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Decision support system

A decision support system (DSS) is an information system that supports business or organizational decision-making activities. DSSs serve the management, operations and planning levels of an organization (usually mid and higher management) and help people make decisions about problems that may be rapidly changing and not easily specified in advance—i.e., unstructured and semi-structured decision problems. Decision support systems can be either fully computerized or human-powered, or a combination of both.

Example of a decision support system for John Day Reservoir

While academics have perceived DSS as a tool to support decision making processes, DSS users see DSS as a tool to facilitate organizational processes.[1] Some authors have extended the definition of DSS to include any system that might support decision making and some DSS include a decision-making software component; Sprague (1980)[2] defines a properly termed DSS as follows:

  1. DSS tends to be aimed at the less well structured, underspecified problem that upper level managers typically face;
  2. DSS attempts to combine the use of models or analytic techniques with traditional data access and retrieval functions;
  3. DSS specifically focuses on features which make them easy to use by non-computer-proficient people in an interactive mode; and
  4. DSS emphasizes flexibility and adaptability to accommodate changes in the environment and the decision making approach of the user.

DSSs include knowledge-based systems. A properly designed DSS is an interactive software-based system intended to help decision makers compile useful information from a combination of raw data, documents, personal knowledge, and/or business models to identify and solve problems and make decisions.

Typical information that a decision support application might gather and present includes:

History edit

The concept of decision support has evolved mainly from the theoretical studies of organizational decision making done at the Carnegie Institute of Technology during the late 1950s and early 1960s, and the implementation work done in the 1960s.[3] DSS became an area of research of its own in the middle of the 1970s, before gaining in intensity during the 1980s.

In the middle and late 1980s, executive information systems (EIS), group decision support systems (GDSS), and organizational decision support systems (ODSS) evolved from the single user and model-oriented DSS. According to Sol (1987),[4] the definition and scope of DSS have been migrating over the years: in the 1970s DSS was described as "a computer-based system to aid decision making"; in the late 1970s the DSS movement started focusing on "interactive computer-based systems which help decision-makers utilize data bases and models to solve ill-structured problems"; in the 1980s DSS should provide systems "using suitable and available technology to improve effectiveness of managerial and professional activities", and towards the end of 1980s DSS faced a new challenge towards the design of intelligent workstations.[4]

In 1987, Texas Instruments completed development of the Gate Assignment Display System (GADS) for United Airlines. This decision support system is credited with significantly reducing travel delays by aiding the management of ground operations at various airports, beginning with O'Hare International Airport in Chicago and Stapleton Airport in Denver, Colorado.[5] Beginning in about 1990, data warehousing and on-line analytical processing (OLAP) began broadening the realm of DSS. As the turn of the millennium approached, new Web-based analytical applications were introduced.

DSS also have a weak connection to the user interface paradigm of hypertext. Both the University of Vermont PROMIS system (for medical decision making) and the Carnegie Mellon ZOG/KMS system (for military and business decision making) were decision support systems which also were major breakthroughs in user interface research. Furthermore, although hypertext researchers have generally been concerned with information overload, certain researchers, notably Douglas Engelbart, have been focused on decision makers in particular.

The advent of more and better reporting technologies has seen DSS start to emerge as a critical component of management design. Examples of this can be seen in the intense amount of discussion of DSS in the education environment.

Applications edit

DSS can theoretically be built in any knowledge domain. One example is the clinical decision support system for medical diagnosis. There are four stages in the evolution of clinical decision support system (CDSS): the primitive version is standalone and does not support integration; the second generation supports integration with other medical systems; the third is standard-based, and the fourth is service model-based.[6]

DSS is extensively used in business and management. Executive dashboard and other business performance software allow faster decision making, identification of negative trends, and better allocation of business resources. Due to DSS, all the information from any organization is represented in the form of charts, graphs i.e. in a summarized way, which helps the management to take strategic decisions. For example, one of the DSS applications is the management and development of complex anti-terrorism systems.[7] Other examples include a bank loan officer verifying the credit of a loan applicant or an engineering firm that has bids on several projects and wants to know if they can be competitive with their costs.

