Artificial Neural Networks and Machine Learning – ICANN 2011, Part 1
Book Details
| Author | Timo Honkela Włodzisław Duch |
|---|---|
| Publisher | Springer |
| Published Year | 2011 |
| Pages | 413 |
| Language | English |
| ISBN-10 | 9783642217340 |
| ISBN-13 | 978-3642217340 |
Artificial Neural Networks and Machine Learning ICANN 2011 Part 1 is a collection of peer-reviewed research papers presented at the 21st International Conference on Artificial Neural Networks. Edited by Timo Honkela and Wlodzislaw Duch, the book focuses on advancements in neural networks, deep learning, and machine learning. It is an ideal reference for researchers and students in the field of artificial intelligence.
Prepare for Interview
- JavaScript Interview Questions for 5+ Years Experience
- JavaScript Interview Questions for 2–5 Years Experience
- JavaScript Interview Questions for 1–2 Years Experience
- JavaScript Interview Questions for 0–1 Year Experience
- JavaScript Interview Questions For Fresher
- SQL Interview Questions for 5+ Years Experience
- SQL Interview Questions for 2–5 Years Experience
- SQL Interview Questions for 1–2 Years Experience
- SQL Interview Questions for 0–1 Year Experience
- SQL Interview Questions for Freshers
- Design Patterns in Python
- Dynamic Programming and Recursion in Python
- Trees and Graphs in Python
- Linked Lists, Stacks, and Queues in Python
- Sorting and Searching in Python
- Debugging in Python
- Unit Testing in Python
- Asynchronous Programming in PYthon
Tutorials
Follow us on Linkedin
Random Blogs
- AI Agents & Autonomous Systems – The Future of Self-Driven Intelligence
- Best Platform to Learn Digital Marketing in Free
- Understanding HTAP Databases: Bridging Transactions and Analytics
- Types of Numbers in Python
- The Ultimate Guide to Artificial Intelligence (AI) for Beginners
- Store Data Into CSV File Using Python Tkinter GUI Library
- Create Virtual Host for Nginx on Ubuntu (For Yii2 Basic & Advanced Templates)
- Window Functions in SQL – The Ultimate Guide
- Avoiding the Beginner’s Trap: Key Python Fundamentals You Shouldn't Skip
- Understanding LLMs (Large Language Models): The Ultimate Guide for 2025
- Understanding OLTP vs OLAP Databases: How SQL Handles Query Optimization
- Python Challenging Programming Exercises Part 2
- Quantum AI – The Future of AI Powered by Quantum Computing
- String Operations in Python
- Datasets for analyze in Tableau
- Role of Digital Marketing Services to Uplift Online business of Company and Beat Its Competitors
Datasets for Machine Learning
- Awesome-ChatGPT-Prompts
- Amazon Product Reviews Dataset
- Ozone Level Detection Dataset
- Bank Transaction Fraud Detection
- YouTube Trending Video Dataset (updated daily)
- Covid-19 Case Surveillance Public Use Dataset
- US Election 2020
- Forest Fires Dataset
- Mobile Robots Dataset
- Safety Helmet Detection
- All Space Missions from 1957
- OSIC Pulmonary Fibrosis Progression Dataset
- Wine Quality Dataset
- Google Audio Dataset
- Iris flower dataset










