📄
Paper

The World as a Graph: Improving El Niño Forecasts with Graph Neural Networks

by Salva Rühling Cachay ID: arxiv-paper--2104.05089

Deep learning-based models have recently outperformed state-of-the-art seasonal forecasting models, such as for predicting El Niño-Southern Oscillation (ENSO). However, current deep learning models are based on convolutional neural networks which are difficult to interpret and can fail to model larg...

High Impact - Citations
2021 Year
ArXiv Venue
Top 19% FNI Rank
Paper Information Summary
Entity Passport
Registry ID arxiv-paper--2104.05089
Provider arxiv
📜

Cite this paper

Academic & Research Attribution

BibTeX
@misc{arxiv_paper__2104.05089,
  author = {Salva Rühling Cachay},
  title = {The World as a Graph: Improving El Niño Forecasts with Graph Neural Networks Paper},
  year = {2026},
  howpublished = {\url{https://arxiv.org/abs/2104.05089v2}},
  note = {Accessed via Free2AITools Knowledge Fortress}
}
APA Style
Salva Rühling Cachay. (2026). The World as a Graph: Improving El Niño Forecasts with Graph Neural Networks [Paper]. Free2AITools. https://arxiv.org/abs/2104.05089v2

🔬Technical Deep Dive

Full Specifications [+]

⚖️ Free2AI Nexus Index

Methodology → 📘 What is FNI?
0.0
Top 19% Overall Impact
🔥 Popularity (P) 0
🚀 Velocity (V) 0
🛡️ Credibility (C) 0
🔧 Utility (U) 0
Nexus Verified Data

💬 Why this score?

The Nexus Index for The World as a Graph: Improving El Niño Forecasts with Graph Neural Networks aggregates Popularity (P:0), Velocity (V:0), and Credibility (C:0). The Utility score (U:0) represents deployment readiness, context efficiency, and structural reliability within the Nexus ecosystem.

Data Verified 🕐 Last Updated: Not calculated
Free2AI Nexus Index | Fair · Transparent · Explainable | Full Methodology

📝 Executive Summary

"Deep learning-based models have recently outperformed state-of-the-art seasonal forecasting models, such as for predicting El Niño-Southern Oscillation (ENSO). However, current deep learning models are based on convolutional neural networks which are difficult to interpret and can fail to model large-scale atmospheric patterns. In comparison, graph neural networks (GNNs) are capable of modeling large-scale spatial dependencies and are more interpretable due to the explicit modeling of informa..."

Cite Node

@article{Cachay2021The,
  title={The World as a Graph: Improving El Niño Forecasts with Graph Neural Networks},
  author={Salva Rühling Cachay and Emma Erickson and Arthur Fender C. Bucker and Ernest Pokropek and Willa Potosnak and Suyash Bire and Salomey Osei and Björn Lütjens},
  journal={arXiv preprint arXiv:arxiv-paper--2104.05089},
  year={2021}
}

👥 Collaborating Minds

Salva Rühling Cachay Emma Erickson Arthur Fender C. Bucker Ernest Pokropek Willa Potosnak Suyash Bire Salomey Osei Björn Lütjens

Abstract & Analysis

Deep learning-based models have recently outperformed state-of-the-art seasonal forecasting models, such as for predicting El Niño-Southern Oscillation (ENSO). However, current deep learning models are based on convolutional neural networks which are difficult to interpret and can fail to model large-scale atmospheric patterns. In comparison, graph neural networks (GNNs) are capable of modeling large-scale spatial dependencies and are more interpretable due to the explicit modeling of information flow through edge connections. We propose the first application of graph neural networks to seasonal forecasting. We design a novel graph connectivity learning module that enables our GNN model to learn large-scale spatial interactions jointly with the actual ENSO forecasting task. Our model, \graphino, outperforms state-of-the-art deep learning-based models for forecasts up to six months ahead. Additionally, we show that our model is more interpretable as it learns sensible connectivity structures that correlate with the ENSO anomaly pattern.

🔄 Daily sync (03:00 UTC)

AI Summary: Based on arXiv metadata. Not a recommendation.

📊 FNI Methodology 📚 Knowledge Baseℹ️ Verify with original source

🛡️ Paper Transparency Report

Verified data manifest for traceability and transparency.

100% Data Disclosure Active

🆔 Identity & Source

id
arxiv-paper--2104.05089
source
arxiv
author
Salva Rühling Cachay
tags
arxiv:cs.LGarxiv:cs.NEarxiv:physics.ao-pharxiv:stat.MLneural

⚙️ Technical Specs

architecture
null
params billions
null
context length
null

📊 Engagement & Metrics

likes
0
downloads
0

Free2AITools Constitutional Data Pipeline: Curated disclosure mode active. (V15.x Standard)