Iterative Bayesian Network Implementation by Using Annotated Association Rules
نویسندگان
چکیده
This paper concerns the iterative implementation of a knowledge model in a data mining context. Our approach relies on coupling a Bayesian network design with an association rule discovery technique. First, discovered association rule relevancy isenhanced by exploiting the expert knowledge encoded within a Bayesian network, i.e., avoiding to provide trivial rules w.r.t. known dependencies. Moreover, the Bayesian network can be updated thanks to an expert-driven annotation process on computed association rules. Our approach is experimentally validated on the Asia benchmark dataset.
منابع مشابه
Improving the SLA Algorithm Using Association Rules
A bayesian network is an appropriate tool for working with uncertainty and probability, that are typical of real-life applications. In literature we find different approaches for bayesian network learning. Some of them are based on search and score methodology and the others follow an information theory based approach. One of the most known algorithm for learning bayesian network is the SLA alg...
متن کاملAn efficient Bayesian network approach for discovering interesting patterns
The main problem faced by all association rule/pattern mining algorithms is their production of a large number of rules which incurred a secondary mining problem; namely, mining interesting association rules/patterns. The problem is compounded by the fact that ‘common knowledge’ discovered rules are not interesting, but they are usually strong rules with high support and confidence levels – the...
متن کاملIdentifying and Evaluating Effective Factors in Green Supplier Selection using Association Rules Analysis
Nowadays companies measure suppliers on the basis of a variety of factors and criteria that affect the supplier's selection issue. This paper intended to identify the key effective criteria for selection of green suppliers through an efficient algorithm callediterative process mining or i-PM. Green data were collected first by reviewing the previous studies to identify various environmental cri...
متن کاملImproving the K2 Algorithm Using Association Rule Parameters
A Bayesian network is an appropriate tool to work with the uncertainty that is typical of real-life applications. Bayesian network arcs represent statistical dependence between different variables and can be automatically elicited from database by Bayesian network learning algorithms such as K2. In the data mining field, association rules can also be interpreted as expressing statistical depend...
متن کاملA Prototype Implementation of BayesOWL
This project aims to build a prototype software system for BayesOWL, a probabilistic framework proposed for dealing with uncertainty in Semantic Web (SW) ontologies. It translates a terminological taxonomy of an OWL ontology into a Bayesian Network (BN), integrates probabilistic information about the concept classes and interclass relations into the translated BN, and supports important ontolog...
متن کامل