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Chapter 10 Decision Support Systems

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Title: Chapter 10 Decision Support Systems


1
Chapter 10 Decision Support Systems
  • James A. O'Brien, and George Marakas. Management
    Information Systems with MISource 2007, 8th ed. 
    Boston, MA McGraw-Hill, Inc., 2007.  ISBN 13
    9780073323091

2
Decision Support in Business
  • Companies are investing in data-driven decision
    support application frameworks to help them
    respond to
  • Changing market conditions
  • Customer needs
  • This is accomplished by several types of
  • Management information
  • Decision support
  • Other information systems

3
Levels of Managerial Decision Making
4
Information Quality
  • Information products made more valuable by their
    attributes, characteristics, or qualities
  • Information that is outdated, inaccurate, or
    hard to understand has much less value
  • Information has three dimensions
  • Time
  • Content
  • Form

5
Attributes of Information Quality
6
Decision Structure
  • Structured (operational)
  • The procedures to follow when decision is needed
    can be specified in advance
  • Unstructured (strategic)
  • It is not possible to specify in advance most of
    the decision procedures to follow
  • Semi-structured (tactical)
  • Decision procedures can be pre-specified, but
    not enough to lead to the correct decision

7
Decision Support Systems
Management Information Systems Decision Support Systems
Decision support provided Provide information about the performance of the organization Provide information and techniques to analyze specific problems
Information form and frequency Periodic, exception, demand, and push reports and responses Interactive inquiries and responses
Information format Prespecified, fixed format Ad hoc, flexible, and adaptable format
Information processing methodology Information produced by extraction and manipulation of business data Information produced by analytical modeling of business data
8
Decision Support Trends
  • The emerging class of applications focuses on
  • Personalized decision support
  • Modeling
  • Information retrieval
  • Data warehousing
  • What-if scenarios
  • Reporting

9
Business Intelligence Applications
10
Decision Support Systems
  • Decision support systems use the following to
    support the making of semi-structured business
    decisions
  • Analytical models
  • Specialized databases
  • A decision-makers own insights and judgments
  • An interactive, computer-based modeling process
  • DSS systems are designed to be ad hoc,
    quick-response systems that are initiated and
    controlled by decision makers

11
DSS Components
12
DSS Model Base
  • Model Base
  • A software component that consists of models
    used in computational and analytical routines
    that mathematically express relations among
    variables
  • Spreadsheet Examples
  • Linear programming
  • Multiple regression forecasting
  • Capital budgeting present value

13
Applications of Statistics and Modeling
  • Supply Chain simulate and optimize supply chain
    flows, reduce inventory, reduce stock-outs
  • Pricing identify the price that maximizes yield
    or profit
  • Product and Service Quality detect quality
    problems early in order to minimize them
  • Research and Development improve quality,
    efficacy, and safety of products and services

14
Management Information Systems
  • The original type of information system that
    supported managerial decision making
  • Produces information products that support many
    day-to-day decision-making needs
  • Produces reports, display, and responses
  • Satisfies needs of operational and tactical
    decision makers who face structured decisions

15
Management Reporting Alternatives
  • Periodic Scheduled Reports
  • Prespecified format on a regular basis
  • Exception Reports
  • Reports about exceptional conditions
  • May be produced regularly or when an exception
    occurs
  • Demand Reports and Responses
  • Information is available on demand
  • Push Reporting
  • Information is pushed to a networked computer

16
Online Analytical Processing
  • OLAP
  • Enables managers and analysts to examine and
    manipulate large amounts of detailed and
    consolidated data from many perspectives
  • Done interactively, in real time, with rapid
    response to queries

17
Online Analytical Operations
  • Consolidation
  • Aggregation of data
  • Example data about sales offices rolled up to
    the district level
  • Drill-Down
  • Display underlying detail data
  • Example sales figures by individual product
  • Slicing and Dicing
  • Viewing database from different viewpoints
  • Often performed along a time axis

18
Geographic Information Systems
  • DSS uses geographic databases to construct and
    display maps and other graphic displays
  • Supports decisions affecting the geographic
    distribution of people and other resources
  • Often used with Global Positioning Systems (GPS)
    devices

19
Data Visualization Systems
  • Represents complex data using interactive,
    three-dimensional graphical forms (charts,
    graphs, maps)
  • Helps users interactively sort, subdivide,
    combine, and organize data while it is in its
    graphical form

