LSSVM Parameters Tuning with Enhanced Artificial Bee Colony
Zuriani Mustaffa and Yuhanis Yusof
School of Computing, University Utara Malaysia, Malaysia
School of Computing, University Utara Malaysia, Malaysia
Abstract: To date, exploring an efficient method for optimizing Least Squares Support Vector Machines (LSSVM) hyper-parameters has been an enthusiastic research area among academic researchers. LSSVM is a practical machine learning approach that has been broadly utilized in numerous fields. To guarantee its convincing performance, it is crucial to select an appropriate technique in order to obtain the optimized hyper-parameters of LSSVM algorithm. In this paper, an Enhanced Artificial Bee Colony (eABC) is used to obtain the ideal value of LSSVM’s hyper parameters, which are regularization parameter, γ and kernel parameter, σ2. Later, LSSVM is used as the prediction model. The proposed model was employed in predicting financial time series data and comparison is made against the standard Artificial Bee Colony (ABC) and Cross Validation (CV) technique. The simulation results assured the accuracy of parameter selection, thus proved the validity in improving the prediction accuracy with acceptable computational time.
Keywords: ABC, LSSVM, financial time series prediction, parameter tuning.
Received November 1, 2011; accepted May 22, 2012