representation of the neural network in a finite neighborhood of the initial weights.
We prove that, regardless of width, the training sequence produced by gradient descent can be exactly replicated by regularized sequential learning.
arXiv Detail & Related papers (2023-02-01T03:18:07Z) - Efficient NTK using Dimensionality Reduction [5.025654873456756]
We show how to obtain guarantees to those obtained by a prior analysis while reducing training and inference resource costs.
More generally, our work suggests how to analyze large width networks in which dense linear layers are replaced with a low complexity factorization.
arXiv Detail & Related papers (2022-10-10T16:11:03Z) - On Feature Learning in Neural Networks with Global Convergence
Guarantees [49.870593940818715]
We study the optimization of wide neural networks (NNs) via gradient flow (GF)
We show that when the input dimension is no less than the size of the training set, the training loss converges to zero at a linear rate under GF.
We also show empirically that, unlike in the Neural Tangent Kernel (NTK) regime, our multi-layer model exhibits feature learning and can achieve better generalization performance than its NTK counterpart.
arXiv Detail & Related papers (2022-04-22T15:56:43Z) - Scaling Neural Tangent Kernels via Sketching and Random Features [53.57615759435126]
Recent works report that NTK regression can outperform finitely-wide neural networks trained on small-scale datasets.
We design a near input-sparsity time approximation algorithm for NTK, by sketching the expansions of arc-cosine kernels.
We show that a linear regressor trained on our CNTK features matches the accuracy of exact CNTK on CIFAR-10 dataset while achieving 150x speedup.
arXiv Detail & Related papers (2021-06-15T04:44:52Z) - Weighted Neural Tangent Kernel: A Generalized and Improved
Network-Induced Kernel [20.84988773171639]
The Neural Tangent Kernel (NTK) has recently attracted intense study, as it describes the evolution of an over- parameterized Neural Network (NN) trained by gradient descent.
We introduce the Weighted Neural Tangent Kernel (WNTK), a generalized and improved tool, which can capture an over- parameterized NN's training dynamics under different gradients.
With the proposed weight update algorithm, both empirical and analytical WNTKs outperform the corresponding NTKs in numerical experiments.
arXiv Detail & Related papers (2021-03-22T03:16:20Z) - Finite Versus Infinite Neural Networks: an Empirical Study [69.07049353209463]
kernel methods outperform fully-connected finite-width networks.
Centered and ensembled finite networks have reduced posterior variance.
Weight decay and the use of a large learning rate break the correspondence between finite and infinite networks.
arXiv Detail & Related papers (2020-07-31T01:57:47Z) - When and why PINNs fail to train: A neural tangent kernel perspective [2.1485350418225244]
We derive the Neural Tangent Kernel (NTK) of PINNs and prove that, under appropriate conditions, it converges to a deterministic kernel that stays constant during training in the infinite-width limit.
We find a remarkable discrepancy in the convergence rate of the different loss components contributing to the total training error.
We propose a novel gradient descent algorithm that utilizes the eigenvalues of the NTK to adaptively calibrate the convergence rate of the total training error.
arXiv Detail & Related papers (2020-07-28T23:44:56Z) - On Random Kernels of Residual Architectures [93.94469470368988]
We derive finite width and depth corrections for the Neural Tangent Kernel (NTK) of ResNets and DenseNets.
Our findings show that in ResNets, convergence to the NTK may occur when depth and width simultaneously tend to infinity.
In DenseNets, however, convergence of the NTK to its limit as the width tends to infinity is guaranteed.
arXiv Detail & Related papers (2020-01-28T16:47:53Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.