Title: Artificial Intelligence (AI)
1Artificial Intelligence (AI)
- Dr. Merle P. Martin
- MIS Department
- CSU Sacramento
2Acknowledgements
- Dr. Russell Ching (MIS Dept) Source
Materiel / Graphics - Edie Schmidt (UMS) - Graphic Design
- Prentice Hall Publishing (Permissions)
- Martin, Analysis and Design of Business
Information Systems, 1995
3Agenda
- Gate Assignment Problem
- Artificial Intelligence
- Expert Systems (ES)
- ES Examples
4In the Airline Industry
- United Airlines' GADS (Gate Assignment Display
System) - Trans World Airlines' GATES (Gate Assignment and
Tracking Expert System)
5- Boeing 747, 387-427 capacity
Lockheed L-1011, 252 capacity
6Boeing 767, 170-227 capacity
Boeing 727, 115-134 capacity
7McDonnell Douglas DC-9, MD-80 73-132 capacity
8Gate Assignment Problem
9Gate Assignment Problem
- Constraints
- Matching size of aircraft to gate 8 different
types with United 6 with TWA - Minimizing distances between connecting flights
- Foreign vs. domestic flight
10GATES Constraints
- Constraints without exceptions
- Gate size
- Constraints with exceptions
- International versus domestic flights
- Constraints with changing tolerances
- Turn-around times
11GATES Constraints
- Guidelines
- Taxiway congestion
- Convenience constraints
- Time between flights
- Distance between connecting flights
12Gate Assignment
- ES benefits
- Task of scheduling gate assignments for a
month reduced from 15 hours
to 30 seconds. - ES can be transferred to other airport
operations, reducing training / operating
costs.
13Gate Assignment
- Benefits (Cont.)
- Decrease susceptibility of schedule to
moods and whims of schedulers. - Gate assignments can be done on demand
with little interference to current
operations.
14Gate Assignment
- Benefits (Cont.)
- Managers can review impact of
changes, implement changes (i.e., what-if
analysis). - ES integrated into airlines' major
operations / scheduling systems through
direct electronic interfaces, thus expediting
scheduling.
15Artificial Intelligence (AI)
- Effort to develop
computer-based systems - that behave like humans
- learn languages
- accomplish physical tasks
- use a perceptual apparatus
- emulate human thinking
16AI Branches
- Natural Language
- Robotics
- Perceptive Systems
- Expert Systems
- Intelligent Machines
17Human Processing Capabilities
- Induction
- act on inconsistently formatted
data - fill in the gaps
- CN U RD THS
- Wheel of Fortune
- Adaptiveness
18Human Processing Capabilities
- Insight
- creativity
- create alternatives
- chess game
- perspicuous grouping
19Perspicuous Grouping
- Recognize that we can handle
only a few alternatives - Short Term Memory (STM)
- Millers 7 /- 2 Rule
- Zero in on a few viable alternatives
- Enumerate / select best
- Satisficing, rather than optimizing
- Herbert Simons 1958 Chess prediction
20Computer Processing Capabilities
- Handle large volume of data
- quickly
- Detect signals
where humans sense noise - Tireless
21Computer Capabilities
- Consistent
- Objective
- no selective perception
- Not distracted
- Minimal down-time
22Issue
- A Stanford Research Institute (SRI)
scientist once said, You
neednt fear intelligent machines. Maybe
theyll keep us as pets. - Will intelligent machines replace us?
- Why or why not?
- WHAT DO YOU THINK?
23What is an ES?
- Feigenbaum, 1983
- intelligent computer program
- using knowledge / inference procedures
- to solve problems difficult enough
- to require significant human expertise
- a model of the expertise of
- the best practitioners
24Components of an Expert System
Knowledge Base
Knowledge
Acquisition
Facts and Rules
Facility
Recom-mended
Inference Engine
Action
Explanation
User Interface
Facility
User
25Rule Induction
Rules Induced From Example Cases
Case Classified Through Deduction
Individual Cases Applied to the Rules
Induction(Inductive Logic)
Deduction(Deductive Logic)
26Check Overdraft Cases
Decision Attributes
Decision
Overdraft for Single or Multiple Checks
Pay or Reject
Type of Account
Credit Rating
Pay
Regular
Good
Multiple
Pay
Student
Unknown
Single
Reject
Student
Poor
Single
Reject
Student
Good
Multiple
Pay
Student
Good
Single
27Check Overdraft Cases (Cont.)