A growing area of DSS application, concepts, principles, and techniques is in agricultural production, marketing for sustainable development. Agricultural DSSes began to be developed and promoted in the 1990s.[8] For example, the DSSAT4 package,[9] The Decision Support System for Agrotechnology Transfer[10] developed through financial support of USAID during the 1980s[citation needed] and 1990s, has allowed rapid assessment of several agricultural production systems around the world to facilitate decision-making at the farm and policy levels. Precision agriculture seeks to tailor decisions to particular portions of farm fields. There are, however, many constraints to the successful adoption of DSS in agriculture.[11]

DSS is also prevalent in forest management where the long planning horizon and the spatial dimension of planning problems demand specific requirements. All aspects of Forest management, from log transportation, harvest scheduling to sustainability and ecosystem protection have been addressed by modern DSSs. In this context, the consideration of single or multiple management objectives related to the provision of goods and services that are traded or non-traded and often subject to resource constraints and decision problems. The Community of Practice of Forest Management Decision Support Systems provides a large repository on knowledge about the construction and use of forest Decision Support Systems.[12]

A specific example concerns the Canadian National Railway system, which tests its equipment on a regular basis using a decision support system. A problem faced by any railroad is worn-out or defective rails, which can result in hundreds of derailments per year. Under a DSS, the Canadian National Railway system managed to decrease the incidence of derailments at the same time other companies were experiencing an increase.

DSS has been used for risk assessment to interpret monitoring data from large engineering structures such as dams, towers, cathedrals, or masonry buildings. For instance, Mistral is an expert system to monitor dam safety, developed in the 1990s by Ismes (Italy). It gets data from an automatic monitoring system and performs a diagnosis of the state of the dam. Its first copy, installed in 1992 on the Ridracoli Dam (Italy), is still operational 24/7/365.[13] It has been installed on several dams in Italy and abroad (e.g., Itaipu Dam in Brazil),[14] and on monuments under the name of Kaleidos.[15] Mistral is a registered trade mark of CESI. GIS has been successfully used since the '90s in conjunction with DSS, to show on a map real-time risk evaluations based on monitoring data gathered in the area of the Val Pola disaster (Italy).[16]

Components edit

 
Design of a drought mitigation decision support system

Three fundamental components of a DSS architecture are:[17][18][19][20][21]

  1. the database (or knowledge base),
  2. the model (i.e., the decision context and user criteria)
  3. the user interface.

The users themselves are also important components of the architecture.[17][21]

Taxonomies edit

Using the relationship with the user as the criterion, Haettenschwiler[17] differentiates passive, active, and cooperative DSS. A passive DSS is a system that aids the process of decision making, but that cannot bring out explicit decision suggestions or solutions. An active DSS can bring out such decision suggestions or solutions. A cooperative DSS allows for an iterative process between human and system towards the achievement of a consolidated solution: the decision maker (or its advisor) can modify, complete, or refine the decision suggestions provided by the system, before sending them back to the system for validation, and likewise the system again improves, completes, and refines the suggestions of the decision maker and sends them back to them for validation.

Another taxonomy for DSS, according to the mode of assistance, has been created by D. Power:[22] he differentiates communication-driven DSS, data-driven DSS, document-driven DSS, knowledge-driven DSS, and model-driven DSS.[18]

  • A communication-driven DSS enables cooperation, supporting more than one person working on a shared task; examples include integrated tools like Google Docs or Microsoft SharePoint Workspace.[23]
  • A data-driven DSS (or data-oriented DSS) emphasizes access to and manipulation of a time series of internal company data and, sometimes, external data.
  • A document-driven DSS manages, retrieves, and manipulates unstructured information in a variety of electronic formats.
  • A knowledge-driven DSS provides specialized problem-solving expertise stored as facts, rules, procedures or in similar structures like interactive decision trees and flowcharts.[18]
  • A model-driven DSS emphasizes access to and manipulation of a statistical, financial, optimization, or simulation model. Model-driven DSS use data and parameters provided by users to assist decision makers in analyzing a situation; they are not necessarily data-intensive. Dicodess is an example of an open-source model-driven DSS generator.[24]

Using scope as the criterion, Power[25] differentiates enterprise-wide DSS and desktop DSS. An enterprise-wide DSS is linked to large data warehouses and serves many managers in the company. A desktop, single-user DSS is a small system that runs on an individual manager's PC.

Development frameworks edit

Similarly to other systems, DSS systems require a structured approach. Such a framework includes people, technology, and the development approach.[19]

The Early Framework of Decision Support System consists of four phases:

  • Intelligence – Searching for conditions that call for decision;
  • Design – Developing and analyzing possible alternative actions of solution;
  • Choice – Selecting a course of action among those;
  • Implementation – Adopting the selected course of action in decision situation.

DSS technology levels (of hardware and software) may include:

  1. The actual application that will be used by the user. This is the part of the application that allows the decision maker to make decisions in a particular problem area. The user can act upon that particular problem.
  2. Generator contains Hardware/software environment that allows people to easily develop specific DSS applications. This level makes use of case tools or systems such as Crystal, Analytica and iThink.
  3. Tools include lower level hardware/software. DSS generators including special languages, function libraries and linking modules

An iterative developmental approach allows for the DSS to be changed and redesigned at various intervals. Once the system is designed, it will need to be tested and revised where necessary for the desired outcome.

Classification edit

There are several ways to classify DSS applications. Not every DSS fits neatly into one of the categories, but may be a mix of two or more architectures.

