Achieving semi-supervised incremental learning with Learn++ and simple recycled selection

F. D. Bortoloti, P. M. Ciarelli
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引用次数: 2

Abstract

In many real-world tasks a lot of unlabeled data are collected over time and, although they may be useful to improve the quality of classification models, they are usually ignored. Semi-supervised learning techniques combine unlabeled and labeled data to capture more useful information about a particular task. On the other hand, an incremental learning technique can incorporate new information to an existing model, so that it can dynamically adapt its structure to follow the environment changes. In order to unify the characteristics of both approaches, in this paper is proposed an incremental semi-supervised learning method called SSLearn++, which is based on the techniques Simple Recycled Selection (SRS) (semi-supervised learning), and Learn++ (incremental learning). To treat multi-class problems, SRS was combined with Sequential Forward Selection (SFS) to generate cascades of binary classifiers. Experiments were conducted using publicly available benchmark data sets. Results show the proposed method is promising.
利用lear++和简单的循环选择实现半监督式增量学习
在许多现实世界的任务中,随着时间的推移收集了大量未标记的数据,尽管它们可能有助于提高分类模型的质量,但它们通常被忽略。半监督学习技术结合了未标记和标记的数据,以获取关于特定任务的更有用的信息。另一方面,增量学习技术可以将新的信息加入到现有的模型中,使其能够动态地适应环境的变化。为了统一这两种方法的特点,本文提出了一种增量式半监督学习方法SSLearn++,该方法基于简单循环选择(SRS)(半监督学习)和Learn++(增量学习)技术。为了处理多类问题,将SRS与顺序前向选择(SFS)相结合,生成二元分类器级联。实验使用公开可用的基准数据集进行。结果表明,该方法是可行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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