Introduction to MIS1 Copyright © 1998-2002 by Jerry Post Introduction to MIS Chapter 9 Complex Decisions and Artificial Intelligence.

Slides:



Advertisements
Similar presentations
Your Trade Exchange And
Advertisements

Introduction to MIS1 Copyright © by Jerry Post Introduction to MIS Chapter 11 Electronic Business.
Decision Support and Artificial Intelligence Jack G. Zheng May 21 st 2008 MIS Chapter 4.
Decision Support and Artificial Intelligence Jack G. Zheng July 11 th 2005 MIS Chapter 4.
Travel and Expense Management Scenario Overview
5 minute Online Demonstration. What is the Rental Workbook? Its an easy way to organise your rental property records – like an electronic cashbook. Its.
LeadManager™- Internet Marketing Lead Management Solution May, 2009.
The Decision-Making Process IT Brainpower
Chapter 11 Artificial Intelligence and Expert Systems.
© Prentice Hall CHAPTER 6 Managerial Support Systems.
SESSION 10 MANAGING KNOWLEDGE FOR THE DIGITAL FIRM.
1 Pertemuan 19 & 20 Managing Knowledge for the Digital Firm Matakuliah: J0454 / Sistem Informasi Manajemen Tahun: 2006 Versi: 1 / 1.
Issues, Trends and Strategies for Computer Systems Management UMUC Graduate School of Management and Technology Chapter 10. Complex Decisions and Artificial.
1 McGraw-Hill/Irwin Copyright © 2004, The McGraw-Hill Companies, Inc. All rights reserved. Chapter 8: Decision Support Systems What kind of decisions?
ISBN Chapter 1 Preliminaries. Copyright © 2004 Pearson Addison-Wesley. All rights reserved.1-2 Chapter 1 Topics Motivation Programming Domains.
1 Chapter 7 IT Infrastructures Business-Driven Technology
Marakas: Decision Support Systems, 2nd Edition © 2003, Prentice-Hall Chapter Chapter 7: Expert Systems and Artificial Intelligence Decision Support.
ISBN Lecture 01 Preliminaries. Copyright © 2004 Pearson Addison-Wesley. All rights reserved.1-2 Lecture 01 Topics Motivation Programming.
1 McGraw-Hill/Irwin Copyright © 2004, The McGraw-Hill Companies, Inc. All rights reserved. Chapter 8: Decision Support Systems Decision Support in Business.
Chapter 12: Intelligent Systems in Business
Artificial Intelligence John Ross Yuki Yabushita Sharon Pieloch Steven Smith.
“Get outa here!”.
Eleventh Edition 1 Introduction to Essentials for Information Systems Irwin/McGraw-Hill Copyright © 2002, The McGraw-Hill Companies, Inc. All rights reserved.
ISBN Chapter 1 Topics Motivation Programming Domains Language Evaluation Criteria Influences on Language Design Language Categories Language.
Eleventh Edition 1 Introduction to Essentials for Information Systems Irwin/McGraw-Hill Copyright © 2002, The McGraw-Hill Companies, Inc. All rights reserved.
McGraw-Hill/Irwin ©2005 The McGraw-Hill Companies, All rights reserved ©2005 The McGraw-Hill Companies, All rights reserved McGraw-Hill/Irwin.
Artificial Intelligence
Using Microsoft Outlook: Basics. Objectives Guided Tour of Outlook –Identification –Views Basics –Contacts –Folders –Web Access Q&A.
Intelligent Support Systems
Succeeding with Technology Information, Decision Support… Decision Making and Problem Solving Management Information Systems Decision Support Systems Group.
INTELLIGENT SYSTEMS BUSINESS MOTIVATION BUSINESS INTELLIGENCE M. Gams.
0AI-based Information Technology  Information Technology Based on AI ● What is Artificial Intelligence? ● Artificial Intelligence vs. Natural Intelligence.