Holsapple and Whinston[26] classify DSS into the following six frameworks: text-oriented DSS, database-oriented DSS, spreadsheet-oriented DSS, solver-oriented DSS, rule-oriented DSS, and compound DSS. A compound DSS is the most popular classification for a DSS; it is a hybrid system that includes two or more of the five basic structures.[26]

The support given by DSS can be separated into three distinct, interrelated categories:[27] Personal Support, Group Support, and Organizational Support.

DSS components may be classified as:

  1. Inputs: Factors, numbers, and characteristics to analyze
  2. User knowledge and expertise: Inputs requiring manual analysis by the user
  3. Outputs: Transformed data from which DSS "decisions" are generated
  4. Decisions: Results generated by the DSS based on user criteria

DSSs which perform selected cognitive decision-making functions and are based on artificial intelligence or intelligent agents technologies are called intelligent decision support systems (IDSS)[28]

The nascent field of decision engineering treats the decision itself as an engineered object, and applies engineering principles such as design and quality assurance to an explicit representation of the elements that make up a decision.

See also edit

References edit

  1. ^ Keen, Peter (1980). "Decision support systems : a research perspective". Cambridge, Massachusetts : Center for Information Systems Research, Alfred P. Sloan School of Management. hdl:1721.1/47172. {{cite journal}}: Cite journal requires |journal= (help)
  2. ^ Sprague, R;(1980). "A Framework for the Development of Decision Support Systems." MIS Quarterly. Vol. 4, No. 4, pp. 1–25.
  3. ^ Keen, P. G. W. (1978). Decision support systems: an organizational perspective. Reading, Mass., Addison-Wesley Pub. Co. ISBN 0-201-03667-3
  4. ^ a b Henk G. Sol et al. (1987). Expert systems and artificial intelligence in decision support systems: proceedings of the Second Mini Euroconference, Lunteren, The Netherlands, 17–20 November 1985. Springer, 1987. ISBN 90-277-2437-7. pp. 1–2.
  5. ^ Efraim Turban; Jay E. Aronson; Ting-Peng Liang (2008). Decision Support Systems and Intelligent Systems. p. 574.
  6. ^ Wright, A; Sittig, D (2008). "A framework and model for evaluating clinical decision support architectures q". Journal of Biomedical Informatics. 41 (6): 982–990. doi:10.1016/j.jbi.2008.03.009. PMC 2638589. PMID 18462999.
  7. ^ Zhang, S.X.; Babovic, V. (2011). "An evolutionary real options framework for the design and management of projects and systems with complex real options and exercising conditions". Decision Support Systems. 51 (1): 119–129. doi:10.1016/j.dss.2010.12.001. S2CID 15362734.
  8. ^ Papadopoulos, A.P.; Shipp, J.L; Jarvis, William R.; Jewett, Thomas J.; Clarke, N.D. (1 July 1995). "The Harrow Expert System for Greenhouse Vegetables". HortScience. 30 (4). American Society for Horticultural Science: 846F–847. doi:10.21273/HORTSCI.30.4.846F. ISSN 0018-5345.
  9. ^ (PDF). Archived from the original (PDF) on 27 September 2007. Retrieved 29 December 2006.
  10. ^ "Official Home of the DSSAT Cropping Systems Model". DSSAT.net. Retrieved 19 August 2021.
  11. ^ Stephens, W. and Middleton, T. (2002). Why has the uptake of Decision Support Systems been so poor? In: Crop-soil simulation models in developing countries. 129-148 (Eds R.B. Matthews and William Stephens). Wallingford:CABI.
  12. ^ Community of Practice Forest Management Decision Support Systems, http://www.forestdss.org/
  13. ^ Salvaneschi, Paolo; Cadei, Mauro; Lazzari, Marco (1996). "Applying AI to structural safety monitoring and evaluation". IEEE Expert. 11 (4): 24–34. doi:10.1109/64.511774. Retrieved 5 March 2014.
  14. ^ Masera, Alberto; et al. "Integrated approach to dam safety". Comitê Brasileiro de Barragens. Retrieved 16 December 2020.
  15. ^ Lancini, Stefano; Lazzari, Marco; Masera, Alberto; Salvaneschi, Paolo (1997). "Diagnosing Ancient Monuments with Expert Software" (PDF). Structural Engineering International. 7 (4): 288–291. doi:10.2749/101686697780494392.
  16. ^ Lazzari, M.; Salvaneschi, P. (1999). "Embedding a Geographic Information System in a Decision Support System for Landslide Hazard Monitoring" (PDF). Natural Hazards. 20 (2–3): 185–195. doi:10.1023/A:1008187024768. S2CID 1746570.
  17. ^ a b c Haettenschwiler, P. (1999). Neues anwenderfreundliches Konzept der Entscheidungsunterstützung. Gutes Entscheiden in Wirtschaft, Politik und Gesellschaft. Zurich, vdf Hochschulverlag AG: 189-208.
  18. ^ a b c Power, D. J. (2002). Decision support systems: concepts and resources for managers. Westport, Conn., Quorum Books.
  19. ^ a b Sprague, R. H. and E. D. Carlson (1982). Building effective decision support systems. Englewood Cㄴliffs, N.J., Prentice-Hall. ISBN 0-13-086215-0
  20. ^ Haag, Cummings, ㅊㄴㅋMcCubbrey, Pinsonneault, Donovan (2000). Management Informatㅍㅈion Systems: For The Information Age. McGraw-Hill Ryerson Limited: 136-140. ISBN 0-07-281947-2
  21. ^ a b Marakas, G. M. (1999). Decision support systems in the twenty-first century. Upper Saddle River, N.J., Prentice Hall.
  22. ^ "Decision Support Systems (DSS) Articles On-Line".
  23. ^ Stanhope, Phil (2002). Get in the Groove: Building Tools and Peer-to-Peer Solutions with the Groove Platform. Wiley. ISBN 9780764548932. Retrieved 30 October 2019 – via ACM Digital Library.
  24. ^ Gachet, A. (2004). Building Model-Driven Decision Support Systems with Dicodess. Zurich, VDF.
  25. ^ Power, D. J. (1996). What is a DSS? The On-Line Executive Journal for Data-Intensive Decision Support 1(3).
  26. ^ a b Holsapple, C.W., and A. B. Whinston. (1996). Decision Support Systems: A Knowledge-Based Approach. St. Paul: West Publishing. ISBN 0-324-03578-0
  27. ^ Hackathorn, R. D., and P. G. W. Keen. (1981, September). "Organizational Strategies for Personal Computing in Decision Support Systems." MIS Quarterly, Vol. 5, No. 3.
  28. ^ F. Burstein; C. W. Holsapple (2008). Handbook on Decision Support Systems. Berlin: Springer Verlag.

