The focus of this thesis is to measure the regularity of case bases used in Case-Based Prediction (CBP) systems and the reliability of their constituent cases prior to the system's deployment to influence user confidence on the delivered solutions. The reliability information, referred to as meta-data, is then used to enhance prediction accuracy. CBP is a strain of Case-Based Reasoning (CBR) that differs from the latter only in the solution feature which is a continuous value. Several factors make implementing such systems for prediction domains a challenge. Typically, the problem and solution spaces are unbounded in prediction problems that make it difficult to determine the portions of the domain represented by the case base. In addition,...
Case-Based Reasoning (CBR) plays a major role in expert system research. However, a critical problem...
International audienceThis paper shows that performing case-based reasoning (CBR) on knowledge comin...
The knowledge acquired through past experiences is of the most importance when humans or machines tr...
The focus of this thesis is to measure the regularity of case bases used in Case-Based Prediction (C...
Case-based reasoning (CBR) infers a solution to a new problem by searching a collection of previousl...
Craig MacDonald, Rosina Weber, Michael Richter (2008). Case Base Properties: A First Step. Workshop ...
This paper describes a generic framework for explaining the prediction of probabilistic machine lear...
Abstract. Case-Based Reasoning (CBR) is a learning approach that solves current situations by reusin...
The knowledge acquired through past experiences is of the most importance when humans or machines tr...
Paper presented at the 17th Annual Conference of the International Florida Artificial Intelligence R...
Key Results: Cases are often indiscriminatingly added to case bases. This potentially results in poo...
Case-Based Reasoning (CBR) is a Machine Learning technique that models human reasoning. As it learns...
This is a post print version of the article. The official published version can be obtained from the...
Case-Based Reasoning (CBR) is a learning approach that solves current situations by reusing previous...
THESIS 8185Case-based reasoning (CBR) is among the most influential paradigms in modern m...
Case-Based Reasoning (CBR) plays a major role in expert system research. However, a critical problem...
International audienceThis paper shows that performing case-based reasoning (CBR) on knowledge comin...
The knowledge acquired through past experiences is of the most importance when humans or machines tr...
The focus of this thesis is to measure the regularity of case bases used in Case-Based Prediction (C...
Case-based reasoning (CBR) infers a solution to a new problem by searching a collection of previousl...
Craig MacDonald, Rosina Weber, Michael Richter (2008). Case Base Properties: A First Step. Workshop ...
This paper describes a generic framework for explaining the prediction of probabilistic machine lear...
Abstract. Case-Based Reasoning (CBR) is a learning approach that solves current situations by reusin...
The knowledge acquired through past experiences is of the most importance when humans or machines tr...
Paper presented at the 17th Annual Conference of the International Florida Artificial Intelligence R...
Key Results: Cases are often indiscriminatingly added to case bases. This potentially results in poo...
Case-Based Reasoning (CBR) is a Machine Learning technique that models human reasoning. As it learns...
This is a post print version of the article. The official published version can be obtained from the...
Case-Based Reasoning (CBR) is a learning approach that solves current situations by reusing previous...
THESIS 8185Case-based reasoning (CBR) is among the most influential paradigms in modern m...
Case-Based Reasoning (CBR) plays a major role in expert system research. However, a critical problem...
International audienceThis paper shows that performing case-based reasoning (CBR) on knowledge comin...
The knowledge acquired through past experiences is of the most importance when humans or machines tr...