A novel discretization algorithm based on multi-scale and information entropy

Author(s):  
Yaling Xun ◽  
Qingxia Yin ◽  
Jifu Zhang ◽  
Haifeng Yang ◽  
Xiaohui Cui
IEEE Access ◽  
2020 ◽  
Vol 8 ◽  
pp. 182908-182917
Author(s):  
Dongxiao Chen ◽  
Jinjin Li ◽  
Rongde Lin ◽  
Yingsheng Chen

2013 ◽  
Vol 416-417 ◽  
pp. 1399-1403 ◽  
Author(s):  
Zhi Cai Shi ◽  
Yong Xiang Xia ◽  
Chao Gang Yu ◽  
Jin Zu Zhou

The discretization is one of the most important steps for the application of Rough set theory. In this paper, we analyzed the shortcomings of the current relative works. Then we proposed a novel discretization algorithm based on information loss and gave its mathematical description. This algorithm used information loss as the measure so as to reduce the loss of the information entropy during discretizating. The algorithm was applied to different samples with the same attributes from KDDcup99 and intrusion detection systems. The experimental results show that this algorithm is sensitive to the samples only for parts of all attributes. But it dose not compromise the effect of intrusion detection and it improves the response performance of intrusion detection remarkably.


2021 ◽  
Vol 34 (1) ◽  
Author(s):  
Zhiwu Shang ◽  
Wanxiang Li ◽  
Maosheng Gao ◽  
Xia Liu ◽  
Yan Yu

AbstractFor a single-structure deep learning fault diagnosis model, its disadvantages are an insufficient feature extraction and weak fault classification capability. This paper proposes a multi-scale deep feature fusion intelligent fault diagnosis method based on information entropy. First, a normal autoencoder, denoising autoencoder, sparse autoencoder, and contractive autoencoder are used in parallel to construct a multi-scale deep neural network feature extraction structure. A deep feature fusion strategy based on information entropy is proposed to obtain low-dimensional features and ensure the robustness of the model and the quality of deep features. Finally, the advantage of the deep belief network probability model is used as the fault classifier to identify the faults. The effectiveness of the proposed method was verified by a gearbox test-bed. Experimental results show that, compared with traditional and existing intelligent fault diagnosis methods, the proposed method can obtain representative information and features from the raw data with higher classification accuracy.


Sign in / Sign up

Export Citation Format

Share Document