CH751 퍼지시스템 특강 Uncertainties in Intelligent Systems

Slides:



Advertisements
Similar presentations
Approaches, Tools, and Applications Islam A. El-Shaarawy Shoubra Faculty of Eng.
Advertisements

Outline Administrative issues Course overview What are Intelligent Systems? A brief history State of the art Intelligent agents.
Managing Knowledge in the Digital Firm (II) Soetam Rizky.
Becerra-Fernandez, et al. -- Knowledge Management 1/e -- © 2004 Prentice Hall Chapter 7 Technologies to Manage Knowledge: Artificial Intelligence.
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.
4 Intelligent Systems.
WRSTA, 13 August, 2006 Rough Sets in Hybrid Intelligent Systems For Breast Cancer Detection By Aboul Ella Hassanien Cairo University, Faculty of Computer.
1 Information Requirements by Management Level Strategic Management Tactical Management Operational Management Decisions Information.
© 2002 Franz J. Kurfess Introduction 1 CPE/CSC 481: Knowledge-Based Systems Dr. Franz J. Kurfess Computer Science Department Cal Poly.
CSE 471/598,CBS598 Introduction to Artificial Intelligence Fall 2004
Intelligent Systems Group Emmanuel Fernandez Larry Mazlack Ali Minai (coordinator) Carla Purdy William Wee.
Soft Computing 1 Neuro-Fuzzy and Soft Computing chapter 1 J.-S.R. Jang Bill Cheetham Kai Goebel.
CS : Artificial Intelligence: Representation and Problem Solving Fall 2002 Prof. Tuomas Sandholm Computer Science Department Carnegie Mellon University.
CSE 590ST Statistical Methods in Computer Science Instructor: Pedro Domingos.
© 2001 Franz J. Kurfess Introduction 1 CPE/CSC 580: Knowledge Management Dr. Franz J. Kurfess Computer Science Department Cal Poly.
CIS 410/510 Probabilistic Methods for Artificial Intelligence Instructor: Daniel Lowd.
T. P. Hong 1 Research Artificial Intelligence Expert Systems Machine Learning Knowledge Integration Heuristic Search Parallel Processing Top-down Bottom-up.
CS5201 Intelligent Systems (2 unit) Semester II Lecturer: Adrian O’Riordan Contact: is office is 312, Kane
CSE 515 Statistical Methods in Computer Science Instructor: Pedro Domingos.
ARTIFICIAL INTELLIGENCE Introduction: Chapter Textbook: S. Russell and P. Norvig Artificial Intelligence: A Modern Approach Prentice Hall, 2003,
8/17/ Introduction to Neuro-fuzzy and Soft computing G.Anuradha (Lecture 1)
Artificial Intelligence Dr. Paul Wagner Department of Computer Science University of Wisconsin – Eau Claire.
Introduction: Chapter 1
CH558 Software Agent (Software Agent Technology and Multi-agent Systems) Spring Semester, 2005 Dept. of Computer Science Yonsei University.
CSI Evolutionary Computation Fall Semester, 2009.
© N. Kasabov Foundations of Neural Networks, Fuzzy Systems, and Knowledge Engineering, MIT Press, 1996 INFO331 Machine learning. Neural networks. Supervised.
TECHNOLOGY GUIDE FOUR Intelligent Systems.
An Introduction to Artificial Intelligence and Knowledge Engineering N. Kasabov, Foundations of Neural Networks, Fuzzy Systems, and Knowledge Engineering,
CSI Topics in Pattern Recognition: Gesture Recognition and Robotics Spring Semester, 2010.
10/6/2015 1Intelligent Systems and Soft Computing Lecture 0 What is Soft Computing.
Computational Intelligence II Lecturer: Professor Pekka Toivanen Exercises: Nina Rogelj
Introduction to Artificial Intelligence and Soft Computing
CSI Topics in Fuzzy Systems : Life Log Management Fall Semester, 2008.
CS621 : Artificial Intelligence Pushpak Bhattacharyya CSE Dept., IIT Bombay Lecture 1 - Introduction.
COMP 304: Artificial Intelligence. General Lecturer: Nelishia Pillay Office: Room F3 Telephone:
Course presentation: FLA Fuzzy Logic and Applications 4 CTI, 2 nd semester Doru Todinca in Courses presentation.
1 2010/2011 Semester 2 Introduction: Chapter 1 ARTIFICIAL INTELLIGENCE.
Fall  Types of Uncertainty 1. Randomness : Probability Knowledge about the relative frequency of each event in some domain Lack of knowledge which.
© 2002 Franz J. Kurfess Introduction 1 CPE/CSC 481: Knowledge-Based Systems Dr. Franz J. Kurfess Computer Science Department Cal Poly.
Intelligent System Ming-Feng Yeh Department of Electrical Engineering Lunghwa University of Science and Technology Website:
CH751 퍼지시스템 특강 Uncertainties in Intelligent Systems 2004 년도 제 1 학기.
Course Overview  What is AI?  What are the Major Challenges?  What are the Main Techniques?  Where are we failing, and why?  Step back and look at.
CSI Evolutionary Computation Fall Semester, 2011.
CSI8751 인공지능특강 Hybrid Intelligent Systems: Methodologies and Applications 2012 년도 제 1 학기.
CSE & CSE6002E - Soft Computing Winter Semester, 2011 Course Review.
Chapter 1: Introduction to Neuro-Fuzzy (NF) and Soft Computing (SC)
Spring, 2005 CSE391 – Lecture 1 1 Introduction to Artificial Intelligence Martha Palmer CSE391 Spring, 2005.
CH751 인공지능특강 Artificial Life: Basics and Applications 2003 년도 제 1 학기.
TECHNOLOGY GUIDE FOUR Intelligent Systems. TECHNOLOGY GUIDE OUTLINE TG4.1 Introduction to Intelligent Systems TG4.2 Expert Systems TG4.3 Neural Networks.
Bayesian Decision Theory Introduction to Machine Learning (Chap 3), E. Alpaydin.
Introduction to Artificial Intelligence Heshaam Faili University of Tehran.
Inexact Reasoning 2 Session 10
CHAPTER 5 Handling Uncertainty BIC 3337 EXPERT SYSTEM.
Artificial Intelligence
2009: Topics Covered in COSC 6368
Inexact Reasoning 2 Session 10
Artificial Intelligence (CS 370D)
Sistem Kecerdasan Buatan
TECHNOLOGY GUIDE FOUR Intelligent Systems.
RESEARCH APPROACH.
Artificial Intelligence and Lisp Lecture 13 Additional Topics in Artificial Intelligence LiU Course TDDC65 Autumn Semester,
First work in AI 1943 The name “Artificial Intelligence” coined 1956
EXPERT SYSTEMS.
كاربردهاي آن در مهندسي صنايع
Introduction to Artificial Intelligence and Soft Computing
CSE 515 Statistical Methods in Computer Science
Intelligent Systems and
Introduction to Artificial Intelligence – CS364
2004: Topics Covered in COSC 6368
Introduction to Probability
Presentation transcript:

CH751 퍼지시스템 특강 Uncertainties in Intelligent Systems 2004년도 제 1학기

강의진 소개 담당 교수 조성배(공대 C515;  2123-2720; sbcho@cs.yonsei.ac.kr) 웹 페이지 : http://sclab.yonsei.ac.kr/Courses/04FuSys 강의 시간 화 6, 7, 목 7 (C520) 면담 시간 월 8, 9, 수 9 담당 조교 황금성

Uncertainties in Intelligent Systems Dealing with uncertain and imprecise information has been one of the major issues in almost all intelligent system Decision making systems, diagnostic systems, intelligent agent systems, planning systems, data mining, etc Various approaches to cope with uncertain, imprecise, vague, and even inconsistent information Bayesian and probabilistic methods, belief networks, softcomputing, etc Softcomputing Neural networks, fuzzy theory, approximate reasoning, derivative-free optimization methods (GA), etc Synergy allows SC to incorporate human knowledge effectively, deal with imprecision and uncertainty, and learn to adapt to unknown or changing environments for better performance  intelligent systems to mimic human intelligence in thinking, learning, reasoning, etc

수업 교재 Textbook N. Kasabov, Foundations of Neural Networks, Fuzzy Systems and Knowledge Engineering, MIT Press, 1996 References D.B. Fogel and C.J. Robinson, Computational Intelligence, Wiley Inter-Science, 2003 J. Yen and R. Langari, Fuzzy Logic: Intelligence, Control and Information, Prentice Hall, 1999 D. Ruan, Intelligent Hybrid Systems: Fuzzy Logic, Neural Networks and Genetic Algorithms, Kluwer Academic Publishers, 1997 I. Graham and P. L. Jones, Chapman and Hall Computing, 1988

Evaluation Criteria Evaluation Criteria Term Project (written report & oral presentation) : 60% Preliminary proposal 10% Final proposal 10% Presentation 10% Final report 30% Written Exams : 20% Homework (programming (10) + reports (2*5)) : 20% Term Project (Oral presentation is required) : Theoretical Issue (analysis, experiment, simulation) : Originality Interesting Programming (Game, Demo, etc) : Performance Survey : Completeness

Course Schedule 3/2, 3/4 : 과목소개 및 SC/AI/KE 개요 3/9, 3/11 : Rule-based systems, expert systems, fuzzy systems 3/16, 3/18 : Knowledge representation 3/23, 3/25 : Uncertainties in knowledge-based systems 3/30, 4/1 : Bayesian Network 특강 4/6, 4/8 : 1차 프로그래밍 과제 4/13, 4/15 : Machine learning methods for knowledge engineering 4/20 : 중간시험 4/27, 4/29 : 프로젝트 제안서 발표 5/4, 5/6 : Fuzzy sets and fuzzy logic 5/11, 5/13 : Fuzzy systems 5/18, 5/20 : Fuzzy system applications 5/25, 5/27 : Introduction to neural networks 6/1, 6/3 : Hybrid systems 6/8, 6/10 : 프로젝트 결과 발표 6/15 : 기말시험