在随机森林中共享树以实现有效和高效的概念检测

Tzu-Hsuan Chiu, Guan-Long Wu, Yu-Chuan Su, Winston H. Hsu
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引用次数: 3

摘要

在本文中,我们主要研究基于随机森林的概念检测系统,我们打算通过减少树(分类器)的总数来提高系统在测试阶段的效率,并节省内存和存储使用。然而,减少树的数量通常会导致性能下降。在本文中,我们提出了一种称为树共享的方法来应对这一问题。与传统的独立对待每个概念的方法不同,我们的工作在概念之间共享树,并从整个系统的角度留下最重要的概念。在不同概念集上的实验表明,树共享可以大大减少树的总数,但性能略有下降。即使在最坏的情况下,我们只用5%的树木就能达到80%的原始性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sharing the trees among random forests for effective and efficient concept detection
In this paper, we focus on the random forest based concept detection system, and we intend to improve the efficiency of the system in testing phase and to save memory and storage usages by reducing the total number of trees (classifiers). However, reducing the tree number often results in poor performance. In this article, we proposed a method called tree-sharing to cope with this issue. Unlike the traditional method that treats each concept independently, our work shares the trees among concepts, and leave the most important ones from the view of whole system. Experiments on different concept sets show tree-sharing can greatly reduce the number of total trees while the performance decreases slightly. Even in the worst case, we achieve 80% of original performance with only 5% of trees.
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