Decision Support
Systems
Dss
Types Of Dss
Model-oriented DSS
Data-oriented DSS
Architecture of
a DSS
data
models
user interface
knowledge
A Decision Support
Framework
Degree of Structured
Highly structured
Semi-structured
Highly unstructured
Types of Control
Strategic planning (top-level, long-range)
Management control (tactical planning)
Operational control
Concept of Decision
Support Systems
Classical Definitions of DSS
Interactive computer-based systems, which help decision makers utilize data and models to solve unstructured problems
Decision support systems couple the intellectual resources of individuals with the capabilities of the computer to improve the quality of decisions. It is a computer-based support system for management decision makers who deal with semistructured problems
A Work System View
of Decision Support
Definition
Work system: a system in which human participants and/or machines perform a business process, using information, technology, and other resources, to produce products and/or services for internal or external customers
Elements of a Work System
1- Business process. Variations in the process rationale, sequence of steps, or methods used for performing particular steps
2- Participants. Better training, better skills, higher levels of commitment, or better real-time or delayed feedback
3- Product and services. Better ways to evaluate potential decisions
4- Customers. Better ways to involve customers in the decision process and to obtain greater clarity about their needs
5- Infrastructure. More effective use of shared infrastructure, which might lead to improvements
6- Environment. Better methods for incorporating concerns from the surrounding environment
7- Strategy. A fundamentally different operational strategy for the work system
8- Information. Better information quality, information availability, or information presentation
9- Technology. Better data storage and retrieval, models, algorithms, statistical or graphical capabilities, or computer interaction
Components of DSS
Data Management Subsystem
Includes the database that contains the data
Database management system (DBMS)
Can be connected to a data warehouse
Model Management Subsystem
Model base management system (MBMS)
User Interface Subsystem
Knowledgebase Management Subsystem
Organizational knowledge base
Overall Capabilities of DSS
Easy access to data/models/knowledge
Proper management of organizational experiences and knowledge
Easy to use, adaptive and flexible GUI
Timely, correct, concise, consistent support for decision making
Support for all who needs it, where and when he/she needs it
DSS Characteristics
and capabilities
Solve semi-structured and unstructured problems
Support managers at all levels
Support individuals and groups
Interdependence and sequence of decisions
Support Intelligence, Design, Choice
Human control of the process
Ease of development by end user
Modeling and analysis
Data access
Standalone and web-based integration
Support varieties of decision processes
Support varieties of decision trees
Quick response
Adaptable and flexible
Interactive and ease of use
Interactive and efficiency
DSS can facilitate
decision via:
Speedy computations
Improved communication and collaboration
Increased productivity of group members
Improved data management
Overcoming cognitive limits
Quality support; agility support
Using Web; anywhere, anytime support
as a Specific
Application
In a narrow sense DSS refers to a process for building customized applications for unstructured or semi-structured problems
Managerial Decision
Making
component
1- Inputs: resources
2- Output: attainment of goals
3- Measure of success: outputs / inputs
Management Science Approach
Define the problem
Classify the problem into a standard category
Construct a model that describes the real-world problem
Identify possible solutions to the modeled problem and evaluate the solutions
Compare, choose, and recommend a potential solution to the problem
Mintzberg's 10 Managerial
Roles
Interpersonal
1- Figurehead
2- Leader
3- Liaison
Informational
4- Monitor
5- Disseminator
6- Spokesperson
Decisional
7- Entrepreneur
8- Disturbance handler
9- Resource allocator
10- Negotiator
Business Intelligence (BI)
A Brief History of BI
The term BI was coined by the Gartner Group in the mid
However, the concept is much older
MIS reporting - static/periodic reports
Executive Information Systems (EIS)
- OLAP, dynamic, multidimensional, ad-hoc reporting -> coining of the term “BI”
Inclusion of AI and Data/Text Mining capabilities; Web-based Portals/Dashboards
Styles of BI
report delivery and alerting
enterprise reporting (using dashboards and scorecards)
cube analysis (also known as slice-and-dice analysis)
ad-hoc queries
statistics and data mining
The Benefits of BI
Faster, more accurate reporting (81%)
Improved decision making (78%)
Improved customer service (56%)
Increased revenue (49%)
The Architecture of BI
Four major components
