होम
एक्सप्लोर
nav.journalClub
ट्रेंडिंग
और
synapse
⌘+K
भाषा
हिन्दी
हिन्दी
March 3, 2026
Open Access
On dissipativity of cross-entropy loss in training ResNets — A turnpike towards architecture search
JP
Jens Püttschneider
TF
Timm Faulwasser
Key Points
Dissipativity of cross-entropy loss positively influences model optimization, enhancing ResNet training.
Effective architecture search may leverage the dissipative nature found in cross-entropy loss.
Assessment involves mathematical modeling of training dynamics in deep learning frameworks like ResNets.
Findings highlight the potential for improved neural network designs, emphasizing optimization strategies.
Read Full Paper
externally
Mark Helpful
Like
Save
Bookmark
Relay
Share
View Full Paper
Cite This Study
Copy
Püttschneider et al. (Fri,) studied this question.
synapsesocial.com/papers/69a76721badf0bb9e87dfb68
https://doi.org/https://doi.org/10.15480/882.16637
Mark Helpful
Like
Save
Bookmark
Relay
Share
View Full Paper
On dissipativity of cross-entropy loss in training ResNets — A turnpike towards architecture search | Synapse