IEEE Trans Neural Netw Learn Syst. 2013 Nov;24(11):1836-49. doi: 10.1109/TNNLS.2013.2268279.
In this paper, two neural network threshold ensemble models are proposed for ordinal regression problems. For the first ensemble method, the thresholds are fixed a priori and are not modified during training. The second one considers the thresholds of each member of the ensemble as free parameters, allowing their modification during the training process. This is achieved through a reformulation of these tunable thresholds, which avoids the constraints they must fulfill for the ordinal regression problem. During training, diversity exists in different projections generated by each member is taken into account for the parameter updating. This diversity is promoted in an explicit way using a diversity-encouraging error function, extending the well-known negative correlation learning framework to the area of ordinal regression, and inheriting many of its good properties. Experimental results demonstrate that the proposed algorithms can achieve competitive generalization performance when considering four ordinal regression metrics.
本文提出了两种用于有序回归问题的神经网络阈值集成模型。对于第一种集成方法,阈值是先验固定的,在训练过程中不会修改。第二种方法则将集成中每个成员的阈值视为自由参数,允许在训练过程中修改它们。这是通过对这些可调阈值进行重新表述来实现的,避免了它们在有序回归问题中必须满足的约束条件。在训练过程中,考虑到每个成员生成的不同投影之间存在多样性,会对参数更新进行考虑。这种多样性通过使用一种鼓励多样性的误差函数以显式的方式得到促进,将广为人知的负相关学习框架扩展到有序回归领域,并继承了它的许多优良特性。实验结果表明,在考虑四个有序回归指标时,所提出的算法可以获得有竞争力的泛化性能。