Building Knowledge-Driven DSS and Mining Data

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چکیده

Some people claim “knowledge leads to power”. Even if that claim is true companies only win when knowledge is shared among employees and other stakeholders. Today sharing knowledge when making decisions is more important than most people recognize. One way to share knowledge is to build computerized systems that can store and retrieve knowledge codified as probabilities, rules and relationships. Specialized software can process this knowledge and assist managers in making decisions. Specialized decision support and artificial intelligence (AI) tools can also help create knowledge. An umbrella term that describes these systems is Knowledge-Driven Decision Support Systems. These DSS provide suggestions to managers and the dominant component is a “knowledge” capture and storage mechanism. Knowledge and suggestions are the two major themes that link these different knowledge tasks.

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تاریخ انتشار 2000