a data warehouse
business analytics
business performance management
a user interface
Decision Making
Model
A significant part of many DSS and BI systems
A model is a simplified representation (or abstraction) of reality
Often, reality is too complex to describe
Much of the complexity is actually irrelevant in solving a specific problem
Models can represent systems/problems at various degrees of abstraction
Models can be classified based on their degree of abstraction
Iconic models (scale models)
Analog models
Mental Models
Mathematical (quantitative) models
The Benefits of Models
Ease of manipulation
Compression of time
Lower cost of analysis on models
Cost of making mistakes on experiments
Inclusion of risk/uncertainty
Evaluation of many alternatives
Reinforce learning and training
Web is source and a destination for it
Decision Makers
Small organizations
Individuals
Conflicting objectives
Medium-to-large organizations
Groups
Different styles, backgrounds, expectations
Conflicting objectives
Consensus is often difficult to reach
Help: Computer support, GSS, …
Phases of Decision-Making
Process
Intelligence phase
Problem Classification
Classification of problems according to the degree of structuredness
Problem Decomposition
Information/data can improve the structuredness of a problem situation
Often solving the simpler subproblems may help in solving a complex problem
Problem Ownership
Outcome of intelligence phase:
A Formal Problem
Statement
Design phase
Selection of a Principle of Choice
It is a criterion that describes the acceptability of a solution approach
Reflection of decision-making objective(s)
In a model, it is the result variable
Choosing and validating against
High-risk versus low-risk
Optimize versus satisfice
Criterion is not a constraint
Normative models (= optimization)
the chosen alternative is demonstrably the best of all possible alternatives
Assumptions of rational decision makers
Humans are economic beings whose objective is to maximize the attainment of goals
For a decision-making situation, all alternative courses of action and consequences are known
Decision makers have an order or preference that enables them to rank the desirability of all consequences
Heuristic models (= suboptimization)
the chosen alternative is the best of only a subset of possible alternatives
Often, it is not feasible to optimize realistic (size/complexity) problems
Suboptimization may also help relax unrealistic assumptions in models
Help reach a good enough solution faster
Choice phase
The actual decision and the commitment to follow a certain course of action are made here
The boundary between the design and choice is often unclear (partially overlapping phases)
Generate alternatives while performing evaluations
Includes the search, evaluation, and recommendation of an appropriate solution to the model
Solving the model versus solving the problem!
Search approaches
Analytic techniques (solving with a formula)
Algorithms (step-by-step procedures)
Heuristics (rule of thumb)
Blind search (truly random search)
Additional activities
Sensitivity analysis
What-if analysis
Goal seeking
Implementation phase
Solution to a problem = Change
Change management?
Implementation: putting a recommended solution to work
Decision Style
The manner by which decision makers think and react to problems
perceive a problem
cognitive response
values and beliefs
When making decisions, people…
follow different steps/sequence
give different emphasis, time allotment, and priority to each steps
Personality temperament tests are often used to determine decision styles
There are many such tests
Meyers/Briggs,
True Colors (Birkman),
Keirsey Temperament Theory
Various tests measure somewhat different aspects of personality
They cannot be equated!
Decision-making styles
Heuristic versus Analytic
Autocratic versus Democratic
Consultative (with individuals or groups)
A successful computerized system should fit the decision style and the decision situation
Should be flexible and adaptable to different users (individuals vs. groups)
Decision-Making
Disciplines
Behavioral: anthropology, law, philosophy, political science, psychology, social psychology, and sociology
Scientific: computer science, decision analysis, economics, engineering, the hard sciences (e.g., biology, chemistry, physics), management science/operations research, mathematics, and statistics
Each discipline has its own set of assumptions and each contributes a unique, valid view of how people make decisions
Definition
Managerial decision making is synonymous with the entire management process
A process of choosing among two or more alternative courses of action for the purpose of attaining a goal(s)
Decision Making Process
Define the problem (or opportunity)
Construct a model that describes the real-world problem
Identify possible solutions to the modeled problem and evaluate the solutions
Compare, choose, and recommend a potential solution to the problem