论文标题

Pawlak粗糙集和邻里粗糙套装的统一粒状球学习模型

A Unified Granular-ball Learning Model of Pawlak Rough Set and Neighborhood Rough Set

论文作者

Xia, Shuyin, Wang, Cheng, Wang, Guoyin, Ding, Weiping, Gao, Xinbo, Yu, Jianhang, Zhai, Yujia, Chen, Zizhong

论文摘要

Pawlak粗糙集和邻居粗糙集是两个最常见的粗糙集理论模型。 Pawlak可以使用等效类来表示知识,但无法处理连续数据。邻里粗糙集可以处理连续数据,但它失去了使用等价类代表知识的能力。为此,本文根据粒状球计算提出了一个颗粒球粗糙集。颗粒球粗糙的套件可以同时代表Pawlak粗糙集,而邻居粗糙集可以实现两者的统一表示。这使得粒状球粗糙集不仅可以处理连续数据,而且可以使用等效类来进行知识表示。此外,我们提出了一种粒状棒状粗糙集的实施算法。基准数据集上的实验结果表明,由于颗粒球计算的鲁棒性和适应性的结合,与Pawlak Rough set和传统的邻里粗糙集相比,颗粒球粗糙集的学习精度得到了极大的提高。颗粒球粗糙集还优于九种流行或最先进的特征选择方法。

Pawlak rough set and neighborhood rough set are the two most common rough set theoretical models. Pawlak can use equivalence classes to represent knowledge, but it cannot process continuous data; neighborhood rough sets can process continuous data, but it loses the ability of using equivalence classes to represent knowledge. To this end, this paper presents a granular-ball rough set based on the granular-ball computing. The granular-ball rough set can simultaneously represent Pawlak rough sets, and the neighborhood rough set, so as to realize the unified representation of the two. This makes the granular-ball rough set not only can deal with continuous data, but also can use equivalence classes for knowledge representation. In addition, we propose an implementation algorithms of granular-ball rough sets. The experimental results on benchmark datasets demonstrate that, due to the combination of the robustness and adaptability of the granular-ball computing, the learning accuracy of the granular-ball rough set has been greatly improved compared with the Pawlak rough set and the traditional neighborhood rough set. The granular-ball rough set also outperforms nine popular or the state-of-the-art feature selection methods.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源