Article ID Journal Published Year Pages File Type
379444 Data & Knowledge Engineering 2007 17 Pages PDF
Abstract
One of the main factors for the knowledge discovery success is related to the comprehensibility of the patterns discovered by applying data mining techniques. Amongst which we can point out the Bayesian networks as one of the most prominent when considering the easiness of knowledge interpretation achieved. Bayesian networks, however, present limitations and disadvantages regarding their use and applicability. This paper presents an extension for the improvement of Bayesian networks, treating aspects such as performance, as well as interpretability and use of their results; incorporating genetic algorithms in the model, multivariate regression for structure learning and temporal aspects using Markov chains.
Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
Authors
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