TY - GEN
T1 - Analysis of various interestingness measures in classification rule mining for traffic prediction
AU - Li, Xianneng
AU - Mabu, Shingo
AU - Zhou, Huiyu
AU - Shimada, Kaoru
AU - Hirasawa, Kotaro
PY - 2010
Y1 - 2010
N2 - Recently, an evolutionary algorithm named Genetic Network Programming with Estimation of Distribution Algorithm (GNP-EDA) has been proposed and applied to extract classification rules for solving traffic prediction problems. The measures such as the support, confidence and χ2 value are adopted to evaluate the interestingness of a large number of rules extracted from traffic databases in the above data mining method. In data mining, many other measures have been proposed to evaluate the interestingness of association patterns. These measures usually provide different and conflicting results. Many studies investigate that the effects of different measures depend on the concrete applications. We rarely know what measures are the appropriate ones for the traffic prediction application. Therefore, a novel approach to select the right measure for the classification rule mining has been proposed in this paper. The simulation results show that the proposed interestingness measure selection approach is a powerful tool to select the right measure for the traffic prediction application, leading to the increase of the classification accuracy.
AB - Recently, an evolutionary algorithm named Genetic Network Programming with Estimation of Distribution Algorithm (GNP-EDA) has been proposed and applied to extract classification rules for solving traffic prediction problems. The measures such as the support, confidence and χ2 value are adopted to evaluate the interestingness of a large number of rules extracted from traffic databases in the above data mining method. In data mining, many other measures have been proposed to evaluate the interestingness of association patterns. These measures usually provide different and conflicting results. Many studies investigate that the effects of different measures depend on the concrete applications. We rarely know what measures are the appropriate ones for the traffic prediction application. Therefore, a novel approach to select the right measure for the classification rule mining has been proposed in this paper. The simulation results show that the proposed interestingness measure selection approach is a powerful tool to select the right measure for the traffic prediction application, leading to the increase of the classification accuracy.
KW - Classification rule mining
KW - Estimation of distribution algorithm
KW - Genetic network programming
KW - Interestingness measure
KW - Traffic prediction
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M3 - Conference contribution
AN - SCOPUS:78649288966
SN - 9784907764364
SP - 1969
EP - 1974
BT - Proceedings of the SICE Annual Conference
T2 - SICE Annual Conference 2010, SICE 2010
Y2 - 18 August 2010 through 21 August 2010
ER -