This paper presents a new approach for integrating case-based reasoning (CBR) with a neural network (NN) in diagnostic systems. When solving a new problem, the neural network is used to make hypotheses and to guide the CBR module in the search for a similar previous case that supports one of the hypotheses. the knowledge acquired by the network is interpreted and mapped into symbolic diagnosis descriptors, which are kept and used by the system to determine whether a final answer is credible, and to build explanations for the reasoning carried our. the NN-CBR model has been used in the development of a system for the diagnosis of congenital heart diseases (CHD). the system has been evaluated using two cardiological databases with a total of ...
In this paper we present the results of the MIE/GMDS-2000 Workshop ‘Case-Based Reasoning for Medical...
Case-based reasoning can be a particularly useful problem solving strategy when combined with other ...
In this paper we present the results of the MIE/GMDS-2000 Workshop \u2018Case-Based Reasoning for Me...
. This paper presents a new approach for learning general knowledge in a diagnostic case-based syste...
Embedding Machine Learning technology into Intelligent Diagnosis Systems adds a new potential to suc...
Embedding Machine Learning technology into Intelligent Diagnosis Systems adds a new potential to suc...
In this survey paper, the-state-of-art of the connec-tionist model (i.e. Artificial Neural Network (...
This paper presents a neural network based technique for mapping problem situations to problem solut...
Case based reasoning (CBR) methodology presents a foundation for a new technology of building intell...
One of the important methods of data analysis is classification. Many real-world problems in various...
One of the important methods of data analysis is classification. Many real-world problems in various...
This article presents a knowledge-based system for the diagnosis of cardiovascular diseases in newbo...
Case-based reasoning (CBR) is an integral part of artificial intelligence. It is defined as the proc...
Introduction: Case-based reasoning (CBR) is an emerging decision making paradigm in medical research...
One of the important methods of data analysis is classification. Many real-world problems in various...
In this paper we present the results of the MIE/GMDS-2000 Workshop ‘Case-Based Reasoning for Medical...
Case-based reasoning can be a particularly useful problem solving strategy when combined with other ...
In this paper we present the results of the MIE/GMDS-2000 Workshop \u2018Case-Based Reasoning for Me...
. This paper presents a new approach for learning general knowledge in a diagnostic case-based syste...
Embedding Machine Learning technology into Intelligent Diagnosis Systems adds a new potential to suc...
Embedding Machine Learning technology into Intelligent Diagnosis Systems adds a new potential to suc...
In this survey paper, the-state-of-art of the connec-tionist model (i.e. Artificial Neural Network (...
This paper presents a neural network based technique for mapping problem situations to problem solut...
Case based reasoning (CBR) methodology presents a foundation for a new technology of building intell...
One of the important methods of data analysis is classification. Many real-world problems in various...
One of the important methods of data analysis is classification. Many real-world problems in various...
This article presents a knowledge-based system for the diagnosis of cardiovascular diseases in newbo...
Case-based reasoning (CBR) is an integral part of artificial intelligence. It is defined as the proc...
Introduction: Case-based reasoning (CBR) is an emerging decision making paradigm in medical research...
One of the important methods of data analysis is classification. Many real-world problems in various...
In this paper we present the results of the MIE/GMDS-2000 Workshop ‘Case-Based Reasoning for Medical...
Case-based reasoning can be a particularly useful problem solving strategy when combined with other ...
In this paper we present the results of the MIE/GMDS-2000 Workshop \u2018Case-Based Reasoning for Me...