This work presents a novel technique that integrates the methodologies of machine learning and system identification to solve multiclass problems. Such an approach allows to extract and select sets of representative features with reduced dimensionality, as well as predicts categorical outputs. The efficiency of the method was tested by running case studies investigated in machine learning, obtaining better absolute results when compared with classical classification algorithms.
翻译:这项工作提出了一种新颖的技术,结合了机器学习和系统识别的方法,以解决多级问题,这样可以提取和选择具有代表性的成套特征,其维度降低,并预测绝对产出。 这种方法的效率通过在机器学习中进行调查的案例研究得到检验,与传统分类算法相比,获得更好的绝对结果。