πŸ“„
Paper

SpikE: spike-based embeddings for multi-relational graph data

by Dominik Dold ID: arxiv-paper--2104.13398

Despite the recent success of reconciling spike-based coding with the error backpropagation algorithm, spiking neural networks are still mostly applied to tasks stemming from sensory processing, operating on traditional data structures like visual or auditory data. A rich data representation that fi...

High Impact - Citations
2021 Year
ArXiv Venue
Top 19% FNI Rank
Paper Information Summary
Entity Passport
Registry ID arxiv-paper--2104.13398
Provider arxiv
πŸ“œ

Cite this paper

Academic & Research Attribution

BibTeX
@misc{arxiv_paper__2104.13398,
  author = {Dominik Dold},
  title = {SpikE: spike-based embeddings for multi-relational graph data Paper},
  year = {2026},
  howpublished = {\url{https://arxiv.org/abs/2104.13398v2}},
  note = {Accessed via Free2AITools Knowledge Fortress}
}
APA Style
Dominik Dold. (2026). SpikE: spike-based embeddings for multi-relational graph data [Paper]. Free2AITools. https://arxiv.org/abs/2104.13398v2

πŸ”¬Technical Deep Dive

Full Specifications [+]

βš–οΈ Free2AI Nexus Index

Methodology β†’ πŸ“˜ What is FNI?
0.0
Top 19% Overall Impact
πŸ”₯ Popularity (P) 0
πŸš€ Velocity (V) 0
πŸ›‘οΈ Credibility (C) 0
πŸ”§ Utility (U) 0
Nexus Verified Data

πŸ’¬ Why this score?

The Nexus Index for SpikE: spike-based embeddings for multi-relational graph data 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 πŸ• Last Updated: Not calculated
Free2AI Nexus Index | Fair Β· Transparent Β· Explainable | Full Methodology

πŸ“ Executive Summary

"Despite the recent success of reconciling spike-based coding with the error backpropagation algorithm, spiking neural networks are still mostly applied to tasks stemming from sensory processing, operating on traditional data structures like visual or auditory data. A rich data representation that finds wide application in industry and research is the so-called knowledge graph - a graph-based structure where entities are depicted as nodes and relations between them as edges. Complex systems li..."

❝ Cite Node

@article{Dold2021SpikE:,
  title={SpikE: spike-based embeddings for multi-relational graph data},
  author={Dominik Dold and Josep Soler Garrido},
  journal={arXiv preprint arXiv:arxiv-paper--2104.13398},
  year={2021}
}

πŸ‘₯ Collaborating Minds

Dominik Dold Josep Soler Garrido

Abstract & Analysis

Despite the recent success of reconciling spike-based coding with the error backpropagation algorithm, spiking neural networks are still mostly applied to tasks stemming from sensory processing, operating on traditional data structures like visual or auditory data. A rich data representation that finds wide application in industry and research is the so-called knowledge graph - a graph-based structure where entities are depicted as nodes and relations between them as edges. Complex systems like molecules, social networks and industrial factory systems can be described using the common language of knowledge graphs, allowing the usage of graph embedding algorithms to make context-aware predictions in these information-packed environments. We propose a spike-based algorithm where nodes in a graph are represented by single spike times of neuron populations and relations as spike time differences between populations. Learning such spike-based embeddings only requires knowledge about spike times and spike time differences, compatible with recently proposed frameworks for training spiking neural networks. The presented model is easily mapped to current neuromorphic hardware systems and thereby moves inference on knowledge graphs into a domain where these architectures thrive, unlocking a promising industrial application area for this technology.

πŸ”„ Daily sync (03:00 UTC)

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

πŸ“Š FNI Methodology πŸ“š Knowledge Baseℹ️ Verify with original source

πŸ›‘οΈ Paper Transparency Report

Verified data manifest for traceability and transparency.

100% Data Disclosure Active

πŸ†” Identity & Source

id
arxiv-paper--2104.13398
source
arxiv
author
Dominik Dold
tags
arxiv:cs.NEarxiv:cs.LGarxiv:q-bio.NC

βš™οΈ Technical Specs

architecture
null
params billions
null
context length
null

πŸ“Š Engagement & Metrics

likes
0
downloads
0

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