Decision Attributes
Decision
Overdraft for Single or Multiple Checks
Pay or Reject
Type of Account
Credit Rating
Pay
Regular
Unknown
Multiple
Pay
Regular
Good
Single
Reject
Regular
Poor
Single
Reject
Student
Unknown
Multiple
Reject
Regular
Unknown
Multiple
28Pay or Reject?
Overdraft for Single or Multiple Checks
Pay or Reject
Type of Account
Credit Rating
?
Regular
Unknown
Single
29Bank Overdraft Application
- 340 Cases of check
overdrafts - Classification Variable
- Check unpaid(0) or paid (1)
30ID3 DECISION TREE
CR DIFFlt6.5
176
Yes
No
130
CRDIFFlt5.5
DIFFlt10.5
60
116
5
125
Yes
No
Yes
No
CR DIFFlt.035
DIFFlt20.5
DIFFlt9.4
DIFFlt40.3
59
1
15
101
57
68
4
1
ACTDIFF
COVDIFFlt1.5
DIFFlt42.2
DIFFlt1.65
lt19.6
0
14
1
69
50
9
1
32
53
2
2
0
1
56
15
1
Pay
Reject
Pay
Reject
DIFFlt5.55
ACTDIFFlt.175
48
4
1
0
5
2
32
0
0
0
0
15
56
1
0
1
Reject
Reject
Reject
Pay
Reject
Pay
0
2
3
ACTDIFFlt3
2
1
0
54
2
Overall Classification Rate 97.7
Pay
Reject
Pay
2
0
1
1
Reject
Pay
31Reasons For Using ES
- Consistent
- Never gets bored / overwhelmed
- Replace absent, scarce experts
- Quick response time
32ES Reasons
- Reduced down-time
- Cheaper than experts
- Integration of multi-expert opinions
- Eliminate routine / unsatisfactory jobs
for people
33ES Limitations
- High development cost
- Limited to relatively simple problems
- operational mgmt level
- Can be difficult to use
- Can be difficult to maintain
34When to Use ES
- High potential payoff
- OR
- Reduced risk
- Need to replace experts
- Campbells Soup
35When to Use ES
- Need more consistency
than humans - Expertise needed
at various locations
at same time - Hostile environment dangerous
to human health
36ES Versus DSS
- Problem Structure
- ES structured problems
- clear
- consistent
- unambiguous
- DSS semi-structured problems
37ES Versus DSS
- Quantification
- DSS quantitative
- ES non-mathematical reasoning
- IF A BUT NOT B, THEN Z
- Purpose
- DSS aid manager
- ES replace manager
38Issue
- Does your company use Expert
Systems (ES)? - How do they?
- How might they?
- WHAT ARE YOUR EXPERIENCES?
39MYACIN
- Diagnose patient symptoms
(triage) - free doctors for
high-level tasks - Panel of doctors
- diagnose sets of symptoms
- determine causes
- 62 accuracy
40MYACIN
- Built ES with rules
based on panel consensus - 68 accuracy
- Why better than doctors?
- Heuristics
41Stock Market ES
- Reported by Chandler, 1988
- Expert in stock market analysis
- 15 years experience
- published newsletter
- Asked him to identify data
used to make recommendations
42Stock Market ES
- 50 data elements identified
- Reduced to 30
- redundancy
- not really used
- undependable
- Predicted for 6 months of data whether
stock value would increase, decrease, or stay the
same
43Stock Market ES
- Rule-based ES built
- Discovered that only
15 data elements came into play - Refined the ES model
- Results were better than expert
- WHY?
44USA Expert Systems
Manufacturing Planning
HICLASS - Hughes (process plans, manufacturing
instructions)
CUTTECH - METCUT (plans for machining operations)
XPSE-E - CAM-I (plans for part fabrication)
45USA Expert Systems
Manufacturing Control
IMACS - DEC (plans for computer hardware
fabrication and assembly)
IFES - Hughes (models dynamic flow of factory
information)
46USA Expert Systems
Factory Automation
Move - Industrial Technology
Institute (material handling)
Dispatcher - Carnegie Group, Inc. (materials
handling system)
GMR - GM Corp. (flexible automation assembly
system)
FMS/CML - Westinghouse (simulation for FMS
design, planning, control)
47Issue
- Expert systems are dangerous.
People are likely to be
dependent on them rather than
think for themselves. - WHAT DO YOU THINK?
48Points to Remember
- What is AI?
- What is an ES?
- When to use an ES
- Differences between
ES and DSS - ES examples