An optimal generic model for multi-parameters and big data optimizing: A laboratory experimental study

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Abstract

Optimization is a process for finding parameter (parameters) that is (are) able to deliver an optimal value for an objective function. Seeking an optimal generic model for optimizing is a computer science study that has been being practically conducted by numerous researchers. Generic model is a model that can be technically operated to solve any varieties of optimization problem. By using an object-oriented method, the generic model for optimizing was constructed. Moreover, two types of optimization method, simulated-annealing and hill-climbing, were functioned in constructing the model and compared to find the most optimal one then. The result said that both methods gave the same result for a value of objective function and the hill-climbing based model consumed the shortest running time.

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Utama, D. N., Ani, N., & Iqbal, M. M. (2018). An optimal generic model for multi-parameters and big data optimizing: A laboratory experimental study. In Journal of Physics: Conference Series (Vol. 978). Institute of Physics Publishing. https://doi.org/10.1088/1742-6596/978/1/012045

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