Further reading edit

  • Marius Cioca, Florin Filip (2015). Decision Support Systems – A Bibliography 1947-2007.
  • Borges, J.G, Nordström, E.-M. Garcia Gonzalo, J. Hujala, T. Trasobares, A. (eds). (2014). " Computer-based tools for supporting forest management. The experience and the expertise world-wide. Dept of Forest Resource Management, Swedish University of Agricultural Sciences. Umeå. Sweden.
  • Delic, K.A., Douillet, L. and Dayal, U. (2001) "Towards an architecture for real-time decision support systems:challenges and solutions.
  • Diasio, S., Agell, N. (2009) "The evolution of expertise in decision support technologies: A challenge for organizations," cscwd, pp. 692–697, 13th International Conference on Computer Supported Cooperative Work in Design, 2009.
  • Gadomski, A.M. et al.(2001) "An Approach to the Intelligent Decision Advisor (IDA) for Emergency Managers 5 March 2016 at the Wayback Machine", Int. J. Risk Assessment and Management, Vol. 2, Nos. 3/4.
  • Gomes da Silva, Carlos; Clímaco, João; Figueira, José (2006). "A scatter search method for bi-criteria {0,1}-knapsack problems". European Journal of Operational Research. 169 (2). Elsevier BV: 373–391. doi:10.1016/j.ejor.2004.08.005. ISSN 0377-2217.
  • Ender, Gabriela; E-Book (2005–2011) about the OpenSpace-Online Real-Time Methodology: Knowledge-sharing, problem solving, results-oriented group dialogs about topics that matter with extensive conference documentation in real-time. Download
  • Jiménez, Antonio; Ríos-Insua, Sixto; Mateos, Alfonso (2006). "A generic multi-attribute analysis system". Computers & Operations Research. 33 (4). Elsevier BV: 1081–1101. doi:10.1016/j.cor.2004.09.003. ISSN 0305-0548.
  • Jintrawet, Attachai (1995). "A Decision Support System for Rapid Assessment of Lowland Rice-based Cropping Alternatives in Thailand". Agricultural Systems. 47 (2): 245–258. doi:10.1016/0308-521X(94)P4414-W.
  • Matsatsinis, N.F. and Y. Siskos (2002), Intelligent support systems for marketing decisions, Kluwer Academic Publishers.
  • Omid A.Sianaki, O Hussain, T Dillon, AR Tabesh – ... Intelligence, Modelling and Simulation (CIMSiM), 2010, Intelligent decision support system for including consumers' preferences in residential energy consumption in smart grid
  • Power, D. J. (2000). Web-based and model-driven decision support systems: concepts and issues. in proceedings of the Americas Conference on Information Systems, Long Beach, California.
  • Reich, Yoram; Kapeliuk, Adi (2005). "A framework for organizing the space of decision problems with application to solving subjective, context-dependent problems". Decision Support Systems. 41 (1). Elsevier BV: 1–19. doi:10.1016/j.dss.2004.05.001. ISSN 0167-9236.
  • Sauter, V. L. (1997). Decision support systems: an applied managerial approach. New York, John Wiley. ISBN 978-0471173359
  • Silver, M. (1991). Systems that support decision makers: description and analysis. Chichester; New York, Wiley.
  • Sprague, Ralph (1986). Decision support systems : putting theory into practice. Englewood Cliffs, N.J: Prentice-Hall. ISBN 978-0-13-197286-5. OCLC 13123699.

