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Feature Selection using Compact Discernibility Matrix-based Approach in Dynamic Incomplete Decision System

机译:动态不完全决策系统中基于紧凑可辨矩阵的特征选择

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摘要

According to whether the systems vary over time, the decision systems can be divided into two categories: static decision systems and dynamic decision systems. Most existing feature selection work is done for the former, few work has been developed recently for the latter. To the best of our knowledge, when an object set varies dynamically in incomplete decision systems, no feature selection approach has been specially designed to select feature subset until now. In this regard, a feature selection algorithm based on compact discernibility matrix is developed. The compact discernibility matrix is firstly introduced, which not only avoids computing the time-consuming lower approximation, but also saves more storage space than classical discemibility matrix. Afterwards, we take the change of lower approximation as a springboard to incrementally update the compact discemibility matrix. On the basis of updated compact discemibility matrix, an efficient feature selection algorithm is provided to compute a new feature subset, instead of retaining the discemibility matrix from scratch to find a new feature subset. The efficiency and effectiveness of the proposed algorithm are demonstrated by the experimental results on different data sets.
机译:根据系统是否随时间变化,决策系统可以分为两类:静态决策系统和动态决策系统。现有的大多数功能选择工作都是针对前者完成的,而针对后者的开发则很少。据我们所知,当对象集在不完整的决策系统中动态变化时,到目前为止,还没有专门设计特征选择方法来选择特征子集。对此,提出了一种基于紧凑可辨矩阵的特征选择算法。首先引入了紧凑的可分辨矩阵,与传统的可分辨矩阵相比,它不仅避免了计算耗时的低逼近度,而且节省了更多的存储空间。之后,我们以较低近似值的变化作为跳板,以递增地更新紧致判别矩阵。在更新的紧凑型可区分性矩阵的基础上,提供了一种有效的特征选择算法来计算新的特征子集,而不是从头开始保留可区分性矩阵以查找新的特征子集。在不同数据集上的实验结果证明了该算法的有效性和有效性。

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