Poročilo s konference CEC 2011 Gregor Papa. program New Orleans –5.-8. junij 2011 program –10 tutorialov –3 vabljena plenarna predavanja –31 vzporednih.

Slides:



Advertisements
Similar presentations
ADAPTIVE SYSTEMS & USER MODELING Alexandra I. Cristea USI intensive course Adaptive Systems April-May 2003.
Advertisements

MASINGER group Dr. Ferrante Neri Department of Mathematical Information Technology, University of Jyväskylä, Finland 10th May 2010.
Outline Administrative issues Course overview What are Intelligent Systems? A brief history State of the art Intelligent agents.
A Hybrid IWO/PSO Algorithm for Fast and Global Optimization Hossein Hajimirsadeghi.
Multi-Objective Optimization NP-Hard Conflicting objectives – Flow shop with both minimum makespan and tardiness objective – TSP problem with minimum distance,
An Introduction to Artificial Intelligence. Introduction Getting machines to “think”. Imitation game and the Turing test. Chinese room test. Key processes.
AI 授課教師:顏士淨 2013/09/12 1. Part I & Part II 2  Part I Artificial Intelligence 1 Introduction 2 Intelligent Agents Part II Problem Solving 3 Solving Problems.
Biologically Inspired AI (mostly GAs). Some Examples of Biologically Inspired Computation Neural networks Evolutionary computation (e.g., genetic algorithms)
Computational Intelligence Research Group Principal investigators: Prof Andries Engelbrecht Mr Bryton Masiye
1 Project Ideas in Computer Science Keld Helsgaun.
Yaochu Jin FTR/HRE-D August, From Interactive Evolutionary Algorithms to Agent-based Evolutionary Design Interactive Evolutionary Algorithm –When.
Central question for the sciences of complexity. How do large networks with.
Natural Computation and Applications Xin Yao Natural Computation Group School of Computer Science The University of Birmingham.
Intelligent Agent Systems. Artificial Intelligence Systems that think like humans Systems that think rationally Systems that act like humans Systems that.
Computational Intelligence Dr. Garrison Greenwood, Dr. George Lendaris and Dr. Richard Tymerski
Evolutionary Algorithms Simon M. Lucas. The basic idea Initialise a random population of individuals repeat { evaluate select vary (e.g. mutate or crossover)
A. How does life arise from the nonliving? 1.Generate a molecular proto-organism in vitro. 2.Achieve the transition to life in an artificial chemistry.
© 2007 The MITRE Corporation. All rights reserved Approved for Public Release; Distribution Unlimited Potential New Ideas from Complexity Science.
Natural Computation: computational models inspired by nature Dr. Daniel Tauritz Department of Computer Science University of Missouri-Rolla CS347 Lecture.
Intelligent Systems Group Emmanuel Fernandez Larry Mazlack Ali Minai (coordinator) Carla Purdy William Wee.
CS 1 – Introduction to Computer Science Introduction to the wonderful world of Dr. T Daniel Tauritz, Ph.D. Associate Professor of Computer Science.
CS 1 – Introduction to Computer Science Introduction to the wonderful world of Dr. T Dr. Daniel Tauritz.
D Nagesh Kumar, IIScOptimization Methods: M1L4 1 Introduction and Basic Concepts Classical and Advanced Techniques for Optimization.
Revision Michael J. Watts
A Genetic Algorithms Approach to Feature Subset Selection Problem by Hasan Doğu TAŞKIRAN CS 550 – Machine Learning Workshop Department of Computer Engineering.
CSM6120 Introduction to Intelligent Systems Other evolutionary algorithms.
Department of Information Technology Indian Institute of Information Technology and Management Gwalior AASF hIQ 1 st Nov ‘09 Department of Information.
Introduction to Machine Learning MSE 2400 EaLiCaRA Spring 2015 Dr. Tom Way Based in part on notes from Gavin Brown, University of Manchester.