decision, support, system, decision, support, system, information, system, that, supports, business, organizational, decision, making, activities, dsss, serve, management, operations, planning, levels, organization, usually, higher, management, help, people, m. A decision support system DSS is an information system that supports business or organizational decision making activities DSSs serve the management operations and planning levels of an organization usually mid and higher management and help people make decisions about problems that may be rapidly changing and not easily specified in advance i e unstructured and semi structured decision problems Decision support systems can be either fully computerized or human powered or a combination of both Example of a decision support system for John Day Reservoir While academics have perceived DSS as a tool to support decision making processes DSS users see DSS as a tool to facilitate organizational processes 1 Some authors have extended the definition of DSS to include any system that might support decision making and some DSS include a decision making software component Sprague 1980 2 defines a properly termed DSS as follows DSS tends to be aimed at the less well structured underspecified problem that upper level managers typically face DSS attempts to combine the use of models or analytic techniques with traditional data access and retrieval functions DSS specifically focuses on features which make them easy to use by non computer proficient people in an interactive mode and DSS emphasizes flexibility and adaptability to accommodate changes in the environment and the decision making approach of the user DSSs include knowledge based systems A properly designed DSS is an interactive software based system intended to help decision makers compile useful information from a combination of raw data documents personal knowledge and or business models to identify and solve problems and make decisions Typical information that a decision support application might gather and present includes inventories of information assets including legacy and relational data sources cubes data warehouses and data marts comparative sales figures between one period and the next projected revenue figures based on product sales assumptions Contents 1 History 2 Applications 3 Components 4 Taxonomies 5 Development frameworks 6 Classification 7 See also 8 References 9 Further readingHistory editThe concept of decision support has evolved mainly from the theoretical studies of organizational decision making done at the Carnegie Institute of Technology during the late 1950s and early 1960s and the implementation work done in the 1960s 3 DSS became an area of research of its own in the middle of the 1970s before gaining in intensity during the 1980s In the middle and late 1980s executive information systems EIS group decision support systems GDSS and organizational decision support systems ODSS evolved from the single user and model oriented DSS According to Sol 1987 4 the definition and scope of DSS have been migrating over the years in the 1970s DSS was described as a computer based system to aid decision making in the late 1970s the DSS movement started focusing on interactive computer based systems which help decision makers utilize data bases and models to solve ill structured problems in the 1980s DSS should provide systems using suitable and available technology to improve effectiveness of managerial and professional activities and towards the end of 1980s DSS faced a new challenge towards the design of intelligent workstations 4 In 1987 Texas Instruments completed development of the Gate Assignment Display System GADS for United Airlines This decision support system is credited with significantly reducing travel delays by aiding the management of ground operations at various airports beginning with O Hare International Airport in Chicago and Stapleton Airport in Denver Colorado 5 Beginning in about 1990 data warehousing and on line analytical processing OLAP began broadening the realm of DSS As the turn of the millennium approached new Web based analytical applications were introduced DSS also have a weak connection to the user interface paradigm of hypertext Both the University of Vermont PROMIS system for medical decision making and the Carnegie Mellon ZOG KMS system for military and business decision making were decision support systems which also were major breakthroughs in user interface research Furthermore although hypertext researchers have generally been concerned with information overload certain researchers notably Douglas Engelbart have been focused on decision makers in particular The advent of more and better reporting technologies has seen DSS start to emerge as a critical component of management design Examples of this can be seen in the intense amount of discussion of DSS in the education environment Applications editDSS can theoretically be built in any knowledge domain One example is the clinical decision support system for medical diagnosis There are four stages in the evolution of clinical decision support system CDSS the primitive version is standalone and does not support integration the second generation supports integration with other medical systems the third is standard based and the fourth is service model based 6 DSS is extensively used in business and management Executive dashboard and other business performance software allow faster decision making