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IJAR
2008

Evidence and scenario sensitivities in naive Bayesian classifiers

13 years 4 months ago
Evidence and scenario sensitivities in naive Bayesian classifiers
Empirical evidence shows that naive Bayesian classifiers perform quite well compared to more sophisticated network classifiers, even in view of inaccuracies in their parameters. In this paper, we study the effects of such parameter inaccuracies by investigating the sensitivity functions of a naive Bayesian classifier. We demonstrate that, as a consequence of the classifier's independence properties, these sensitivity functions are highly constrained. We investigate whether the various patterns of sensitivity that follow from these functions support the observed robustness of naive Bayesian classifiers. In addition to the standard sensitivity given the available evidence, we also study the effect of parameter inaccuracies in view of scenarios of additional evidence. We show that the standard sensitivity functions suffice to describe such scenario sensitivities.
Silja Renooij, Linda C. van der Gaag
Added 12 Dec 2010
Updated 12 Dec 2010
Type Journal
Year 2008
Where IJAR
Authors Silja Renooij, Linda C. van der Gaag
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