The statistical characteristics of instance-label pairs often change with time in practical scenarios of supervised classification. Conventional learning techniques adapt to such concept drift accounting for a scalar rate of change by means of a carefully chosen learning rate, forgetting factor, or window size. However, the time changes in common scenarios are multidimensional, i.e., different statistical characteristics often change in a different manner. This paper presents adaptive minimax risk classifiers (AMRCs) that account for multidimensional time changes by means of a multivariate and high-order tracking of the time-varying underlying distribution. In addition, differently from conventional techniques, AMRCs can provide computable tight performance guarantees. Experiments on multiple benchmark datasets show the classification improvement of AMRCs compared to the state-of-the-art and the reliability of the presented performance guarantees.
翻译:常规学习技术通过仔细选择的学习率、遗忘系数或窗口大小,适应这种概念的漂移核算,以达到螺旋式变化速度;然而,常见情景的时间变化是多层面的,即不同的统计特征往往以不同的方式变化;本文介绍了适应性小型风险分类(AMRCs),通过多变和高分级的跟踪,对时间变化基本分布进行多层面的时间变化;此外,与常规技术不同,AMRCs可以提供可比较的严格性能保障;对多个基准数据集的实验表明,AMRC的分类比最新技术有所改善,而且所提供的绩效保障的可靠性也有所改善。