identification of negative trends and better allocation of business resources Due to DSS all the information from any organization is represented in the form of charts graphs i e in a summarized way which helps the management to take strategic decisions For example one of the DSS applications is the management and development of complex anti terrorism systems 7 Other examples include a bank loan officer verifying the credit of a loan applicant or an engineering firm that has bids on several projects and wants to know if they can be competitive with their costs A growing area of DSS application concepts principles and techniques is in agricultural production marketing for sustainable development Agricultural DSSes began to be developed and promoted in the 1990s 8 For example the DSSAT4 package 9 The Decision Support System for Agrotechnology Transfer 10 developed through financial support of USAID during the 1980s citation needed and 1990s has allowed rapid assessment of several agricultural production systems around the world to facilitate decision making at the farm and policy levels Precision agriculture seeks to tailor decisions to particular portions of farm fields There are however many constraints to the successful adoption of DSS in agriculture 11 DSS is also prevalent in forest management where the long planning horizon and the spatial dimension of planning problems demand specific requirements All aspects of Forest management from log transportation harvest scheduling to sustainability and ecosystem protection have been addressed by modern DSSs In this context the consideration of single or multiple management objectives related to the provision of goods and services that are traded or non traded and often subject to resource constraints and decision problems The Community of Practice of Forest Management Decision Support Systems provides a large repository on knowledge about the construction and use of forest Decision Support Systems 12 A specific example concerns the Canadian National Railway system which tests its equipment on a regular basis using a decision support system A problem faced by any railroad is worn out or defective rails which can result in hundreds of derailments per year Under a DSS the Canadian National Railway system managed to decrease the incidence of derailments at the same time other companies were experiencing an increase DSS has been used for risk assessment to interpret monitoring data from large engineering structures such as dams towers cathedrals or masonry buildings For instance Mistral is an expert system to monitor dam safety developed in the 1990s by Ismes Italy It gets data from an automatic monitoring system and performs a diagnosis of the state of the dam Its first copy installed in 1992 on the Ridracoli Dam Italy is still operational 24 7 365 13 It has been installed on several dams in Italy and abroad e g Itaipu Dam in Brazil 14 and on monuments under the name of Kaleidos 15 Mistral is a registered trade mark of CESI GIS has been successfully used since the 90s in conjunction with DSS to show on a map real time risk evaluations based on monitoring data gathered in the area of the Val Pola disaster Italy 16 Components edit nbsp Design of a drought mitigation decision support system Three fundamental components of a DSS architecture are 17 18 19 20 21 the database or knowledge base the model i e the decision context and user criteria the user interface The users themselves are also important components of the architecture 17 21 Taxonomies editUsing the relationship with the user as the criterion Haettenschwiler 17 differentiates passive active and cooperative DSS A passive DSS is a system that aids the process of decision making but that cannot bring out explicit decision suggestions or solutions An active DSS can bring out such decision suggestions or solutions A cooperative DSS allows for an iterative process between human and system towards the achievement of a consolidated solution the decision maker or its advisor can modify complete or refine the decision suggestions provided by the system before sending them back to the system for validation and likewise the system again improves completes and refines the suggestions of the decision maker and sends them back to them for validation Another taxonomy for DSS according to the mode of assistance has been created by D Power 22 he differentiates communication driven DSS data driven DSS document driven DSS knowledge driven DSS and model driven DSS 18 A communication driven DSS enables cooperation supporting more than one person working on a shared task examples include integrated tools like Google Docs or Microsoft SharePoint Workspace 23 A data driven DSS or data oriented DSS emphasizes access to and manipulation of a time series of internal company data and sometimes external data A document driven DSS manages retrieves and manipulates unstructured information in a variety of electronic formats A knowledge driven DSS provides specialized problem solving expertise stored as facts rules procedures or in similar structures like interactive decision trees and flowcharts 18 A model driven DSS emphasizes access to and manipulation of a statistical financial optimization or simulation model Model driven DSS use data and parameters provided by users to assist decision makers in analyzing a situation they are not necessarily data intensive Dicodess is an example of an open source model driven DSS generator 24 Using scope as