Pinter, Janos D.2010-10-132010-10-132010-07http://hdl.handle.net/10679/124Özyeğin University Technical ReportAn artificial neural network (ANN) is a computational model − implemented as a computer program − that is aimed at emulating the key features and operations of biological neural networks. ANNs are extensively used to model unknown or unspecified functional relationships between the input and output of a “black box” system. In order to apply such a generic procedure to actual decision problems, a key requirement isANN training to minimize the discrepancy between modeled and measured system output. In this work, we consider ANN training as a (potentially) multi-modal optimization problem. To address this issue, we introduce a global optimization (GO) framework and corresponding GO software. The practical viability of the GO based approach is illustrated by finding close numerical approximations of (one-dimensional, but non-trivial) functions.engopenAccessCalibrating artificial neural networks by global optimizationTechnical reportArtificial neural networksANN model calibration by global optimizationLipschitz Global Optimizer (LGO) solver suiteANN implementation in MathematicaMathOptimizer ProfessionalIllustrative numerical examples