Hybridization and optimization of machine learning techniques for improved forecasting in real-world scenarios

Abstract

Different and powerful machine learning paradigms are constantly in a race for delivering the lowest error and/or the highest comprehensibility. But what can certainly lead to better forecasting is model inter-cooperation or intra-optimization. The aim of the current talk is to put forward some recent ideas for such hybridization and optimization. Demonstrative experiments are outlined for problems coming from real, challenging environments.Universidad de Málaga. Campus de Excelencia Internacional Andalucía Tech

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