Decision support systems: Drive better decision-making with data (2024)

Decision support systems are a subset of business intelligence aimed at helping organizations make informed business decisions based on vast troves of analyzed data.

Decision support systems: Drive better decision-making with data (1)

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Decision support systems definition

A decision support system (DSS) is an interactive information system that analyzes large volumes of data for informing business decisions. A DSS supports the management, operations, and planning levels of an organization in making better decisions by assessing the significance of uncertainties and the tradeoffs involved in making one decision over another.

A DSS leverages a combination of raw data, documents, personal knowledge, and/or business models to help users make decisions. The data sources used by a DSS could include relational data sources, cubes, data warehouses, electronic health records (EHRs), revenue projections, sales projections, and more.

Purpose of a decision support system

DSSes differ from other operations applications in that their purpose is to analyze data rather than collect it. A DSS integrates and synthesizes multiple variables to project the likelihood of various outcomes.

The concept of decision support systems grew out of research conducted at the Carnegie Institute of Technology in the 1950s and 1960s, but took root in the enterprise in the 1980s in the form of executive information systems (EIS), group decision support systems (GDSS), and organizational decision support systems (ODSS).

With organizations increasingly focused on data-driven decision-making, decision science (or decision intelligence) is on the rise, and decision scientists may be the key to unlocking the potential of decision science systems. Bringing together applied data science, social science, and managerial science, decision science focuses on selecting between options to reduce the effort required to make higher-quality decisions.

Decision support system examples

Decision support systems are used in a broad array of industries. Examples include:

  • Route optimization. A DSS can be used to plan the optimal route between two points by analyzing the available options. These systems often include the capability to monitor traffic in real-time to route around congestion. American Airlines uses an intelligent gate routing program to automatically assign the nearest gate available to arriving aircraft, thus reducing taxi times and saving thousands of gallons of jet fuel per year.
  • Crop planning. Farmers use DSS to help determine the best time to plant, fertilize, and reap their crops. Bayer Crop Science has applied analytics and decision support to every element of its business, including the creation of “virtual factories” to perform “what-if” analyses at its corn manufacturing sites.
  • Clinical DSS. These systems help clinicians diagnose their patients and achieve better outcomes. Fresenius Medical Care has developed a system that leverages predictive analytics, machine learning, and cloud computing to proactively identify when kidney dialysis patients might be suffering a potentially life-threatening complication.
  • ERP dashboards. These systems help managers monitor performance indicators. Digital marketing and services firm Clearlink uses a DSS system to help its managers pinpoint which agents need extra help.

Decision support systems vs. business intelligence

DSS and business intelligence (BI) are often conflated. Some experts consider BI a successor to DSS. Decision support systems are generally recognized as one element of business intelligence systems, along with data warehousing and data mining.

Whereas BI is a broad category of applications, services, and technologies for gathering, storing, analyzing, and accessing data for decision-making, DSS applications tend to be purpose-built for specific decisions. For example, a business DSS might help a company project its revenue over a set period by analyzing past product sales data and current variables. Healthcare providers use clinical decision support systems to make the clinical workflow more efficient: computerized alerts and reminders to care providers, clinical guidelines, condition-specific order sets, and so on.

DSS vs. decision intelligence

Decision intelligence seeks to update and reinvent decision support systems with a sophisticated mix of tools, including artificial intelligence (AI) and machine learning (ML), to help automate decision-making. According to research firm Gartner, the goal of decision intelligence is to design, model, align, execute, monitor, and tune decision models and processes.

Types of decision support system

In the book Decision Support Systems: Concepts and Resources for Managers, Daniel J. Power, professor of management information systems at the University of Northern Iowa, breaks down decision support systems into five categories based on their primary sources of information.

Data-driven DSS. These systems include file drawer and management reporting systems, executive information systems, and geographic information systems (GIS). They emphasize access to and manipulation of large databases of structured data, often a time-series of internal company data and sometimes external data.

Model-driven DSS. These DSS include systems that use accounting and financial models, representational models, and optimization models. They emphasize access to and manipulation of a model. They generally leverage simple statistical and analytical tools, but Power notes that some OLAP systems that allow complex analysis of data may be classified as hybrid DSS systems. Model-driven DSS use data and parameters provided by decision-makers, but Power notes they are usually not data-intensive.

