EXPERT SYSTEMS
2024, ASORE OLORUNMFEMI BOLAJI
https://doi.org/10.6084/M9.FIGSHARE.25880572…
16 pages
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Abstract
Expert systems (ES) are systems that emanate from the new area of computing known as Artificial Intelligence (AI). An expert system is an application program that makes decisions to solve problems in a particular field, such as finance or medicine, by using knowledge and analytical rules defined by the expert of the field. It uses two components, a knowledge base and an inference engine to form conclusions. Additional tools include a user interface and explanation facilities, which enable the system to justify or explain its conclusions as well as allow developers to run check the operating system.
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