Recently, due to problems arising from lattice mismatch in thin film growth in semiconductor manufacturing industry, researchers have shown great interest in modeling the physiochemical properties of cubic perovskite of types ABX3. They have put sizeable efforts to reduce error in the prediction of lattice constant (LC) of cubic perovskites. However, linear prediction models were developed using linear regression techniques, which may not be able to find precisely the underlying nonlinearity in correlating LC to atomic parameters of perovskites. This causes a reduction in the prediction accuracy of linear model. To address this problem, in this work, support vector regression (SVR) technique is proposed to design and develop LC prediction model for cubic perovskites. To investigate the generalization of SVR model, we collected data for new cubic and pseudocubic compounds from the current literature of material science. Our analysis shows an improved prediction performance of SVR model...