首页> 外文会议>1st BRICS Countries Congress on Computational Intelligence >Combined Active and Semi-supervised Learning Using Particle Walking Temporal Dynamics
【24h】

Combined Active and Semi-supervised Learning Using Particle Walking Temporal Dynamics

机译:结合主动行走和半监督学习的粒子行走时间动力学

获取原文
获取原文并翻译 | 示例

摘要

Both Semi-Supervised Leaning and Active Learning are techniques used when unlabeled data is abundant, but the process of labeling them is expensive and/or time consuming. In this paper, those two machine learning techniques are combined into a single nature-inspired method. It features particles walking on a network built from the data set, using a unique random-greedy rule to select neighbors to visit. The particles, which have both competitive and cooperative behavior, are created on the network as the result of label queries. They may be created as the algorithm executes and only nodes affected by the new particles have to be updated. Therefore, it saves execution time compared to traditional active learning frameworks, in which the learning algorithm has to be executed several times. The data items to be queried are select based on information extracted from the nodes and particles temporal dynamics. Two different rules for queries are explored in this paper, one of them is based on querying by uncertainty approaches and the other is based on data and labeled nodes distribution. Each of them may perform better than the other according to some data sets peculiarities. Experimental results on some real-world data sets are provided, and the proposed method outperforms the semi-supervised learning method, from which it is derived, in all of them.
机译:当未标记的数据丰富时,半监督学习和主动学习都是使用的技术,但是标记它们的过程既昂贵又费时。在本文中,这两种机器学习技术被组合成一个自然启发的方法。它具有通过数据集构建的,在网络上行走的粒子,并使用唯一的随机贪婪规则选择要访问的邻居。标签查询的结果是在网络上创建了具有竞争和合作行为的粒子。它们可以在算法执行时创建,并且仅必须更新受新粒子影响的节点。因此,与传统的主动学习框架相比,它节省了执行时间,在传统的主动学习框架中,学习算法必须执行几次。基于从节点提取的信息和粒子时间动态,选择要查询的数据项。本文探讨了两种不同的查询规则,一种基于不确定性方法进行查询,另一种基于数据和标记的节点分布。根据某些数据集的特点,它们每个可能比另一个性能更好。提供了一些真实世界数据集的实验结果,并且所提出的方法在所有方面都优于半监督学习方法(从中得出)。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号