[R] Detecting invariant manifolds in ReLU-based RNNs

Reddit - Machine Learning 1 min read

About this article

In a new #ICLR2026 publication we provide a novel algorithm for semi-analytically constructing the stable and unstable manifolds of fixed points and cycles of ReLU-based RNNs: https://openreview.net/pdf?id=EAwLAwHvhk Why is this important? Because it provides insight into why and how trained RNNs produce their behavior, as important for scientific and medical applications and explainable AI more generally. In scientific ML, RNNs are a common tool for dynamical systems reconstruction (https://...

You've been blocked by network security.To continue, log in to your Reddit account or use your developer tokenIf you think you've been blocked by mistake, file a ticket below and we'll look into it.Log in File a ticket

Originally published on March 01, 2026. Curated by AI News.

Related Articles

UMKC Announces New Master of Science in Artificial Intelligence
Ai Infrastructure

UMKC Announces New Master of Science in Artificial Intelligence

UMKC announces a new Master of Science in Artificial Intelligence program aimed at addressing workforce demand for AI expertise, set to l...

AI News - General · 4 min ·
Machine Learning

[D] Looking for definition of open-world ish learning problem

Hello! Recently I did a project where I initially had around 30 target classes. But at inference, the model had to be able to handle a lo...

Reddit - Machine Learning · 1 min ·
Mystery Shopping Meets Machine Learning: Can Algorithms Become the Ultimate Customer Experience Auditor?
Machine Learning

Mystery Shopping Meets Machine Learning: Can Algorithms Become the Ultimate Customer Experience Auditor?

Customer expectations across Africa are shifting faster than most organisations can track. A single inconsistent interaction can ignite a...

AI News - General · 8 min ·
Machine Learning

GitHub to Use User Data for AI Training by Default

submitted by /u/i-drake [link] [comments]

Reddit - Artificial Intelligence · 1 min ·
More in Machine Learning: This Week Guide Trending

No comments

No comments yet. Be the first to comment!

Stay updated with AI News

Get the latest news, tools, and insights delivered to your inbox.

Daily or weekly digest • Unsubscribe anytime