DSS defined: It is a system which provides tools to managers to assist them in solving semi structured problem in their own personalized way. DSS is not.
Artificial Intelligence Dr. Paul Wagner Department of Computer Science University of Wisconsin – Eau Claire.
Chapter 14: Artificial Intelligence Invitation to Computer Science, C++ Version, Third Edition.
The Strategic Management of Information Technology Chapter 10 Complex Decisions and Artificial Intelligence.
11 C H A P T E R Artificial Intelligence and Expert Systems.
Artificial Intelligence Introductory Lecture Jennifer J. Burg Department of Mathematics and Computer Science.
 The most intelligent device - “Human Brain”.  The machine that revolutionized the whole world – “computer”.  Inefficiencies of the computer has lead.
Copyright © 2006, The McGraw-Hill Companies, Inc. All rights reserved. Decision Support Systems Chapter 10.
7-1 Management Information Systems for the Information Age Copyright 2004 The McGraw-Hill Companies, Inc. All rights reserved Chapter 7 IT Infrastructures.
Microsoft Office Outlook 2013 Microsoft Office Outlook 2013 Courseware # 3252 Lesson 6: Organizing Information.
Copyright © 1994 Carnegie Mellon University Disciplined Software Engineering - Lecture 3 1 Software Size Estimation I Material adapted from: Disciplined.
Chapter 13 Artificial Intelligence and Expert Systems.
I Robot.
1 Technology in Action Chapter 11 Behind the Scenes: Databases and Information Systems Copyright © 2010 Pearson Education, Inc. Publishing as Prentice.
MIS 105 LECTURE 1 INTRODUCTION TO COMPUTER HARDWARE CHAPTER REFERENCE- CHP. 1.
Chapter Nineteen Understanding Information and e-Business.
Chapter 15: KNOWLEDGE-BASED INFORMATION SYSTEMS. What is Knowledge? Data: Raw facts, e.g., Annual Expenses = $2 million Information: Data given context,
Chapter 4 Decision Support System & Artificial Intelligence.
Artificial Intelligence, Expert Systems, and Neural Networks Group 10 Cameron Kinard Leaundre Zeno Heath Carley Megan Wiedmaier.
Eleventh Edition 1 Introduction to Essentials for Information Systems Irwin/McGraw-Hill Copyright © 2002, The McGraw-Hill Companies, Inc. All rights reserved.
Fundamentals of Information Systems, Third Edition 1 Information and Decision Support Systems: Management Information Systems Management information system.
1 Visalia Unified School District Principal & Area Administrator Service Request Approval Processing Using The SRTS November 16, 2005 Administrative Services.
ITEC 1010 Information and Organizations Chapter V Expert Systems.
Microsoft Office 2008 for Mac – Illustrated Unit D: Getting Started with Safari.
Artificial Intelligence, simulation and modelling.
1 Chapter 13 Artificial Intelligence and Expert Systems.
COMPUTER SYSTEM FUNDAMENTAL Genetic Computer School INTRODUCTION TO ARTIFICIAL INTELLIGENCE LESSON 11.
Decision Support and Business Intelligence Systems (9 th Ed., Prentice Hall) Chapter 12: Artificial Intelligence and Expert Systems.
Fundamentals of Information Systems
CHAPTER 1 Introduction BIC 3337 EXPERT SYSTEM.
Organization and Knowledge Management
Introduction Characteristics Advantages Limitations
Artificial Intelligence, P.I
INTELLIGENT SYSTEMS BUSINESS MOTIVATION BUSINESS INTELLIGENCE
DSS & Warehousing Systems
SPECIALIZED APPLICATION SOFTWARE
MANAGING KNOWLEDGE FOR THE DIGITAL FIRM
K.S. School of Business Management (MIS)
Presentation transcript:

