Classifying the training data correctly without over-fitting is one of the goals in machine learning. In this paper, we propose a generalization-memorization mechanism, including a generalization-memorization decision and a memory modeling principle. Under this mechanism, error-based learning machines improve their memorization abilities of training data without over-fitting. Specifically, the generalization-memorization machines (GMM) are proposed by applying this mechanism. The optimization problems in GMM are quadratic programming problems and could be solved efficiently. It should be noted that the recently proposed generalization-memorization kernel and the corresponding support vector machines are the special cases of our GMM. Experimental results show the effectiveness of the proposed GMM both on memorization and generalization.
翻译:正确分类培训数据而不过分安装是机器学习的目标之一。在本文中,我们建议采用一般化-模拟机制,包括一般化-模拟决定和记忆建模原则;在这种机制下,错误学习机器提高培训数据的记忆能力,不过分安装;具体地说,通过应用这一机制,建议采用一般化-模拟机器(GMM);GM的优化问题是四级编程问题,可以有效解决;应当指出,最近提出的一般化-模拟内核和相应的辅助矢量机器是我们的GM的特例。实验结果显示拟议的GMM在记忆化和一般化方面的有效性。