Artificial Intelligence at Imperial Dr. Simon Colton Computational Bioinformatics Laboratory Department of Computing.
Introduction to Genetic Algorithms and Evolutionary Computation
Carlos Eduardo Maldonado Research Professor Universidad del Rosario INNOVATION AND COMPLEXITY.
Swarm Computing Applications in Software Engineering By Chaitanya.
SWARM INTELLIGENCE Sumesh Kannan Roll No 18. Introduction  Swarm intelligence (SI) is an artificial intelligence technique based around the study of.
Slide 1 Mixed Model Production lines  2000 C.S.Kanagaraj Mixed Model Production Lines C.S.Kanagaraj ( Kana + Garage ) IEM 5303.
Computational Intelligence II Lecturer: Professor Pekka Toivanen Exercises: Nina Rogelj
Modern Heuristic Optimization Techniques and Potential Applications to Power System Control Mohamed A El-Sharkawi The CIA lab Department of Electrical.
Kavita Singh CS-A What is Swarm Intelligence (SI)? “The emergent collective intelligence of groups of simple agents.”
CSC & IS Centrul pentru studiul complexit ă ii Intelligent Systems group ARIA – UBB csc.centre.ubbcluj.ro.
Using Interactive Evolution for Exploratory Data Analysis Tomáš Řehořek Czech Technical University in Prague.
5. delavnica AVN (algoritmi po vzorih iz narave) Ljubljana, 20. april 2006.
Introduction to Evolutionary Computation Prabhas Chongstitvatana Chulalongkorn University WUNCA, Mahidol, 25 January 2011.
Neural Networks and Machine Learning Applications CSC 563 Prof. Mohamed Batouche Computer Science Department CCIS – King Saud University Riyadh, Saudi.
Master’s Degree in Computer Science. Why? Acquire Credentials Learn Skills –Existing software: Unix, languages,... –General software development techniques.
Pac-Man AI using GA. Why Machine Learning in Video Games? Better player experience Agents can adapt to player Increased variety of agent behaviors Ever-changing.
Chapter 1: Introduction to Neuro-Fuzzy (NF) and Soft Computing (SC)
CS382 Introduction to Artificial Intelligence Lecture 1: The Foundations of AI and Intelligent Agents 24 January 2012 Instructor: Kostas Bekris Computer.
Genetic Algorithms and TSP Thomas Jefferson Computer Research Project by Karl Leswing.
General information Theoretic basis of evolutionary computing. The general scheme of evolutionary algorithms General information Theoretic basis of evolutionary.
Chapter 9 : Application Areas. 2 Some Advance Application Areas of Computers  Software Development  Artificial Intelligence  Robotics  Industrial.
CS 1010– Introduction to Computer Science Daniel Tauritz, Ph.D. Associate Professor of Computer Science Director, Natural Computation Laboratory Academic.
Arts & Music Type : Image. Business Type : Image.
Arts & Music Type : Image. Business Type : Image.
Sub-fields of computer science. Sub-fields of computer science.
Accelerated B.S./M.S An approved Accelerated BS/MS program allows an undergraduate student to take up to 6 graduate level credits as an undergraduate.
Artificial intelligence (AI)
CS 1010– Introduction to Computer Science
RESEARCH APPROACH.
Future Technologies FTC 2016 Future Technologies Conference December 2016 San Francisco, United States.
Introduction to Soft Computing
Probability-based Evolutionary Algorithms
COMP 4640 Intelligent & Interactive Systems
What is Pattern Recognition?
Options for Stage 3 16th March 2018.
Genetic Algorithms and TSP
رایانش تکاملی evolutionary computing
Centre for Emergent Computing
Finance Type : Image Type : Image Type : Image Type : Image
Multi-Objective Optimization
Lecture 4. Niching and Speciation (1)
Introduction to Artificial Intelligence Instructor: Dr. Eduardo Urbina
Presentation transcript:

