Literature DB >> 18244531

The growing hierarchical self-organizing map: exploratory analysis of high-dimensional data.

A Rauber1, D Merkl, M Dittenbach.   

Abstract

The self-organizing map (SOM) is a very popular unsupervised neural-network model for the analysis of high-dimensional input data as in data mining applications. However, at least two limitations have to be noted, which are related to the static architecture of this model as well as to the limited capabilities for the representation of hierarchical relations of the data. With our novel growing hierarchical SOM (GHSOM) we address both limitations. The GHSOM is an artificial neural-network model with hierarchical architecture composed of independent growing SOMs. The motivation was to provide a model that adapts its architecture during its unsupervised training process according to the particular requirements of the input data. Furthermore, by providing a global orientation of the independently growing maps in the individual layers of the hierarchy, navigation across branches is facilitated. The benefits of this novel neural network are a problem-dependent architecture and the intuitive representation of hierarchical relations in the data. This is especially appealing in explorative data mining applications, allowing the inherent structure of the data to unfold in a highly intuitive fashion.

Year:  2002        PMID: 18244531     DOI: 10.1109/TNN.2002.804221

Source DB:  PubMed          Journal:  IEEE Trans Neural Netw        ISSN: 1045-9227


  10 in total

1.  Data-driven automated acoustic analysis of human infant vocalizations using neural network tools.

Authors:  Anne S Warlaumont; D Kimbrough Oller; Eugene H Buder; Rick Dale; Robert Kozma
Journal:  J Acoust Soc Am       Date:  2010-04       Impact factor: 1.840

2.  Scalable module detection for attributed networks with applications to breast cancer.

Authors:  Han Yu; Rachael Hageman Blair
Journal:  J Appl Stat       Date:  2020-08-13       Impact factor: 1.416

3.  Assessment of surface water quality using a growing hierarchical self-organizing map: a case study of the Songhua River Basin, northeastern China, from 2011 to 2015.

Authors:  Mingcen Jiang; Yeyao Wang; Qi Yang; Fansheng Meng; Zhipeng Yao; Peixuan Cheng
Journal:  Environ Monit Assess       Date:  2018-03-30       Impact factor: 2.513

4.  An improved SOM algorithm and its application to color feature extraction.

Authors:  Li-Ping Chen; Yi-Guang Liu; Zeng-Xi Huang; Yong-Tao Shi
Journal:  Neural Comput Appl       Date:  2013-04-27       Impact factor: 5.606

5.  Implementing in-situ self-organizing maps with memristor crossbar arrays for data mining and optimization.

Authors:  Rui Wang; Tuo Shi; Xumeng Zhang; Jinsong Wei; Jian Lu; Jiaxue Zhu; Zuheng Wu; Qi Liu; Ming Liu
Journal:  Nat Commun       Date:  2022-04-28       Impact factor: 17.694

6.  Interconnected growing self-organizing maps for auditory and semantic acquisition modeling.

Authors:  Mengxue Cao; Aijun Li; Qiang Fang; Emily Kaufmann; Bernd J Kröger
Journal:  Front Psychol       Date:  2014-03-20

7.  L-Tree: A Local-Area-Learning-Based Tree Induction Algorithm for Image Classification.

Authors:  Jaesung Choi; Eungyeol Song; Sangyoun Lee
Journal:  Sensors (Basel)       Date:  2018-01-20       Impact factor: 3.576

8.  Transdiagnostic Brain Mapping in Developmental Disorders.

Authors:  Roma Siugzdaite; Joe Bathelt; Joni Holmes; Duncan E Astle
Journal:  Curr Biol       Date:  2020-02-27       Impact factor: 10.834

9.  SEHIDS: Self Evolving Host-Based Intrusion Detection System for IoT Networks.

Authors:  Mohammed Baz
Journal:  Sensors (Basel)       Date:  2022-08-29       Impact factor: 3.847

10.  Generalized EmbedSOM on quadtree-structured self-organizing maps.

Authors:  Miroslav Kratochvíl; Abhishek Koladiya; Jiří Vondrášek
Journal:  F1000Res       Date:  2019-12-18
  10 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.