In previous work, we showed that the use of Multiple Input Representation(MIR) for the classification of time series data
provides complementary information that leads to better accuracy. [4]. In this paper, we introduce the Static Minimization-Maximization
approach to build Multiple Classifier Systems(MCSs) using MIR. SMM consists of two steps. In the minimization step, a greedy
algorithm is employed to iteratively select the classifiers from the knowledge space to minimize the training error of MCSs.
In the maximization step, a modified version of Behavior Knowledge Space(BKS), Balanced Behavior Knowledge Space(BBKS), is
used to maximize the expected accuracy of the whole system given that the training error is minimized. Several popular techniques
including AdaBoost, Bagging and Random Subspace are used as the benchmark to evaluate the proposed approach on four time series
data sets. The results obtained from our experiments show that the performance of the proposed approach is effective as well
as robust for the classification of time series data. In addition, this approach could be further extended to other applications
in our future research.