CSI6558 Software Agent (Intelligent and Cognitive Agents) Spring Semester, 2009 Dept. of Computer Science Yonsei University.

Slides:



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

Cognitive Systems, ICANN panel, Q1 What is machine intelligence, as beyond pattern matching, classification and prediction. What is machine intelligence,
Chapter 16: Multiagent Systems Service-Oriented Computing: Semantics, Processes, Agents – Munindar P. Singh and Michael N. Huhns, Wiley, 2005.
Will Androids Dream of Electric Sheep? A Glimpse of Current and Future Developments in Artificial Intelligence Henry Kautz Computer Science & Engineering.
4-1 Management Information Systems for the Information Age Copyright 2002 The McGraw-Hill Companies, Inc. All rights reserved Chapter 4 Decision Support.
A Mobile Agent Approach for Ubiquitous and Personalized eHealth Information Systems Panagiotis Germanakos 1, Constantinos Mourlas 1, George Samaras 2 1.
Artificial Intelligence and Lisp Lecture 13 Additional Topics in Artificial Intelligence LiU Course TDDC65 Autumn Semester, 2010
Emergent Adaptive Lexicons Luc Steels 1996 Artificial Intelligence Laboratory Vrije Universiteit Brussel Presented by Achim Ruopp University of Washington.
Intelligent Agent Systems. Artificial Intelligence Systems that think like humans Systems that think rationally Systems that act like humans Systems that.
Provisional draft 1 ICT Work Programme Challenge 2 Cognition, Interaction, Robotics NCP meeting 19 October 2006, Brussels Colette Maloney, PhD.
The Semantic Web Week 1 Module Content + Assessment Lee McCluskey, room 2/07 Department of Computing And Mathematical Sciences Module.
Introduction to Artificial Intelligence Prof. Kathleen McKeown 722 CEPSR, TAs: Kapil Thadani 724 CEPSR, Phong Pham TA Room.
COGN1001 Introduction to Cognitive Science Sept 2006 :: Lecture #1 :: Joe Lau :: Philosophy HKU.
Chapter 12: Intelligent Systems in Business
McGraw-Hill/Irwin ©2005 The McGraw-Hill Companies, All rights reserved ©2005 The McGraw-Hill Companies, All rights reserved McGraw-Hill/Irwin.
Capstone Design Project (CDP) Civil Engineering Department First Semester 1431/1432 H 10/14/20091 King Saud University, Civil Engineering Department.
Biointelligence Laboratory School of Computer Science and Engineering Seoul National University Cognitive Robots © 2014, SNU CSE Biointelligence Lab.,
Vedrana Vidulin Jožef Stefan Institute, Ljubljana, Slovenia
1. Human – the end-user of a program – the others in the organization Computer – the machine the program runs on – often split between clients & servers.
Artificial Intelligence By Ryan Shoultes & Jeremy Creighton.
제 5 주. Art and Design Computer Animation: from Avatars to Unrestricted Autonomous Actors A. Pina, E. Cerezo and F. Seron, Computers & Graphics, vol. 24,
IRC Learning and the Novamente Cognition Engine Imitative-Reinforcement-Corrective Learning: A Robust Learning Methodology for Virtual Pets and Avatars.
1 An Introduction to Artificial Life The Choice Methodology: A New Foundation of Structured Machine Life Department of Adaptive Systems Institute of Information.
CH558 Software Agent (Software Agent Technology and Multi-agent Systems) Spring Semester, 2005 Dept. of Computer Science Yonsei University.
Steps Toward an AGI Roadmap Włodek Duch ( Google: W. Duch) AGI, Memphis, 1-2 March 2007 Roadmaps: A Ten Year Roadmap to Machines with Common Sense (Push.
CSI Evolutionary Computation Fall Semester, 2009.
1 Learning Agents Laboratory Computer Science Department George Mason University Prof. Gheorghe Tecuci 1. Introduction.
© Yilmaz “Agent-Directed Simulation – Course Outline” 1 Course Outline Dr. Levent Yilmaz M&SNet: Auburn M&S Laboratory Computer Science &
CSI Topics in Pattern Recognition: Gesture Recognition and Robotics Spring Semester, 2010.