Introduction to MIS1 Copyright © by Jerry Post Introduction to MIS Chapter 9 Complex Decisions and Artificial Intelligence

Introduction to MIS2 Computer analysis of data and model. Decision Operations Tactics Strategy Neural network Company Complex Decisions & Artificial Intelligence

Introduction to MIS3 Outline Specialized Problems Expert Systems DSS and ES Building Expert Systems Knowledge Management Other Specialized Problems Pattern Recognition DSS, ES, and AI Machine Intelligence E-Business and Software Agents Cases: Franchises Appendix: Rules

Introduction to MIS4 Specialized Problems Diagnostics Speed Consistency Training Case-based reasoning

Introduction to MIS5 Expert System Example Camcorder selection by ExSys Link: Test It

Introduction to MIS6 Expert System Knowledge Base Symbolic & Numeric Knowledge If income > 20,000 or expenses < 3000 and good credit history or... Then 10% chance of default Rules Expert decisions made by non-experts Expert

Introduction to MIS7 DSS and ES

Introduction to MIS8 ES Example: bank loan Welcome to the Loan Evaluation System. What is the purpose of the loan? car How much money will be loaned? 10,000 For how many years? 5 The current interest rate is 10%. The payment will be $ per month. What is the annual income? 24,000 What is the total monthly payments of other loans? Why? Because the payment is more than 10% of the monthly income. What is the total monthly payments of other loans? The loan should be approved, there is only a 2% chance of default. Forward Chaining

Introduction to MIS9 Payments < 10% monthly income? Other loans total < 30% monthly income? Credit History Job Stability Approve the loan Deny the loan No Yes Good Yes No Bad So-so GoodPoor Decision Tree (bank loan)

Introduction to MIS10 Customer Data Name ____ Address ____ Years at address__ Co-applicant___ Job History Employer, Salary, Date Hired... Job History Employer, Salary, Date Hired... Loan Details Purpose Boat Loan Amount _____ Time _____ Data for Boat Loans Length: Engine: Cost New: Cost Used: Recommendation Lend $$$$ at ___ interest rate for ___ months, with ___ initial costs. Rules Frame-Based ES

Introduction to MIS11 ES Examples United AirlinesGADS: Gate Assignment American ExpressAuthorizer's Assistant StanfordMycin: Medicine DECOrder Analysis + more Oil exploration Geological survey analysis IRS Audit selection Auto/Machine repair(GM:Charley) Diagnostic

Introduction to MIS12 ES Problem Suitability Narrow, well-defined domain Solutions require an expert Complex logical processing Handle missing, ill-structured data Need a cooperative expert Repeatable decision

Introduction to MIS13 ES screens seen by user Rules and decision trees entered by designer Expert Forward and backward chaining by ES shell Knowledge engineer Knowledge database (for (k 0 (+ 1 k) ) exit when ( ?> k cluster-size) do (for (j 0 (+ 1 j )) exit when (= j k) do (connect unit cluster k output o -A to unit cluster j input i - A ))... ) Maintained by expert system shell Programmer Custom program in LISP ES Development ES Shells Guru Exsys Custom Programming LISP PROLOG

Introduction to MIS14 Some Expert System Shells CLIPS Originally developed at NASA Written in C Available free or at low cost Jess Written in Java Good for Web applications Available free or at low cost ExSys Commercial system with many features

Introduction to MIS15 Limitations of ES Fragile systems Small environmental. changes can force revision. of all of the rules. Mistakes Who is responsible? Expert? Multiple experts? Knowledge engineer? Company that uses it? Vague rules Rules can be hard to define. Conflicting experts With multiple opinions, who is right? Can diverse methods be combined? Unforeseen events Events outside of domain can lead to nonsense decisions. Human experts adapt. Will human novice recognize a nonsense result?

Introduction to MIS16 Knowledge Management A collection of a documents and data Created by experts Searchable With links to related topics Highly organized groupware Emphasizing context Examplebusiness decisions Store problem, all notes, decision factors, comments Future problems, managers can search the database and find similar problems Better and more efficient decisions if you know the original problems, discussions, and contingency plans Main problemconvincing everyone to enter and update the documents

Introduction to MIS17 AI Research Areas Computer Science Parallel Processing Symbolic Processing Neural Networks Robotics Applications Visual Perception Tactility Dexterity Locomotion & Navigation Natural Language Speech Recognition Language Translation Language Comprehension Cognitive Science Expert Systems Learning Systems Knowledge-Based Systems

Introduction to MIS18 Output Cells Sensory Input Cells Hidden Layer Some of the connections Input weights Incomplete pattern/missing inputs. Neural Network: Pattern recognition

Introduction to MIS19 Machine Vision Example The Department of Defense has funded Carnegie Mellon University to develop software that is used to automatically drive vehicles. One system (Ranger) is used in an army ambulance that can drive itself over rough terrain for up to 16 km. ALVINN is a separate road-following system that has driven vehicles at speeds over 110 kph for as far as 140 km.