Knowledge-driven DSS. These systems suggest or recommend actions to managers. Sometimes called advisory systems, consultation systems, or suggestion systems, they provide specialized problem-solving expertise based on a particular domain. They are typically used for tasks such as classification, configuration, diagnosis, interpretation, planning, and prediction that would otherwise depend on a human expert. These systems are often paired with data mining to sift through databases to produce data content relationships.

Document-driven DSS. These systems integrate storage and processing technologies for document retrieval and analysis. A search engine is an example.

Communication-driven and group DSS. Communication-driven DSS focuses on communication, collaboration, and coordination to help people working on a shared task, while group DSS (GDSS) focuses on supporting groups of decision-makers to analyze problem situations and perform group decision-making tasks.

Components of a decision support system

According to Management Study HQ, decision support systems consist of three key components: the database, software system, and user interface.

DSS database. The database draws on a variety of sources, including data internal to the organization, data generated by applications, and external data purchased from third parties or mined from the Internet. The size of the DSS database will vary based on need, from a small, standalone system to a large data warehouse.

DSS software system. The software system is built on a model (including decision context and user criteria). The number and types of models depend on the purpose of the DSS. Commonly used models include:

  • Statistical models. These models are used to establish relationships between events and factors related to that event. For example, they could be used to analyze sales in relation to location or weather.
  • Sensitivity analysis models. These models are used for “what-if” analysis.
  • Optimization analysis models. These models are used to find the optimum value for a target variable in relation to other variables.
  • Forecasting models. These include regression models, time-series analysis, and other models used to analyze business conditions and make plans.
  • Backward analysis sensitivity models. Sometimes called goal-seeking analysis, these models set a target value for a particular variable and then determine the values other variables need to hit to meet that target value.

DSS user interface. Dashboards and other user interfaces that allow users to interact with and view results.

Decision support system software

According to Capterra, the popular decision support system software includes:

  • Checkbox. This no-code service automation software for enterprises uses a drag-and-drop interface for building applications with customizable rules, decision-tree logic, calculations, and weighted scores.
  • Parmenides Edios. Geared for midsize/large companies, Parmenides Eidos provides visual reasoning and knowledge representation to support scenario-based strategizing, problem solving, and decision-making.
  • Yonyx. Yonyx is a platform for creating DSS applications. It features support for creating and visualizing decision tree–driven customer interaction flows. It especially focuses on decision trees for call centers, customer self-service, CRM integration, and enterprise data.
  • XLSTAT. XLSTAT is an Excel data analysis add-on geared for corporate users and researchers. It boasts more than 250 statistical features, including data visualization, statistical modeling, data mining, stat tests, forecasting methods, machine learning, conjoint analysis, and more.
  • 1000minds. 1000minds is an online suite of tools and processes for decision-making, prioritization, and conjoint analysis. It is derived from research at the University of Otago in the 1990s into methods for prioritizing patients for surgery.
  • Information Builders WebFOCUS. This data and analytics platform is geared for enterprise and midmarket companies that need to integrate and embed data across applications. It offers cloud, multicloud, on-prem, and hybrid options.
  • QlikView. QlikView is Qlik’s classic analytics solution, built on the company’s Associative Engine. It’s designed to help users with their day-to-day tasks using a configurable dashboard.
  • SAP BusinessObjects. BusinessObjects consists of reporting and analysis applications to help users understand trends and root causes.
  • TIBCO Spotfire. This data visualization and analytics software helps users create dashboards and power predictive applications and real-time analytics applications.
  • Briq. Briq is a predictive analytics and automation platform built specifically for general contractors and subcontractors in construction. It leverages data from accounting, project management, CRM, and other systems, to power AI for predictive and prescriptive analytics.

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Decision support systems: Drive better decision-making with data (2024)

FAQs

How does decision support system help in decision-making? ›

A decision support system (DSS) is a computer program application used to improve a company's decision-making capabilities. It analyzes large amounts of data and presents an organization with the best possible options available.

