Multiple Classification Ripple Down Rules (MCRDR) is a knowledge acquisition technique that produces representations, or knowledge maps, of a human expert's knowledge of a particular domain. However, work on gaining an understanding of the knowledge acquired at a deeper meta-level or using the knowledge to derive new information is still in its infancy. This paper will introduce a technique called Weighted MCRDR (WM), which looks at deriving and learning information about the relationships between multiple classifications within MCRDR by calculating a meaningful rating for the task at hand. This is not intended to reduce the knowledge acquisition effort for the expert. Rather, it is attempting to use the knowledge received in the MCRDR know...
One of the most overlooked problems in the field of knowledge discovery is the acquisition and incor...
Ripple Down Rules (RDR) were developed in answer to the problem of maintaining medium to large rule-...
Abstract. Increasingly, researchers and developers of knowledge based systems (KBS) have been incorp...
Multiple Classification Ripple Down Rules (MCRDR) is a knowledge acquisition technique that produces...
Multiple Classification Ripple Down Rules (MCRDR) is a simple and effective knowledge acquisition te...
Abstract. Multiple Classification Ripple Down Rules (MCRDR) is a simple and effective knowledge acqu...
The Ripple Down Rules (RDR) approach was developed by Compton and Jansen (Compton and Jansen 1989; ...
This paper details updated results concerning an implementation of a Multiple Classification Ripple ...
Knowledge Discovery techniques seek to find new information about a domain through a combination of...
This paper introduces an augmentation hybrid system, referred to as Rated MCRDR. It uses Multiple Cl...
Research on multi-label classification is concerned with developing and evaluating algorithms that l...
Rated Multiple Classification Ripple Down Rules (RM) and Ripple Down Models (RDM) are two of the suc...
Increasingly, researchers and developers of knowledge based systems (KBS) have been incorporating th...
: Incremental refinement methods of knowledge bases ease maintenance but fail to uncover the underly...
This paper focuses on real world Web document classification problem. Real world Web documents class...
One of the most overlooked problems in the field of knowledge discovery is the acquisition and incor...
Ripple Down Rules (RDR) were developed in answer to the problem of maintaining medium to large rule-...
Abstract. Increasingly, researchers and developers of knowledge based systems (KBS) have been incorp...
Multiple Classification Ripple Down Rules (MCRDR) is a knowledge acquisition technique that produces...
Multiple Classification Ripple Down Rules (MCRDR) is a simple and effective knowledge acquisition te...
Abstract. Multiple Classification Ripple Down Rules (MCRDR) is a simple and effective knowledge acqu...
The Ripple Down Rules (RDR) approach was developed by Compton and Jansen (Compton and Jansen 1989; ...
This paper details updated results concerning an implementation of a Multiple Classification Ripple ...
Knowledge Discovery techniques seek to find new information about a domain through a combination of...
This paper introduces an augmentation hybrid system, referred to as Rated MCRDR. It uses Multiple Cl...
Research on multi-label classification is concerned with developing and evaluating algorithms that l...
Rated Multiple Classification Ripple Down Rules (RM) and Ripple Down Models (RDM) are two of the suc...
Increasingly, researchers and developers of knowledge based systems (KBS) have been incorporating th...
: Incremental refinement methods of knowledge bases ease maintenance but fail to uncover the underly...
This paper focuses on real world Web document classification problem. Real world Web documents class...
One of the most overlooked problems in the field of knowledge discovery is the acquisition and incor...
Ripple Down Rules (RDR) were developed in answer to the problem of maintaining medium to large rule-...
Abstract. Increasingly, researchers and developers of knowledge based systems (KBS) have been incorp...