Skip to content
  • HOME
  • MYTHESES
  • BLOG
  • AI ASSISTANT
  • GUIDE & TUTORIAL
    • English
    • Français
    • 日本語
    • 中文(简体)
    • 中文(繁體)
    • اللغة العربية
    • हिंदी
  • Feedback
  • Book Bag: 0 items (Full)
Advanced
  • Enhanced data clustering and c...
  • Cite this
  • Text this
  • Print
  • Export Record
    • Export to RefWorks
    • Export to EndNoteWeb
    • Export to EndNote
  • Add to Book Bag Remove from Book Bag
  • Permanent link

QR Code

Enhanced data clustering and classification using auto-associative neural networks and self organizing maps

Also available in printed version

Bibliographic Details
Main Author: Zalhan Mohd. Zin
Other Authors: Rubiyah Yusof, supervisor
Format: Doctoral thesis
Published: Universiti Teknologi Malaysia 2025
Subjects:
Technology
Online Access:https://utmik.utm.my/handle/123456789/104509
Abstract Abstract here
  • Holdings
  • Description
  • Similar Items
  • Staff View

Internet

https://utmik.utm.my/handle/123456789/104509

Similar Items

  • EnhancerNet: A Self-Organizing Map-Based DNA Sequence to Enhancer Motif Activation Map Encoding Method for Enhancer Classification with Convolutional Neural Network Analysis
    by: Shu En, Chia
    Published: (2023)
  • A Novel Self-Organizing Mapping Model for Multidimensional Data Visualization, Classification, and Clustering
    by: Yii, Ming Leong
    Published: (2017)
  • Development of Hybrid Convolutional Neural Network and Auto-Regressive Integrated Moving Average for Skin Cancer Classification
    by: KA CHIN, CHEE
    Published: (2022)
  • A Hybrid Artificial Neural Network Model For Data Visualisation, Classification, And Clustering
    by: Teh, Chee Siong
    Published: (2006)
  • An improved self organizing map using jaccard new measure for textual bugs data clustering
    by: Ahmed, Attika
    Published: (2018)

Search Options

  • Search History
  • Advanced Search

Find More

  • Browse the Catalog
  • Browse Alphabetically
  • Explore Channels
  • Course Reserves
  • New Items

Need Help?

  • Search Tips
  • Ask a Librarian
  • FAQs