20
Using Decision Support Systems
  • Using a decision support system involves an
    interactive analytical modeling process
  • Decision makers are not demanding pre-specified
    information
  • They are exploring possible alternatives
  • What-If Analysis
  • Observing how changes to selected variables
    affect other variables
  • Sensitivity Analysis
  • Observing how repeated changes to a single
    variable affect other variables
  • Goal-seeking Analysis
  • Making repeated changes to selected variables
    until a chosen variable reaches a target value
  • Optimization Analysis
  • Finding an optimum value for selected variables,
    given certain constraints

21
Data Mining
  • Provides decision support through knowledge
    discovery
  • Analyzes vast stores of historical business data
  • Looks for patterns, trends, and correlations
  • Goal is to improve business performance
  • Types of analysis
  • Regression
  • Decision tree
  • Neural network
  • Cluster detection
  • Market basket analysis

22
Analysis of Customer Demographics
23
Market Basket Analysis
  • One of the most common uses for data mining
  • Determines what products customers purchase
    together with other products
  • Results affect how companies
  • Market products
  • Place merchandise in the store
  • Lay out catalogs and order forms
  • Determine what new products to offer
  • Customize solicitation phone calls

24
Executive Information Systems
  • Combines many features of MIS and DSS
  • Provide top executives with immediate and easy
    access to information
  • Identify factors that are critical to
    accomplishing strategic objectives (critical
    success factors)
  • So popular that it has been expanded to managers,
    analysis, and other knowledge workers

25
Features of an EIS
  • Information presented in forms tailored to the
    preferences of the executives using the system
  • Customizable graphical user interfaces
  • Exception reports
  • Trend analysis
  • Drill down capability

26
Enterprise Information Portals
  • An EIP is a Web-based interface and integration
    of MIS, DSS, EIS, and other technologies
  • Available to all intranet users and select
    extranet users
  • Provides access to a variety of internal and
    external business applications and services
  • Typically tailored or personalized to the user
    or groups of users
  • Often has a digital dashboard
  • Also called enterprise knowledge portals

27
Dashboard Example
28
Enterprise Information Portal Components
29
Enterprise Knowledge Portal
30
Case 2 Automated Decision Making
  • Automated decision making has been slow to
    materialize
  • Early applications were just solutions looking
    for problems, contributing little to improved
    organizational performance
  • A new generation of AI applications
  • Easier to create and manage
  • Decision making triggered without human
    intervention
  • Can translate decisions into action quickly,
    accurately, and efficiently

31
Case 2 Automated Decision Making
  • AI is best suited for
  • Decisions that must be made quickly and
    frequently, using electronic data
  • Highly structured decision criteria
  • High-quality data
  • Common users of AI
  • Transportation industry
  • Hotels
  • Investment firms and lenders

32
Case Study Questions
  • Why did some previous attempts to use artificial
    intelligence technologies fail?
  • What key differences of the new AI-based
    applications versus the old cause the authors to
    declare that automated decision making is coming
    of age?
  • What types of decisions are best suited for
    automated decision making?
  • What role do humans plan in automated
    decision-making applications?
  • What are some of the challenges faced by managers
    where automated decision-making systems are being
    used?
  • What solutions are needed to meet such challenges?

33
Artificial Intelligence (AI)
  • AI is a field of science and technology based on
  • Computer science
  • Biology
  • Psychology
  • Linguistics
  • Mathematics
  • Engineering
  • The goal is to develop computers than can
    simulate the ability to think
  • And see, hear, walk, talk, and feel as well

34
Attributes of Intelligent Behavior
  • Some of the attributes of intelligent behavior
  • Think and reason
  • Use reason to solve problems
  • Learn or understand from experience
  • Acquire and apply knowledge
  • Exhibit creativity and imagination
  • Deal with complex or perplexing situations
  • Respond quickly and successfully to new
    situations
  • Recognize the relative importance of elements in
    a situation
  • Handle ambiguous, incomplete, or erroneous
    information

35
Domains of Artificial Intelligence
36
Cognitive Science
  • Applications in the cognitive science of AI
  • Expert systems
  • Knowledge-based systems
  • Adaptive learning systems
  • Fuzzy logic systems
  • Neural networks
  • Genetic algorithm software
  • Intelligent agents
  • Focuses on how the human brain works and how
    humans think and learn

37
Robotics
  • AI, engineering, and physiology are the basic
    disciplines of robotics
  • Produces robot machines with computer
    intelligence and humanlike physical capabilities
  • This area include applications designed to give
    robots the powers of
  • Sight or visual perception
  • Touch
  • Dexterity
  • Locomotion
  • Navigation

