Transcript Slide 1
MANAGING
INFORMATION
TECHNOLOGY
FIFTH EDITION
CHAPTER 7
MANAGERIAL SUPPORT SYSTEMS
E. Wainright Martin Carol V. Brown Daniel W. DeHayes
Jeffrey A. Hoffer William C. Perkins
DECISION SUPPORT SYSTEMS
Designed to assist decision
makers with unstructured
problems
Usually interactive
Incorporates data and
models
Data often comes from
transaction processing
systems or data warehouse
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DECISION SUPPORT SYSTEMS
Three major components
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Figure 7.1 Decision Support Systems
Components
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DECISION SUPPORT SYSTEMS
Specific DSSs – actual DSS applications that
directly assist in decision making
DSS generator – a software package used to
build a specific DSS quickly and easily
Examples: Microsoft Excel or Lotus 1-2-3
DSS model 1
used to create
DSS generator
DSS model 2
DSS model 3
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DATA MINING
Data Mining – uses different technologies to
search for (mine) “nuggets” of information
from data stored in a data warehouse
Data
mining software:
Oracle 9i Data Mining and Oracle Data Mining Suite
SAS Enterprise Miner
IBM Intelligent Miner Modeling
Angoss Software’s KnowledgeSEEKER, Knowledge Studio,
and KnowledgeExcelerator
Datamation’s Data Mining and Business Intelligence Product
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DATA MINING
Data Mining – uses different technologies to
search for (mine) “nuggets” of information
from data stored in a data warehouse
Decision
techniques used:
Decision trees
Linear and logistic regression
Clustering for market segmentation
Rule induction
Nearest neighbor
Genetic algorithms
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DATA MINING
Uses:
Cross-selling
Customer
churn
Customer retention
Direct marketing
Fraud detection
Interactive marketing
Market basket analysis
Market segmentation
Payment or default analysis
Trend analysis
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see Table 7.1 Uses of Data Mining
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GROUP SUPPORT SYSTEMS
Type of DSS to support a group rather than an
individual
Specialized type of groupware
Attempt to make group meetings more
productive
Now focus on supporting team in all its
endeavors, including “different time, different
place” mode – virtual teams
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GROUP SUPPORT SYSTEMS
Traditional “same time, same place” meeting layout
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Figure 7.2 Group Support System Layout
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GEOGRAPHIC INFORMATION
SYSTEMS
GISs – systems based on manipulation of
relationships in space that use geographic
data
Early
GIS users:
Natural resource management
Public administration
NASA and the military
Urban planning
Forestry
Map makers
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GEOGRAPHIC INFORMATION
SYSTEMS
Business Adopts Geographic Technologies
Business
uses:
Determining site locations
Market analysis and planning
Logistics and routing
Environmental engineering
Geographic pattern analysis
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(Reprinted courtesy of Environmental Systems Research Institute, Inc. Copyright © 2003 Environmental Systems Research
Institute, Inc. All rights reserved.)
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Figure 7.3 Department Store Analysis
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GEOGRAPHIC INFORMATION
SYSTEMS
What’s Behind Geographic Technologies
Approaches to representing spatial data:
Raster-based GISs – rely on dividing space into
small, uniform cells (rasters) in a grid
Vector-based GISs – associate features in the
landscape with a point, line, or polygon
Geodatabase model – uses object-oriented data
concepts
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GEOGRAPHIC INFORMATION
SYSTEMS
Coverage model uses
different layers to represent
similar types of geographic
features in the same area
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Figure 7.4 Map Layers in a GIS
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GEOGRAPHIC INFORMATION
SYSTEMS
What’s Behind Geographic Technologies
Questions geographic analysis can answer:
What is adjacent to this feature?
Which site is the nearest one?
What is contained within this area?
Which features does this element cross?
How many features are within a certain distance
of a site?
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EXECUTIVE INFORMATION
SYSTEMS/BUSINESS INTELLIGENCE
SYSTEMS
EISs – a hands-on tool that focuses, filters, and organizes
an executive’s information so he or she can make more
effective use of it
Where does EIS data come from?