Poročilo s konference CEC 2011 Gregor Papa

program New Orleans –5.-8. junij 2011 program –10 tutorialov –3 vabljena plenarna predavanja –31 vzporednih sekcij –20 posebnih sekcij in tirov –310 referatov in 106 posterjev

plenarna predavanja Plenary Talk: Analysis by Synthesis Plenary Talk: Computer Aided Algorithm Design : Automated Tuning, Configuration, Selection and Beyond Plenary Talk: Darwin's Magic : Evolutionary Computation in Nanoscience, Bioinformatics and Systems Biology

tutoriali i Introduction to Evolutionary Computation (Daniel Ashlock) Parallel and Distributed Evolutionary Algorithms (El-Ghazali Talbi) A Survey of Representations for Evolutionary Algorithms (Daniel Ashlock) Applying Computational Intelligence - How to Create Value (Arthur Kordon) Molecular Biology for Computational Scientists (Wendy Ashlock)

tutoriali ii Industrial Applications of Evolutionary Algorithms (Giovanni Squillero) Computational Intelligence and Games (Julian Togelius and Simon Lucas) Medical Applications of EC (Stephen Smith) Incorporating Social Intelligence into Virtual Worlds (Robert G. Reynolds) The Art of Evolutionary Algorithms Programming (J. J. Merelo)

delavnici in tekmovanja Workshop: Agent-Based Computational Economics and Finance Workshop: Human-like Bots Competition: Human-like Bot: A competition for CEC2011 Competition: Ms. Pac-Man vs. Ghost-Team Competition Competition: The Physical Travelling Salesperson Problem Competition: Testing Evolutionary Algorithms on Real-world Numerical Optimization Problems

sekcije i Algorithmic Evaluations of Genetic Programming Algorithmic Innovations in Evolution Strategies Ant Approaches to Complex Problems Art and Music Artificial Ecology and Artificial Life Biometrics, Bioinformatics and Biomedical Applications Clustering and Data Mining Coevolutionary Systems Cultural and Immune Approaches to Complex Problems Differential Evolution Approaches to Complex Problems

sekcije ii Emerging Approaches to Large Scale Optimization Problems Emerging Areas Engineering Applications Estimation of Distribution Approaches to Complex Problems Evolutionary Computation Theory Evolutionary Games Evolutionary Games and Multi-agent Systems Evolutionary Robotics Evolvable Hardware and Software Evolved Neural Networks and Numerical Optimization

sekcije iii Fitness Landscapes and Learning Heuristics and Hyper Heuristics Innovations in Evolutionary Programming Innovations in PSO Algorithms Learning Classifier Systems Memetic Algorithms for Complex Problems Multi-objective Optimization Novel Applications Real World Applications Representation and Operators TSP and Other Routing Problems

posebne sekcije Autonomous Agent Learning Evolution of Developmental and Generative Systems Evolutionary Algorithms with Statistical & Machine Learning Techniques Evolutionary Computation in Dynamic and Uncertain Environments Evolutionary Computation in Finance Decision Making Evolutionary Computation in Medical Image Analysis Evolutionary Computation in Network Optimization Greedy Selection in Evolutionary Computation Hardware Aspects of Bio-Inspired Architectures and Systems Meta-heuristic Approaches for Global Continuous Optimization Nature Inspired Techniques for Structural Design, Optimization and Identification Problems Nature-inspired Constrained Optimization

posebni tiri Artificial Bee Colony Algorithm Complex Networks and Evolutionary Computation Computational Intelligence and Games Computational Intelligence in Bioinformatics and Computational Biology Differential Evolution EC on Many-core Architecture to Solve Large-scale Problems Evolutionary Computer Vision

slovenski prispevek i sekcija Hardware Aspects of Bio-Inspired Architectures and Systems –Optimal On-Line Built-In Self-Test Structure for System-Reliability Improvement (Gregor Papa, Tomasz Garbolino)

slovenski prispevek ii tekmovanje Testing Evolutionary Algorithms on Real-world Numerical Optimization Problems –The Continuous Differential Ant-Stigmergy Algorithm Applied to Real-World Optimization Problems (Peter Korošec, Jurij Šilc)

družabni dogodki banket s podelitvijo nagrad večerja na Mississippiju