38
Natural Interfaces
  • Major thrusts in the area of AI and the
    development of natural interfaces
  • Natural languages
  • Speech recognition
  • Virtual reality
  • Involves research and development in
  • Linguistics
  • Psychology
  • Computer science
  • Other disciplines

39
Latest Commercial Applications of AI
  • Decision Support
  • Helps capture the why as well as the what of
    engineered design and decision making
  • Information Retrieval
  • Distills tidal waves of information into simple
    presentations
  • Natural language technology
  • Database mining

40
Latest Commercial Applications of AI
  • Virtual Reality
  • X-ray-like vision enabled by enhanced-reality
    visualization helps surgeons
  • Automated animation and haptic interfaces allow
    users to interact with virtual objects
  • Robotics
  • Machine-vision inspections systems
  • Cutting-edge robotics systems
  • From micro robots and hands and legs, to
    cognitive and trainable modular vision systems

41
Expert Systems
  • An Expert System (ES)
  • A knowledge-based information system
  • Contain knowledge about a specific, complex
    application area
  • Acts as an expert consultant to end users

42
Components of an Expert System
  • Knowledge Base
  • Facts about a specific subject area
  • Heuristics that express the reasoning procedures
    of an expert (rules of thumb)
  • Software Resources
  • An inference engine processes the knowledge and
    recommends a course of action
  • User interface programs communicate with the end
    user
  • Explanation programs explain the reasoning
    process to the end user

43
Components of an Expert System
44
Methods of Knowledge Representation
  • Case-Based
  • Knowledge organized in the form of cases
  • Cases are examples of past performance,
    occurrences, and experiences
  • Frame-Based
  • Knowledge organized in a hierarchy or network of
    frames
  • A frame is a collection of knowledge about an
    entity, consisting of a complex package of data
    values describing its attributes

45
Methods of Knowledge Representation
  • Object-Based
  • Knowledge represented as a network of objects
  • An object is a data element that includes both
    data and the methods or processes that act on
    those data
  • Rule-Based
  • Knowledge represented in the form of rules and
    statements of fact
  • Rules are statements that typically take the
    form of a premise and a conclusion (If, Then)

46
Expert System Application Categories
  • Decision Management
  • Loan portfolio analysis
  • Employee performance evaluation
  • Insurance underwriting
  • Diagnostic/Troubleshooting
  • Equipment calibration
  • Help desk operations
  • Medical diagnosis
  • Software debugging

47
Expert System Application Categories
  • Design/Configuration
  • Computer option installation
  • Manufacturability studies
  • Communications networks
  • Selection/Classification
  • Material selection
  • Delinquent account identification
  • Information classification
  • Suspect identification
  • Process Monitoring/Control

48
Expert System Application Categories
  • Process Monitoring/Control
  • Machine control (including robotics)
  • Inventory control
  • Production monitoring
  • Chemical testing

49
Benefits of Expert Systems
  • Captures the expertise of an expert or group of
    experts in a computer-based information system
  • Faster and more consistent than an expert
  • Can contain knowledge of multiple experts
  • Does not get tired or distracted
  • Cannot be overworked or stressed
  • Helps preserve and reproduce the knowledge of
    human experts

50
Limitations of Expert Systems
  • The major limitations of expert systems
  • Limited focus
  • Inability to learn
  • Maintenance problems
  • Development cost
  • Can only solve specific types of problems in a
    limited domain of knowledge

51
Developing Expert Systems
  • Suitability Criteria for Expert Systems
  • Domain the domain or subject area of the problem
    is small and well-defined
  • Expertise a body of knowledge, techniques, and
    intuition is needed that only a few people
    possess
  • Complexity solving the problem is a complex task
    that requires logical inference processing
  • Structure the solution process must be able to
    cope with ill-structured, uncertain, missing, and
    conflicting data and a changing problem situation
  • Availability an expert exists who is articulate,
    cooperative, and supported by the management and
    end users involved in the development process

52
Development Tool
  • Expert System Shell
  • The easiest way to develop an expert system
  • A software package consisting of an expert system
    without its knowledge base
  • Has an inference engine and user interface
    programs

53
Knowledge Engineering
  • A knowledge engineer
  • Works with experts to capture the knowledge
    (facts and rules of thumb) they possess
  • Builds the knowledge base, and if necessary, the
    rest of the expert system
  • Performs a role similar to that of systems
    analysts in conventional information systems
    development

