ISOMap is a popular method for nonlinear dimensionality reduction in batch mode, but need to run its entirety inefficiently if the data comes sequentially. In this paper, we present an extension of ISOMap, namely I-ISOMap, augmenting the existing ISOMap framework to the situation where additional points become available after initial manifold is constructed. The MDS step, as a key component in ISOMap, is adapted by introducing Spring model and sampling strategy. As a result, it consumes only linear time to obtain a stable layout due to the Spring model’s iterative nature. The proposed method outperforms earlier work by Law [1], where their MDS step runs within quadratic time. Experimental results show that I-ISOMap is a precise and ef...
The isometric feature mapping (Isomap) method has demonstrated promising results in finding low-dime...
Recently, the Isomap algorithm has been pro-posed for learning a nonlinear manifold from a set of un...
peer reviewedWe present a fast alternative for the Isomap algorithm. A set of quantizers is fit to t...
There has been a renewed interest in understanding the structure of high dimensional data set based ...
Abstract — Understanding the structure of multidimensional patterns, especially in unsupervised case...
Abstract—Isomap is a well-known nonlinear dimensionality reduction (DR) method, aiming at preserving...
We make use of the non-intrusive dimensionality reduction method Isomap in order to emulate nonlinea...
The problems of improving computational efficiency and extending representational capability are the...
Abstract—When performing visualization and classification, people often confront the problem of dime...
Dimensionality reduction in the machine learning field mitigates the undesired properties of high-di...
Most nonlinear dimensionality reduction approaches such as Isomap heavily depend on the neighborhood...
We present an algorithm, Hierarchical ISOmetric Self-Organizing Map (H-ISOSOM), for a concise, organ...
Scientists find that the human perception is based on the similarity on the manifold of data set. Is...
Scientists find that the human perception is based on the similarity on the manifold of data set. Is...
We present an extension of Isomap nonlinear dimension reduction (Tenenbaum et al., 2000) for data wi...
The isometric feature mapping (Isomap) method has demonstrated promising results in finding low-dime...
Recently, the Isomap algorithm has been pro-posed for learning a nonlinear manifold from a set of un...
peer reviewedWe present a fast alternative for the Isomap algorithm. A set of quantizers is fit to t...
There has been a renewed interest in understanding the structure of high dimensional data set based ...
Abstract — Understanding the structure of multidimensional patterns, especially in unsupervised case...
Abstract—Isomap is a well-known nonlinear dimensionality reduction (DR) method, aiming at preserving...
We make use of the non-intrusive dimensionality reduction method Isomap in order to emulate nonlinea...
The problems of improving computational efficiency and extending representational capability are the...
Abstract—When performing visualization and classification, people often confront the problem of dime...
Dimensionality reduction in the machine learning field mitigates the undesired properties of high-di...
Most nonlinear dimensionality reduction approaches such as Isomap heavily depend on the neighborhood...
We present an algorithm, Hierarchical ISOmetric Self-Organizing Map (H-ISOSOM), for a concise, organ...
Scientists find that the human perception is based on the similarity on the manifold of data set. Is...
Scientists find that the human perception is based on the similarity on the manifold of data set. Is...
We present an extension of Isomap nonlinear dimension reduction (Tenenbaum et al., 2000) for data wi...
The isometric feature mapping (Isomap) method has demonstrated promising results in finding low-dime...
Recently, the Isomap algorithm has been pro-posed for learning a nonlinear manifold from a set of un...
peer reviewedWe present a fast alternative for the Isomap algorithm. A set of quantizers is fit to t...