Complex Systems Engineering CSE - SWE 488 Prof. Mohamed Batouche
Computational Organization Theory Aaron Drajpuch WPI, CS525M, Spring 2002 Introduction What is an Organization What is Computational Organization Theory.
MICHAEL FINE Artificial Intelligence and The Singularity 1.
April 28, 2004John C. Giordano – Masters Project Presentation1 Exploring the Constraints of Human Behavior Representation A Masters Project Presentation.
M.S in CS Introduction & more How do I select a concentration area? by Xudong Yu What is a concentration area? What is a topic paper? Thesis...is that.
Introduction to Science Informatics Lecture 1. What Is Science? a dependence on external verification; an expectation of reproducible results; a focus.
Weak AI: Can Machines Act Intelligently? Some things they can do: –Computer vision: face recognition from a large set –Robotics: autonomous (mostly) car.
CSI Topics in Fuzzy Systems : Life Log Management Fall Semester, 2008.
I Robot.
CS621 : Artificial Intelligence Pushpak Bhattacharyya CSE Dept., IIT Bombay Lecture 1 - Introduction.
CMSC104 Problem Solving and Computer Programming Spring 2011 Section 04 John Park.
Game Theory, Social Interactions and Artificial Intelligence Supervisor: Philip Sterne Supervisee: John Richter.
A New Artificial Intelligence 7 Kevin Warwick. Embodiment & Questions.
Evolving the goal priorities of autonomous agents Adam Campbell* Advisor: Dr. Annie S. Wu* Collaborator: Dr. Randall Shumaker** School of Electrical Engineering.
Riga Technical University Department of System Theory and Design Usage of Multi-Agent Paradigm in Multi-Robot Systems Integration Assistant professor Egons.
LI Aijun. Introduce yourself   Where you from   Major   supervisor.
CH751 퍼지시스템 특강 Uncertainties in Intelligent Systems 2004 년도 제 1 학기.
CSI Evolutionary Computation Fall Semester, 2011.
CSI8751 인공지능특강 Hybrid Intelligent Systems: Methodologies and Applications 2012 년도 제 1 학기.
Welcome and Introduction to the Course MSE 2400 EaLiCaRA Spring 2015 Dr. Tom Way.
Chapter 1: Introduction to Neuro-Fuzzy (NF) and Soft Computing (SC)
Introduction to HCI Lecture #1.
Software Agents & Agent-Based Systems Sverker Janson Intelligent Systems Laboratory Swedish Institute of Computer Science
Vedrana Vidulin Jožef Stefan Institute, Ljubljana, Slovenia
Cognitive Architectures and General Intelligent Systems Pay Langley 2006 Presentation : Suwang Jang.
CH751 인공지능특강 Artificial Life: Basics and Applications 2003 년도 제 1 학기.
Introduction: What is AI? CMSC Introduction to Artificial Intelligence January 7, 2003.
Complex Systems Engineering SwE 488 Artificial Complex Systems Prof. Dr. Mohamed Batouche Department of Software Engineering CCIS – King Saud University.
FNA/Spring CENG 562 – Machine Learning. FNA/Spring Contact information Instructor: Dr. Ferda N. Alpaslan
EEL 5937 Multi Agent Systems -an introduction-. EEL 5937 Content What is an agent? Communication Ontologies Mobility Mutability Applications.
Introduction to Artificial Intelligence Prof. Kathleen McKeown 722 CEPSR Tas: Andrew Rosenberg Speech Lab, 7 th Floor CEPSR Sowmya Vishwanath TA Room.
EEL 5937 Multi Agent Systems -an introduction-. EEL 5937 Content What is an agent? Communication Ontologies Mobility Mutability Applications.
Learning Fast and Slow John E. Laird
Intelligent Mobile Robotics
Eick: Introduction Machine Learning
Overview of Year 1 Progress Angelo Cangelosi & ITALK team
Artificial Intelligence and Lisp Lecture 13 Additional Topics in Artificial Intelligence LiU Course TDDC65 Autumn Semester,
Artificial Intelligence introduction(2)
CH751 퍼지시스템 특강 Uncertainties in Intelligent Systems
Christoph F. Eick: A Gentle Introduction to Machine Learning
Introduction to Artificial Intelligence Instructor: Dr. Eduardo Urbina
Presentation transcript:

CSI6558 Software Agent (Intelligent and Cognitive Agents) Spring Semester, 2009 Dept. of Computer Science Yonsei University

Course Objectives 4 introduce the student to the concept of an agent and cognitive system, and the main applications for which they are appropriate; 4 introduce the main issues surrounding the design of intelligent agents; 4 introduce the main issues surrounding the design of a cognitive system; and 4 introduce a contemporary platform for implementing agents and cognitive systems.

Learning Outcomes 4 Upon completing this course, a student will: –understand the notion of an agent, how agents are distinct from other software paradigms (e.g., objects), and understand the characteristics of applications that lend themselves to an agent- oriented solution; –understand the key issues associated with constructing agents capable of intelligent autonomous action, and the main approaches taken to developing such agents; –understand the key issues in designing societies of agents that can effectively cooperate in order to solve problems, including an understanding of the key types of cognitive capabilities possible in such systems; –understand the main application areas of agent-based solutions, and be able to develop a meaningful agent-based system using a contemporary agent development platform.

Contact 4 Instructor –Prof. Sung-Bae Cho (Eng. C515;  ; 4 Web-page : 4 Class hours –Tue 11:00 ~ 11:50, Thu 11:00~12:50 (Eng. A542, A646) 4 Office hour –The 17:00 ~ 19:00 4 TA –Dr. Jin-Hyuk Hong / Mr. Sungsoo Lim

4 Textbook –Readings in Software Agents 4 References –[Woo] M. Wooldridge, An Introduction to MultiAgent Systems. John Wiley & Sons, ISBN X. –Jeffrey M. Bradshaw (Ed), Software Agents, MIT Press, 1997 –Michael N. Huhns, Munindar P. Singh, Readings in Agents, Morgan Kaufmann, 1998 –Jacques Ferber, Multi-Agent Systems, Addison-Wesley, 1999 –Akira Namatame (Ed), Agent-based Approaches in Economic and Social Complex Systems, 2002 –Related Conference Proceedings (IJCAI, AAAI, PRICAI, IAT, etc) –UMBC site : –MIT site : –SAT site : Course Materials

Course Schedule 주차 Topics 비고 1 강의소개 2 지능형 에이전트 : 개요 3 지능형 에이전트 : 핵심 기술 4 지능형 에이전트 : 인지구조 5 인지기반 지능형 에이전트 설계 : 인식 (1) 주의집중, 의식, 언어 등 6 인지기반 지능형 에이전트 설계 : 인식 (2) 주의집중, 의식, 언어 등 7 프로젝트 제안서 발표 8 중간시험 기간 9 인지기반 지능형 에이전트 설계 : 기억동작 메모리, 에피소딕 및 시멘틱 메모리 10 인지기반 지능형 에이전트 설계 : 학습 강화학습 11 인지기반 지능형 에이전트 설계 : 기타 감성, 소셜 인지 등 12 지능형 에이전트 응용 : 추천 에이전트 13 지능형 에이전트 응용 : 게임 에이전트 14 지능형 에이전트 응용 : 대화 / 감성 에이전트 15 프로젝트 결과 발표 16 기말시험 기간