the criterion Power 25 differentiates enterprise wide DSS and desktop DSS An enterprise wide DSS is linked to large data warehouses and serves many managers in the company A desktop single user DSS is a small system that runs on an individual manager s PC Development frameworks editSimilarly to other systems DSS systems require a structured approach Such a framework includes people technology and the development approach 19 The Early Framework of Decision Support System consists of four phases Intelligence Searching for conditions that call for decision Design Developing and analyzing possible alternative actions of solution Choice Selecting a course of action among those Implementation Adopting the selected course of action in decision situation DSS technology levels of hardware and software may include The actual application that will be used by the user This is the part of the application that allows the decision maker to make decisions in a particular problem area The user can act upon that particular problem Generator contains Hardware software environment that allows people to easily develop specific DSS applications This level makes use of case tools or systems such as Crystal Analytica and iThink Tools include lower level hardware software DSS generators including special languages function libraries and linking modules An iterative developmental approach allows for the DSS to be changed and redesigned at various intervals Once the system is designed it will need to be tested and revised where necessary for the desired outcome Classification editThere are several ways to classify DSS applications Not every DSS fits neatly into one of the categories but may be a mix of two or more architectures Holsapple and Whinston 26 classify DSS into the following six frameworks text oriented DSS database oriented DSS spreadsheet oriented DSS solver oriented DSS rule oriented DSS and compound DSS A compound DSS is the most popular classification for a DSS it is a hybrid system that includes two or more of the five basic structures 26 The support given by DSS can be separated into three distinct interrelated categories 27 Personal Support Group Support and Organizational Support DSS components may be classified as Inputs Factors numbers and characteristics to analyze User knowledge and expertise Inputs requiring manual analysis by the user Outputs Transformed data from which DSS decisions are generated Decisions Results generated by the DSS based on user criteria DSSs which perform selected cognitive decision making functions and are based on artificial intelligence or intelligent agents technologies are called intelligent decision support systems IDSS 28 The nascent field of decision engineering treats the decision itself as an engineered object and applies engineering principles such as design and quality assurance to an explicit representation of the elements that make up a decision See also edit nbsp Wikimedia Commons has media related to Decision support systems Argument map Cognitive assets organizational Decision theory Enterprise decision management Expert system Information assurance Integrative thinking Judge advisor system Knapsack problem Land allocation decision support system List of concept and mind mapping software Morphological analysis problem solving Online deliberation Participation decision making Predictive analytics Project management software Self service software Spatial decision support system Strategic planning softwareReferences edit Keen Peter 1980 Decision support systems a research perspective Cambridge Massachusetts Center for Information Systems Research Alfred P Sloan School of Management hdl 1721 1 47172 a href Template Cite journal html title Template Cite journal cite journal a Cite journal requires journal help Sprague R 1980 A Framework for the Development of Decision Support Systems MIS Quarterly Vol 4 No 4 pp 1 25 Keen P G W 1978 Decision support systems an organizational perspective Reading Mass Addison Wesley Pub Co ISBN 0 201 03667 3 a b Henk G Sol et al 1987 Expert systems and artificial intelligence in decision support systems proceedings of the Second Mini Euroconference Lunteren The Netherlands 17 20 November 1985 Springer 1987 ISBN 90 277 2437 7 pp 1 2 Efraim Turban Jay E Aronson Ting Peng Liang 2008 Decision Support Systems and Intelligent Systems p 574 Wright A Sittig D 2008 A framework and model for evaluating clinical decision support architectures q Journal of Biomedical Informatics 41 6 982 990 doi 10 1016 j jbi 2008 03 009 PMC 2638589 PMID 18462999 Zhang S X Babovic V 2011 An evolutionary real options framework for the design and management of projects and systems with complex real options and exercising conditions Decision Support Systems 51 1 119 129 doi 10 1016 j dss 2010 12 001 S2CID 15362734 Papadopoulos A P Shipp J L Jarvis William R Jewett Thomas J Clarke N D 1 July 1995 The Harrow Expert System for Greenhouse Vegetables HortScience 30 4 American Society for Horticultural Science 846F 847 doi 10 21273 HORTSCI 30 4 846F ISSN 0018 5345 DSSAT4 pdf PDF Archived from the original PDF on 27 September 2007 Retrieved 29 December 2006 Official Home of the DSSAT Cropping Systems Model DSSAT net Retrieved 19 August 2021 Stephens W and Middleton T 2002 Why has the uptake of Decision Support Systems been so poor In Crop soil simulation models in developing countries 129 148 Eds R B Matthews and William Stephens Wallingford CABI Community of Practice Forest Management