Intrinsic dimension estimation method based on correlation dimension and kNN method

2021 ◽  
pp. 107627
Author(s):  
Haiquan Qiu ◽  
Youlong Yang ◽  
Saeid Rezakhah
2015 ◽  
Vol 2015 ◽  
pp. 1-10 ◽  
Author(s):  
Yuanhong Liu ◽  
Zhiwei Yu ◽  
Ming Zeng ◽  
Shun Wang

Dimension reduction is an important tool for feature extraction and has been widely used in many fields including image processing, discrete-time systems, and fault diagnosis. As a key parameter of the dimension reduction, intrinsic dimension represents the smallest number of variables which is used to describe a complete dataset. Among all the dimension estimation methods, correlation dimension (CD) method is one of the most popular ones, which always assumes that the effect of every point on the intrinsic dimension estimation is identical. However, it is different when the distribution of a dataset is nonuniform. Intrinsic dimension estimated by the high density area is more reliable than the ones estimated by the low density or boundary area. In this paper, a novel weighted correlation dimension (WCD) approach is proposed. The vertex degree of an undirected graph is invoked to measure the contribution of each point to the intrinsic dimension estimation. In order to improve the adaptability of WCD estimation,k-means clustering algorithm is adopted to adaptively select the linear portion of the log-log sequence(log⁡δk,log⁡C(n,δk)). Various factors that affect the performance of WCD are studied. Experiments on synthetic and real datasets show the validity and the advantages of the development of technique.


2017 ◽  
Vol 29 (7) ◽  
pp. 1838-1878 ◽  
Author(s):  
Hideitsu Hino ◽  
Jun Fujiki ◽  
Shotaro Akaho ◽  
Noboru Murata

We propose a method for intrinsic dimension estimation. By fitting the power of distance from an inspection point and the number of samples included inside a ball with a radius equal to the distance, to a regression model, we estimate the goodness of fit. Then, by using the maximum likelihood method, we estimate the local intrinsic dimension around the inspection point. The proposed method is shown to be comparable to conventional methods in global intrinsic dimension estimation experiments. Furthermore, we experimentally show that the proposed method outperforms a conventional local dimension estimation method.


2009 ◽  
Vol 42 (5) ◽  
pp. 780-787 ◽  
Author(s):  
Mingyu Fan ◽  
Hong Qiao ◽  
Bo Zhang

2010 ◽  
Vol 26-28 ◽  
pp. 653-656 ◽  
Author(s):  
Guang Bin Wang ◽  
Liang Pei Huang

In the noise reduction algorithm based on manifold learning, phase space data may be distorted and reduction targets are chosen at random, it made efficiency and effect of noise reduction lower.To solve this problem, a improved noise reducation method (local tangent space mean reconstruction) was proposed.The process of global array by affine transformation will be replaced with mean reconstruction,and the intrinsic dimension was estimate as dimension of reduction targets by using maximum likehood estimation method, the data in addition to intrinsic dimension space will be eliminated.Noise reduction experiment to fan vibration signal with noise shows this method had better noise reduction effect.


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