Introduction to MIS20 Speech Recognition Look at the users voice command: Copy the red, file the blue, delete the yellow mark. Now, change the commas slightly. Copy the red file, the blue delete, the yellow mark. I saw the Grand Canyon flying to New York. Emergency Vehicles No Parking Any Time

Introduction to MIS21 Subjective Definitions temperature reference point e.g., average temperature coldhot Moving farther from the reference point increases the chance that the temperature is considered to be different (cold or hot). Subjective (fuzzy) Definitions

Introduction to MIS22 DSS, ES, and AI: Bank Example Decision Support SystemExpert SystemArtificial Intelligence NameLoan#LateAmount Brown25,000 51,250 Jones62, Smith83,000 32, Data Income Existing loans Credit report Model Lend in all but worst cases Monitor for late and missing payments. Output ES Rules What is the monthly income? 3,000 What are the total monthly payments on other loans? 450 How long have they had the current job? 5 years... Should grant the loan since there is only a 5% chance of default. Determine Rules loan 1 data: paid loan 2 data: 5 late loan 3 data: lost loan 4 data: 1 late Data/Training Cases Neural Network Weights Evaluate new data, make recommendation. Loan Officer

Introduction to MIS23 Decision Support SystemExpert SystemArtificial Intelligence Data a estimate sales K order setup cost h estimate holding cost Model Q* = sqrt ( 2ak / h ) Output time Q* Inventory Levels reorder points Choosing an Inventory System What is the cost of running out of inventory? 45,000 per day What are daily profits? 250,000 How many suppliers are there? 8 Can more suppliers be added in an emergency? no How close is the nearest supplier? 10 kilometres How reliable is this supplier? very... Best choice is to use Just-In-Time inventory system. Only a 2% chance of running out of inventory for more than 2 days.... Automatically Analyze site 1 data: JIT site 2 data: EOQ site 3 data: JIT site 4 data: hybrid Data/Training Cases Neural Network Weights Evaluate new data, make recommendation. DSS, ES and AI: Inventory Example

Introduction to MIS24 Vacation Resorts Software agent Resort Databases Locate & book trip. Software Agents Independent Networks/Communication Uses Search Negotiate Monitor

Introduction to MIS25 AI Questions What is intelligence? Creativity? Learning? Memory? Ability to handle unexpected events? More? Can machines ever think like humans? How do humans think? Do we really want them to think like us?

Introduction to MIS26 Cases: Franchises

Introduction to MIS27 Cases: Mrs. Fields Blockbuster Video What is the companys current status? What is the Internet strategy? How does the company use information technology? What are the prospects for the industry?

Introduction to MIS28 Appendix: Rules - Folders Folders make it easy to organize and handle your mail. Simple rules from the Tools + Organize button move messages directly to the specified folder.

Introduction to MIS29 Rules: Conditions The Tools + Rules Wizard makes it easy to create rules. Begin with a blank rule. Set the Conditions Set the Actions Define Exceptions A sample rule to handle unsolicited credit card applications.

Introduction to MIS30 Rules: Actions Choose an action. You can choose multiple actions, but be careful. The marking options are often combined.

Introduction to MIS31 Rules: Exceptions Rules can have exceptions. For example, you might want to delete company newsletters unless one has your name in it.

Introduction to MIS32 Rule Sequences: Decision Tree From boss, Subject: Expenses Message from Expense Accounting Expenses Folder Set expenses category Move it Rule 1 Rule 2 Expenses category Subject: Payment Rule 3 Action: Mark important and notify.