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ECSQARU
2001
Springer

An Empirical Investigation of the K2 Metric

13 years 9 months ago
An Empirical Investigation of the K2 Metric
Abstract. The K2 metric is a well-known evaluation measure (or scoring function) for learning Bayesian networks from data [7]. It is derived by assuming uniform prior distributions on the values of an attribute for each possible instantiation of its parent attributes. This assumption introduces a tendency to select simpler network structures. In this paper we modify the K2 metric in three different ways, introducing a parameter by which the strength of this tendency can be controlled. Our experiments with the ALARM network [2] and the BOBLO network [17] suggest that—somewhat contrary to our expectations—a slightly stronger tendency towards simpler structures may lead to even better results.
Christian Borgelt, Rudolf Kruse
Added 28 Jul 2010
Updated 28 Jul 2010
Type Conference
Year 2001
Where ECSQARU
Authors Christian Borgelt, Rudolf Kruse
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