Close Menu
Altcoin ObserverAltcoin Observer
  • Regulation
  • Bitcoin
  • Altcoins
  • Market
  • Analysis
  • DeFi
  • Security
  • Ethereum
Categories
  • Altcoins (1,193)
  • Analysis (1,393)
  • Bitcoin (1,968)
  • Blockchain (1,139)
  • DeFi (1,351)
  • Ethereum (1,354)
  • Event (50)
  • Exclusive Deep Dive (1)
  • Landscape Ads (2)
  • Market (1,396)
  • Reddit (619)
  • Regulation (1,297)
  • Security (1,862)
  • Thought Leadership (1)
  • Uncategorized (3)
  • Videos (39)
Hand picked
  • Coinpedia digest: Top Crypto News this week, Institutional regulations and adoption
  • Cryptography market close to a summit, with the possibility of a slight decrease
  • Development Development Corp. Stock strikes a new top following Solana Buys, Bonk Collab
  • JP Morgan regulates the first token cash transaction on the public blockchain, using ChainLink, Ondo Finance
  • Ethereum went to a crucial meeting at $ 4,000 – here is why
We are social
  • Facebook
  • Twitter
  • Instagram
  • YouTube
Facebook X (Twitter) Instagram
  • About us
  • Disclaimer
  • Terms of service
  • Privacy policy
  • Contact us
Facebook X (Twitter) Instagram YouTube LinkedIn
Altcoin ObserverAltcoin Observer
  • Regulation
  • Bitcoin
  • Altcoins
  • Market
  • Analysis
  • DeFi
  • Security
  • Ethereum
Events
Altcoin ObserverAltcoin Observer
Home»Blockchain»Blockchain-based intrusion detection algorithm
Blockchain

Blockchain-based intrusion detection algorithm

November 3, 2024No Comments2 Mins Read
Share Facebook Twitter Pinterest LinkedIn Tumblr Reddit Telegram Email
Public.jpeg
Share
Facebook Twitter LinkedIn Pinterest Email


Federated learning model based on blockchain

picture:

Federated learning model based on blockchain

see more

Credits: Nan SUN, Wei WANG, Yongxin TONG, Kexin LIU

In the Internet of Things, network devices are more vulnerable to various intrusion attacks. Most existing algorithms are trained centrally, which may incur external communication costs and privacy leaks. Furthermore, traditional model training methods are unable to identify new types of unlabeled attacks.

To address these issues, a research team led by Wei WANG published their new search October 15, 2024 at Frontiers of Computing co-published by Higher Education Press and Springer Nature.

The team proposed a federated and distributed intrusion detection method, using the information contained in labeled data as prior knowledge to discover new types of unlabeled attacks. The detection method is verified and tested on the public dataset.

Compared with existing research results, the proposed method can ensure training security and discover new types of attacks.

In the research, a blockchain-based federated learning architecture is established. All participating entities perform model training locally and upload the model parameters to the blockchain. A collaborative model parameter verification mechanism and a proof-of-stake consensus mechanism are adopted, excluding malicious entities from the training process. The blockchain technique is introduced into the training architecture to ensure secure and distributed coordination of federated training.

To detect unknown attack types during local model training, the whole model training process includes three stages: pre-training phase, new attack discovery phase, and model training phase overall. An end-to-end clustering algorithm is used in each entity to distinguish different attack types, adopting the dissimilarity of spatio-temporal characteristics of the dataset. The experiments are performed in the AWID dataset. Experimental data show that compared with existing research methods, the proposed method can better guarantee training security and discover new types of intrusion attacks.

Future work could focus on developing a computationally efficient consensus mechanism capable of supporting the real-time requirements of IoT.

DOÏ: 10.1007/s11704-023-3026-8



Newspaper

Frontiers of Computing

Research method

Experimental study

Research subject

Not applicable

Article title

Federated blockchain-based learning for intrusion detection for the Internet of Things

Article publication date

15-October-2024

Disclaimer: AAAS and EurekAlert! are not responsible for the accuracy of press releases published on EurekAlert! by contributing institutions or for the use of any information via the EurekAlert system.



Source link

Share. Facebook Twitter Pinterest LinkedIn Tumblr Email
Previous ArticleEthereum blobs are ‘incredibly bullish’ for ETH price: research
Next Article What happened in crypto today: Bitcoin just reached new all-time highs!

Related Posts

Blockchain

JP Morgan regulates the first token cash transaction on the public blockchain, using ChainLink, Ondo Finance

May 18, 2025
Blockchain

Bitcoin.com Newsten influences blockchain and cryptographic entrepreneurs paving the way in 2025 according to Credibilityxtext This content is provided by a sponsor. While 2025 persists, blockchain’s progress remain resiluting disruptors in the financial industry.

May 17, 2025
Blockchain

The blockchain project targets 4T $ monopoly on world trade

May 17, 2025
Add A Comment
Leave A Reply Cancel Reply

Single Page Post
Share
  • Facebook
  • Twitter
  • Instagram
  • YouTube
Featured Content
Event

Super Vietnam 2025: Where Blockchain, AI, and Innovation Converge in Southeast Asia’s Rising Tech Powerhouse

May 13, 2025

Vietnam is riding a powerful wave of technological innovation, and Super Vietnam 2025 arrives at…

Event

Istanbul Blockchain Week 2025 Is Back: The Future of Web3 Unfolds in Turkey’s Innovation Hub

May 13, 2025

Leading Web3 marketing agency EAK Digital with official media partner Altcoin Observer is proud to…

1 2 3 … 45 Next
  • Facebook
  • Twitter
  • Instagram
  • YouTube

Shiba Inu Burn Rate Skyrocket, Shib Price Breakout to come?

May 17, 2025

Sequoia Partner caught in a Coinbase data violation, more VC can be affected

May 17, 2025

On surpasses the rivals while the crypto sees the 4th week of entries

May 17, 2025
Facebook X (Twitter) Instagram LinkedIn
  • About us
  • Disclaimer
  • Terms of service
  • Privacy policy
  • Contact us
© 2025 Altcoin Observer. all rights reserved by Tech Team.

Type above and press Enter to search. Press Esc to cancel.

bitcoin
Bitcoin (BTC) $ 103,344.69
ethereum
Ethereum (ETH) $ 2,484.82
tether
Tether (USDT) $ 1.00
xrp
XRP (XRP) $ 2.37
bnb
BNB (BNB) $ 642.84
solana
Solana (SOL) $ 167.27
usd-coin
USDC (USDC) $ 1.00
dogecoin
Dogecoin (DOGE) $ 0.21654
cardano
Cardano (ADA) $ 0.744082
tron
TRON (TRX) $ 0.271478