This article explores the implementation of gradient descent algorithms for minimizing global loss functions in neural networks, particularly in problems governed by Rankine-Hugoniot conditions. While gradient descent reliably converges, scalability issues arise when handling large domains with many coupled networks. To address this, a domain decomposition method (DDM) is introduced, enabling parallel optimization of local loss functions. The result is faster convergence, improved scalability, and a more efficient framework for training complex AI models.This article explores the implementation of gradient descent algorithms for minimizing global loss functions in neural networks, particularly in problems governed by Rankine-Hugoniot conditions. While gradient descent reliably converges, scalability issues arise when handling large domains with many coupled networks. To address this, a domain decomposition method (DDM) is introduced, enabling parallel optimization of local loss functions. The result is faster convergence, improved scalability, and a more efficient framework for training complex AI models.

Why Gradient Descent Converges (and Sometimes Doesn’t) in Neural Networks

2025/09/19 18:38

Abstract and 1. Introduction

1.1. Introductory remarks

1.2. Basics of neural networks

1.3. About the entropy of direct PINN methods

1.4. Organization of the paper

  1. Non-diffusive neural network solver for one dimensional scalar HCLs

    2.1. One shock wave

    2.2. Arbitrary number of shock waves

    2.3. Shock wave generation

    2.4. Shock wave interaction

    2.5. Non-diffusive neural network solver for one dimensional systems of CLs

    2.6. Efficient initial wave decomposition

  2. Gradient descent algorithm and efficient implementation

    3.1. Classical gradient descent algorithm for HCLs

    3.2. Gradient descent and domain decomposition methods

  3. Numerics

    4.1. Practical implementations

    4.2. Basic tests and convergence for 1 and 2 shock wave problems

    4.3. Shock wave generation

    4.4. Shock-Shock interaction

    4.5. Entropy solution

    4.6. Domain decomposition

    4.7. Nonlinear systems

  4. Conclusion and References

3. Gradient descent algorithm and efficient implementation

In this section we discuss the implementation of gradient descent algorithms for solving the minimization problems (11), (20) and (35). We note that these problems involve a global loss functional measuring the residue of HCL in the whole domain, as well Rankine-Hugoniot conditions, which results in training of a number of neural networks. In all the tests we have done, the gradient descent method converges and provides accurate results. We note also, that in problems with a large number of DLs, the global loss functional couples a large number of networks and the gradient descent algorithm may converge slowly. For these problems we present a domain decomposition method (DDM).

3.1. Classical gradient descent algorithm for HCLs

All the problems (11), (20) and (35) being similar, we will demonstrate in details the algorithm for the problem (20). We assume that the solution is initially constituted by i) D ∈ {1, 2, . . . , } entropic shock waves emanating from x1, . . . , xD, ii) an arbitrary number of rarefaction waves, and that iii) there is no shock generation for t ∈ [0, T].

\

\

3.2. Gradient descent and domain decomposition methods

Rather than minimizing the global loss function (21) (or (12), (36)), we here propose to decouple the optimization of the neural networks, and make it scalable. The approach is closely connected to domain decomposition methods (DDMs) Schwarz Waveform Relaxation (SWR) methods [21, 22, 23]. The resulting algorithm allows for embarrassingly parallel computation of minimization of local loss functions.

\ \

\ \ \

\ \ \

\ \ In conclusion, the DDM becomes relevant thanks to its scalability and for kDDMkLocal < kGlobal, which is expected for D large.

\

:::info Authors:

(1) Emmanuel LORIN, School of Mathematics and Statistics, Carleton University, Ottawa, Canada, K1S 5B6 and Centre de Recherches Mathematiques, Universit´e de Montr´eal, Montreal, Canada, H3T 1J4 (elorin@math.carleton.ca);

(2) Arian NOVRUZI, a Corresponding Author from Department of Mathematics and Statistics, University of Ottawa, Ottawa, ON K1N 6N5, Canada (novruzi@uottawa.ca).

:::


:::info This paper is available on arxiv under CC by 4.0 Deed (Attribution 4.0 International) license.

:::

\

Disclaimer: The articles reposted on this site are sourced from public platforms and are provided for informational purposes only. They do not necessarily reflect the views of MEXC. All rights remain with the original authors. If you believe any content infringes on third-party rights, please contact service@support.mexc.com for removal. MEXC makes no guarantees regarding the accuracy, completeness, or timeliness of the content and is not responsible for any actions taken based on the information provided. The content does not constitute financial, legal, or other professional advice, nor should it be considered a recommendation or endorsement by MEXC.

You May Also Like

Crypto-Fueled Rekt Drinks Sells 1 Millionth Can Amid MoonPay Collab

Crypto-Fueled Rekt Drinks Sells 1 Millionth Can Amid MoonPay Collab

The post Crypto-Fueled Rekt Drinks Sells 1 Millionth Can Amid MoonPay Collab appeared on BitcoinEthereumNews.com. In brief Rekt Brands sold its 1 millionth can of its Rekt Drinks flavored sparkling water. The Web3 firm collaborated with payments infrastructure company MoonPay on a peach-raspberry flavor called “Moon Crush.” Rekt incentivizes purchasers of its drinks with the REKT token, which hit an all-time high market cap of $583 million in August. Web3 consumer firm Rekt Brands sold its 1 millionth can of its Rekt Drinks sparkling water on Friday, surpassing its first major milestone with the sold-out drop of its “Moon Crush” flavor—a peach raspberry-flavored collaboration with payments infrastructure firm MoonPay.  The sale follows Rekt’s previous sellout collaborations with leading Web3 brands like Solana DeFi protocol Jupiter, Ethereum layer-2 network Abstract, and Coinbase’s layer-2 network, Base. Rekt has already worked with a number of crypto-native brands, but says it has been choosy when cultivating collabs. “We have received a large amount of incoming enquiries from some of crypto’s biggest brands, but it’s super important for us to be selective in order to maintain the premium feel of Rekt,” Rekt Brands co-founder and CEO Ovie Faruq told Decrypt.  (Disclosure: Ovie Faruq’s Canary Labs is an investor in DASTAN, the parent company of Decrypt.) “We look to work with brands who are able to form partnerships that we feel are truly strategic to Rekt’s goal of becoming one of the largest global beverage brands,” he added. In particular, Faruq highlighted MoonPay’s role as a “gateway” between non-crypto and crypto users as a reason the collaboration made “perfect sense.”  “We’re thrilled to bring something to life that is both delicious and deeply connected to the crypto community,” MoonPay President Keith Grossman told Decrypt.  Rekt Brands has been bridging the gap between Web3 and the real world with sales of its sparkling water since November 2024. In its first sale,…
Share
BitcoinEthereumNews2025/09/20 09:24