Papers: Cognitive Capabilities (1) 4 4 주차 : 인지구조 –Cognitive architectures: Research issues and challenges, Cognitive Systems Research, –Theoretical status of computational cognitive modeling, Cognitive Systems Research, –Human symbol manipulation within an integrated cognitive architecture, Cognitive Science, –The importance of cognitive architectures: An analysis based on CLARION, Journal of Experimental and Theoretical Artificial Intelligence, –A Gentle Introduction to Soar: 2006 update, 주차 : 인지기반 지능형 에이전트 설계 : 인식 (1) –A computational neuroscience approach to consciousness, Neural Networks, –A model of agent consciousness and its implementation, Neurocomputing, –A Neural Global Workspace Model for Conscious Attention, Neural Networks, –Computational studies of consciousness, Progress in Brain Research, 주차 : 인지기반 지능형 에이전트 설계 : 인식 (2) –Associative computer: a hybrid connectionistic production system, Cognitive Systems Research, –Attention as a controller, Neural Networks, –Global workspace theory of consciousness: toward a cognitive neuroscience of human experience, Progress in Brain Research, –Progress in machine consciousness, Consciousness and Cognition, 2008.

Papers: Cognitive Capabilities (2) 4 7 주차 : 인지기반 지능형 에이전트 설계 : 기억 –How conscious experience and working memory interact, Trends in Cognitive Sciences, –Probabilistic inference in human semantic memory, Trends in Cognitive Sciences, –Sparse distributed memory for ‘conscious’ software agents, Cognitive Systems Research, –Pre-frontal executive committee for perception, working memory, attention, long-term memory, motor control, and thinking: A tutorial review, Consciousness and Cognition, 주차 : 인지기반 지능형 에이전트 설계 : 학습 –Emergence of self-organized symbol-based communication in artificial creatures, Cognitive Systems Research, –Hybridizing evolutionary computation and reinforcement learning for the design of almost universal controllers for autonomous robots, Neurocomputing, –Learning HMM-based cognitive load models for supporting human-agent teamwork, Cognitive Systems Research, –Application of reinforcement learning to the game of Othello, Computers & Operations Research, 주차 : 인지기반 지능형 에이전트 설계 : 기타 –A computational unification of cognitive behavior and emotion, Cognitive Systems Research, –A conceptual and empirical framework for the social distribution of cognition: The case of memory, Cognitive Systems Research, –Affective guidance of intelligent agents: How emotion controls cognition, Cognitive Systems Research, –Google home: Experience, support and re-experience of social home activities, Information Science, 2008.

Papers: Application 4 12 주차 : 지능형 에이전트 응용 : 추천 / 멀티 에이전트 –A cognitive approach for agent-based personalized recommendation, Knowledge-Based Systems, –An ontology, intelligent agent-based framework for the provision of semantic web services, Expert Systems with Applications, –A synthetical approach for blog recommendation: Combining trust, social relation, and semantic analysis, Expert Systems with Applications, –Building an expert travel agent as a software agent, Expert Systems with Applications, 주차 : 지능형 에이전트 응용 : 게임 에이전트 –Knowledge acquisition for adaptive game AI, Science of Computer Programming, –Coevolution versus self-play temporal difference learning for acquiring position evaluation in small-board go, IEEE TEC, –Generating Ambient Behaviors in Computer Role-Playing Games, IEEE Intelligent Systems, –Teaming up humans with autonomous synthetic characters, Artificial Intelligence, 주차 : 지능형 에이전트 응용 : 대화 / 감성 에이전트 –A BDI approach to infer student’s emotions in an intelligent learning environment, Computers & Education, –Emotional agents: A modeling and an application, Information and Software Technology, –Fully generated scripted dialogue for embodied agents, Artificial Intelligence, –Intentional systems: Review of neurodynamics, modeling, and robotics implementation, Physics of Life Reviews, 2008.

Evaluation Criteria 4 Evaluation Criteria –Term Project (written report and an oral presentation): 50% –Presentation: 30% –Homeworks and Class Participation : 20% 4 Term Project (Oral presentation is required) : –Theoretical Issue (Analysis, Experiment, Simulation) : Originality –Interesting Programming (Game, Demo, etc) : Performance –Survey : Completeness

List of Possible Projects 4 Conversational agents 4 Artificial-life agents 4 Intelligent agents for mobile devices 4 Inference and prediction for agents 4 Service discovery agents 4 Game agents 4 Semantic modeling for agents 4 Distributed information agents (Amalthae, Anarchid) 4 Personalized information agents 4 Avatar 4 …

Questions & Answers