Filtered and summarized transaction data (internal)
Collected competitive information (internal and external)
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EXECUTIVE INFORMATION
SYSTEMS/BUSINESS INTELLIGENCE
SYSTEMS
Executive information system (EIS):
Delivers online current information about
business conditions in aggregate form
Easily accessible to senior executives and
other managers
Designed to be used without intermediary
assistance
Uses state-of-the-art graphics,
communications and data storage methods
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(Courtesy of Geac Computer Corporation Limited. Copyright © 2003 Geac Computer Corporation Limited.)
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Figure 7.5 Example Geac Performance
Management Displays
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(Courtesy of Geac Computer Corporation Limited. Copyright © 2003 Geac Computer Corporation Limited.)
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Figure 7.5 Example Geac Performance
Management Displays
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KNOWLEDGE MANAGEMENT
SYSTEMS
Knowledge management (KM):
Set of practical and action-oriented management
practices
Involves strategies and processes of identifying,
creating, capturing, organizing, transferring, and
leveraging knowledge to help compete
Relies on recognizing knowledge held by
individuals and the firm
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KNOWLEDGE MANAGEMENT
SYSTEMS
Knowledge management system (KMS):
System for managing organizational knowledge
Technology or vehicle that facilitates the sharing
and transferring of knowledge so that valuable
knowledge can be reused
Enable people and organizations to enhance
learning, improve performance, and produce longterm competitive advantage
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ARTIFICIAL INTELLIGENCE
AI – the study of how to make computers
do things that are currently done better by
people
Six areas:
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Natural languages
Robotics
Perceptive systems
Genetic programming
Expert systems
Neural networks
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ARTIFICIAL INTELLIGENCE
AI – the study of how to make computers
do things that are currently done better by
people
Six areas:
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Natural languages
Robotics
Perceptive systems
Genetic programming
Expert systems
Neural networks
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Most relevant for
managerial support
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EXPERT SYSTEMS
Expert systems – attempt to capture the
expertise of humans in a computer program
Knowledge engineer:
A specially trained systems analyst who works
closely with one or more experts in the area of
study
Tries to learn about how experts make decisions
Loads information (what learned) into module
called knowledge base
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EXPERT SYSTEMS
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Figure 7.6 Architecture of an Expert System
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EXPERT SYSTEMS
Obtaining an Expert System
Approaches:
Buy
a fully developed system created
for a specific application
Develop
using a purchased expert
system shell (basic framework) and
user-friendly special language
Have
knowledge engineers custom
build using special-purpose language
(such as Prolog or Lisp)
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EXPERT SYSTEMS
Examples of Expert Systems
Standford University’s MYCIN – to diagnose and
prescribe treatment for meningitis and blood diseases
General Electric’s CATS-1 to diagnose mechanical
problems in diesel locomotives
AT&T’s ACE to locate faults in telephone cables
Market Surveillance software – to detect insider trading
FAST software – for credit analysis, used by banking
industry
Nestle Food’s developed system to provide employees
information on pension fund status
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NEURAL NETWORKS
Neural networks – attempt to tease out meaningful patterns
from vast amounts of data
Process:
1.
2.
3.
4.
5.
6.
Program given set of data
Program analyzed data, works out correlations, selects
variables to create patterns
Pattern used to predict outcomes, then results
compared to known results
Program changes pattern by adjusting variable weights
or variables themselves
Repeats process over and over to adjust pattern
When no further adjustment possible, ready to be used
to make predictions for future cases
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NEURAL NETWORKS
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Table 7.2 Uses of Neural Networks
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VIRTUAL REALITY
Virtual reality – use of a computer-based system to create
an environment that seems real to one or more senses of
users
Non-entertainment categories:
Training
Design
Marketing
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VIRTUAL REALITY
Training
U.S. Army to train tank crews
Amoco for training its drivers
Duracell for training factory workers on using new
equipment
Design
Design of automobiles
Walk-throughs of air conditioning/ furnace units
Marketing
Interactive 3-D images of products (used on the Web)
Virtual tours used by real estate companies or resort hotels
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VIRTUAL REALITY
Training
U.S. Army to train tank crews
Amoco for training its drivers
Duracell for training factory workers on using new
equipment
Design
Design of automobiles
Walk-throughs of air conditioning/ furnace units
Marketing
Interactive 3-D images of products (used on the Web)
Virtual tours used by real estate companies or resort hotels
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VIRTUAL REALITY
(Courtesy of Homestore, Inc. Copyright © 2004 Homestore, Inc.)
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Figure 7.7 Hometour 360o Virtual Tour
of Living Room
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