Decision Support Systems http www forestdss org Salvaneschi Paolo Cadei Mauro Lazzari Marco 1996 Applying AI to structural safety monitoring and evaluation IEEE Expert 11 4 24 34 doi 10 1109 64 511774 Retrieved 5 March 2014 Masera Alberto et al Integrated approach to dam safety Comite Brasileiro de Barragens Retrieved 16 December 2020 Lancini Stefano Lazzari Marco Masera Alberto Salvaneschi Paolo 1997 Diagnosing Ancient Monuments with Expert Software PDF Structural Engineering International 7 4 288 291 doi 10 2749 101686697780494392 Lazzari M Salvaneschi P 1999 Embedding a Geographic Information System in a Decision Support System for Landslide Hazard Monitoring PDF Natural Hazards 20 2 3 185 195 doi 10 1023 A 1008187024768 S2CID 1746570 a b c Haettenschwiler P 1999 Neues anwenderfreundliches Konzept der Entscheidungsunterstutzung Gutes Entscheiden in Wirtschaft Politik und Gesellschaft Zurich vdf Hochschulverlag AG 189 208 a b c Power D J 2002 Decision support systems concepts and resources for managers Westport Conn Quorum Books a b Sprague R H and E D Carlson 1982 Building effective decision support systems Englewood Cㄴliffs N J Prentice Hall ISBN 0 13 086215 0 Haag Cummings ㅊㄴㅋMcCubbrey Pinsonneault Donovan 2000 Management Informatㅍㅈion Systems For The Information Age McGraw Hill Ryerson Limited 136 140 ISBN 0 07 281947 2 a b Marakas G M 1999 Decision support systems in the twenty first century Upper Saddle River N J Prentice Hall Decision Support Systems DSS Articles On Line Stanhope Phil 2002 Get in the Groove Building Tools and Peer to Peer Solutions with the Groove Platform Wiley ISBN 9780764548932 Retrieved 30 October 2019 via ACM Digital Library Gachet A 2004 Building Model Driven Decision Support Systems with Dicodess Zurich VDF Power D J 1996 What is a DSS The On Line Executive Journal for Data Intensive Decision Support 1 3 a b Holsapple C W and A B Whinston 1996 Decision Support Systems A Knowledge Based Approach St Paul West Publishing ISBN 0 324 03578 0 Hackathorn R D and P G W Keen 1981 September Organizational Strategies for Personal Computing in Decision Support Systems MIS Quarterly Vol 5 No 3 F Burstein C W Holsapple 2008 Handbook on Decision Support Systems Berlin Springer Verlag Further reading editMarius Cioca Florin Filip 2015 Decision Support Systems A Bibliography 1947 2007 Borges J G Nordstrom E M Garcia Gonzalo J Hujala T Trasobares A eds 2014 Computer based tools for supporting forest management The experience and the expertise world wide Dept of Forest Resource Management Swedish University of Agricultural Sciences Umea Sweden Delic K A Douillet L and Dayal U 2001 Towards an architecture for real time decision support systems challenges and solutions Diasio S Agell N 2009 The evolution of expertise in decision support technologies A challenge for organizations cscwd pp 692 697 13th International Conference on Computer Supported Cooperative Work in Design 2009 https web archive org web 20121009235747 http www computer org portal web csdl doi 10 1109 CSCWD 2009 4968139 Gadomski A M et al 2001 An Approach to the Intelligent Decision Advisor IDA for Emergency Managers Archived 5 March 2016 at the Wayback Machine Int J Risk Assessment and Management Vol 2 Nos 3 4 Gomes da Silva Carlos Climaco Joao Figueira Jose 2006 A scatter search method for bi criteria 0 1 knapsack problems European Journal of Operational Research 169 2 Elsevier BV 373 391 doi 10 1016 j ejor 2004 08 005 ISSN 0377 2217 Ender Gabriela E Book 2005 2011 about the OpenSpace Online Real Time Methodology Knowledge sharing problem solving results oriented group dialogs about topics that matter with extensive conference documentation in real time Download https web archive org web 20070103022920 http www openspace online com OpenSpace Online eBook en pdf Jimenez Antonio Rios Insua Sixto Mateos Alfonso 2006 A generic multi attribute analysis system Computers amp Operations Research 33 4 Elsevier BV 1081 1101 doi 10 1016 j cor 2004 09 003 ISSN 0305 0548 Jintrawet Attachai 1995 A Decision Support System for Rapid Assessment of Lowland Rice based Cropping Alternatives in Thailand Agricultural Systems 47 2 245 258 doi 10 1016 0308 521X 94 P4414 W Matsatsinis N F and Y Siskos 2002 Intelligent support systems for marketing decisions Kluwer Academic Publishers Omid A Sianaki O Hussain T Dillon AR Tabesh Intelligence Modelling and Simulation CIMSiM 2010 Intelligent decision support system for including consumers preferences in residential energy consumption in smart grid Power D J 2000 Web based and model driven decision support systems concepts and issues in proceedings of the Americas Conference on Information Systems Long Beach California Reich Yoram Kapeliuk Adi 2005 A framework for organizing the space of decision problems with application to solving subjective context dependent problems Decision Support Systems 41 1 Elsevier BV 1 19 doi 10 1016 j dss 2004 05 001 ISSN 0167 9236 Sauter V L 1997 Decision support systems an applied managerial approach New York John Wiley ISBN 978 0471173359 Silver M 1991 Systems that support decision makers description and analysis Chichester New York Wiley Sprague Ralph 1986 Decision support systems putting theory into practice Englewood Cliffs N J Prentice Hall ISBN 978 0 13 197286 5 OCLC 13123699 Retrieved from https en wikipedia org w index php title Decision support system amp oldid 1216075157, wikipedia, wiki, book, books, library,

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