54
Neural Networks
  • Computing systems modeled after the brains
    mesh-like network of interconnected processing
    elements (neurons)
  • Interconnected processors operate in parallel
    and interact with each other
  • Allows the network to learn from the data it
    processes

55
Fuzzy Logic
  • Fuzzy logic
  • Resembles human reasoning
  • Allows for approximate values and inferences and
    incomplete or ambiguous data
  • Uses terms such as very high instead of
    precise measures
  • Used more often in Japan than in the U.S.
  • Used in fuzzy process controllers used in subway
    trains, elevators, and cars

56
Example of Fuzzy Logic Rules and Query
57
Genetic Algorithms
  • Genetic algorithm software
  • Uses Darwinian, randomizing, and other
    mathematical functions
  • Simulates an evolutionary process, yielding
    increasingly better solutions to a problem
  • Being uses to model a variety of scientific,
    technical, and business processes
  • Especially useful for situations in which
    thousands of solutions are possible

58
Virtual Reality (VR)
  • Virtual reality is a computer-simulated reality
  • Fast-growing area of artificial intelligence
  • Originated from efforts to build natural,
    realistic, multi-sensory human-computer
    interfaces
  • Relies on multi-sensory input/output devices
  • Creates a three-dimensional world through sight,
    sound, and touch
  • Also called telepresence

59
Typical VR Applications
  • Current applications of virtual reality
  • Computer-aided design
  • Medical diagnostics and treatment
  • Scientific experimentation
  • Flight simulation
  • Product demonstrations
  • Employee training
  • Entertainment

60
Intelligent Agents
  • A software surrogate for an end user or a
    process that fulfills a stated need or activity
  • Uses built-in and learned knowledge base to make
    decisions and accomplish tasks in a way that
    fulfills the intentions of a user
  • Also call software robots or bots

61
User Interface Agents
  • Interface Tutors observe user computer
    operations, correct user mistakes, provide
    hints/advice on efficient software use
  • Presentation Agents show information in a
    variety of forms/media based on user preferences
  • Network Navigation Agents discover paths to
    information, provide ways to view it based on
    user preferences
  • Role-Playing play what-if games and other roles
    to help users understand information and make
    better decisions

62
Information Management Agents
  • Search Agents help users find files and
    databases, search for information, and suggest
    and find new types of information products,
    media, resources
  • Information Brokers provide commercial services
    to discover and develop information resources
    that fit business or personal needs
  • Information Filters Receive, find, filter,
    discard, save, forward, and notify users about
    products received or desired, including e-mail,
    voice mail, and other information media

63
Case 3 Centralized Business Intelligence
  • A reinventing-the-wheel approach to business
    intelligence implementations can result in
  • High development costs
  • High support costs
  • Incompatible business intelligence systems
  • A more strategic approach
  • Standardize on fewer business intelligence tools
  • Make them available throughout the organization,
    even before projects are planned

64
Case 3 Centralized Business Intelligence
  • About 10 percent of the 2,000 largest companies
    have a business intelligence competency center
  • Centralized or virtual
  • Part of the IT department or independent
  • Cost reduction is often the driving force behind
    creating competency centers and consolidating
    business intelligence systems
  • Despite the potential savings, funding for
    creating and running a BI center can be an issue

65
Case Study Questions
  • What is business intelligence?
  • Why are business intelligence systems such a
    popular business application of IT?
  • What is the business value of the various BI
    applications discussed in the case?
  • Is the business intelligence system an MIS or a
    DSS?

66
Case 4 Robots, the Common Denominator
  • In early 2004, 22 patients underwent complex
    laparoscopic operations
  • The operations included colon cancer procedures
    and hernia repairs
  • The primary surgeon was 250 miles away
  • A three-armed robot was used to perform the
    procedures
  • Left arm, right arm, camera arm

67
Case 4 Robots, the Common Denominator
  • Automakers heavily use robotics
  • Ford has a completely wireless assembly factory
  • It also have a completely automated body shop
  • BMW has two wireless plants in Europe and is
    setting one up in the U.S.
  • Vehicle tracking and material replenishment are
    automated as well

68
Case Study Questions
  • What is the current and future business value of
    robotics?
  • Would you be comfortable with a robot performing
    surgery on you?
  • The robotics being used by Ford Motor Co. are
    contributing to a streamlining of its supply
    chain
  • What other applications of robots can you
    envision to improve supply chain management
    beyond those described in the case?
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