How can data be used for better decision-making? ›

5 steps for making data-driven decisions
  1. Know your vision. Before you can make informed decisions, you need to understand your company's vision for the future. ...
  2. Find data sources. Once you've identified the goal you're working towards, you can start collecting data. ...
  3. Organize your data. ...
  4. Perform data analysis. ...
  5. Draw conclusions.
Jul 3, 2024

What are the advantages of decision support system? ›

These are some benefits of using decision support systems:
  • Makes workflow more efficient. Decision support systems can help to reduce errors and make workflow more efficient. ...
  • Helps with planning and management. The system can also improve planning and increase management success. ...
  • Determines potential outcomes.

Why are data-driven decisions better decisions? ›

It facilitates greater control. With data-driven decision making you gain greater control over the direction of your business and the quality of your decisions. This is because it is based on objective data, concrete evidence and results can be effectively measured in order to assess impact.

What is a data-driven decision support system? ›

Key Takeaways. A decision support system (DSS) is a computerized system that gathers and analyzes data, synthesizing it to produce comprehensive information reports. A decision support system differs from an ordinary operations application, whose function is just to collect data.

What are the benefits of supported decision making? ›

Supported decision-making is also an alternative to guardianship and can be used to avoid unnecessary guardianship. A person with a guardian can also use supported decision- making as a way to learn decision-making skills, which could lead to greater self- determination.

What are examples of data-driven decision making? ›

Uber uses data, matching algorithms, and prediction models to directly estimate the driving time and allocates the optimal driver through a process. Starbucks uses data analytics to know their customers' preferences and gather details about their purchasing habits.

Why does decision-making require data? ›

Effective data gathering and analysis helps decision makers verify, understand, and quantify complex issues that need rational and insightful solutions.

How big data improve decision-making? ›

Big data offers opportunities to make better decisions over time. Benefits of using data for business insights include: Being able to more quickly adapt to volatile market conditions. Having a better understanding of the customer, their behaviors, and habits.

What is the main objective of decision support system? ›

A decision support system increases the speed and efficiency of decision-making activities. It is possible, as a DSS can collect and analyze real-time data. It promotes training within the organization, as specific skills must be developed to implement and run a DSS within an organization.

How is the DSS an advantage for decision-making? ›

A DSS supports the management, operations, and planning levels of an organization in making better decisions by assessing the significance of uncertainties and the tradeoffs involved in making one decision over another.

What are examples of decision support systems? ›

Software examples of a data-driven DSS include:
  • Geographic Information Systems (GIS)
  • File drawer systems.
  • Executive information systems.
  • Computer-based databases with query systems.

What are the advantages of decision-making? ›

Learn more about the benefits of Decision-Making in a Project Management Course and start down a successful path by making the first powerful move.
  • 1) Aids in Reaching Goals. ...
  • 2) Monitoring Liquidity. ...
  • 3) Strategic Decision-Making Helps in Improving Revenue Generation. ...
  • 4) Reduces Legal Risks.

Why is data important in strategic decision-making? ›

Data analysis helps inform strategic decision-making in two important ways: first, it provides insights into business trends, and second, it influences planning for long term strategy development.

What are the advantages and disadvantages of data-driven decision making? ›

5 Disadvantages of Data-driven Decision Making
  • #1 Risk of Data Quality Issues. ...
  • #2 Neglecting the Intuition. ...
  • #3 Delayed Decisions and Analysis Paralysis. ...
  • #4 Ignoring Unquantifiable Factors. ...
  • #5 Privacy and Ethical Concerns.

How decision support systems help managers use? ›

Decision support systems help managers use raw data to identify problems and find solutions to business-related problems. The financial planning system is an example of this system.

What is a real life example of a decision support system? ›

Common Day-to-Day Decision Support System Examples

Many GPS systems also include traffic avoidance capabilities that monitor traffic conditions in real time, allowing motorists to avoid congestion. Farmers use crop-planning tools to determine the best time to plant, fertilize and reap.

What is an advantage of the decision support system quizlet? ›

A decision support system (DSS) can do a follow-up assessment on how well a solution is performing. A decision support system (DSS) should incorporate the human element as well as hardware and software.

What makes a decision support system successful? ›

Well-designed user interface helps to reduce wasting time on the user's part. DSS is used to perform tasks. Versatility is essential and must cover the full range of tasks for what a decision maker will want to use. Flexibility in adding new functions to DSS tools when scope of works extend is also important.

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