Evolution of SOMs' Structure and Learning Algorithm: From Visualization of High-Dimensional Data to Clustering of Complex Data

被引:1
|
作者
Gorzalczany, Marian B. [1 ]
Rudzinski, Filip [1 ]
机构
[1] Kielce Univ Technol, Dept Elect & Comp Engn, PL-25314 Kielce, Poland
关键词
artificial intelligence; computational intelligence; artificial neural networks; self-organizing neural networks; self-organizing maps; high-dimensional data visualization; complex data clustering; SELF-ORGANIZING-MAP; NETWORK;
D O I
10.3390/a13050109
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
In this paper, we briefly present several modifications and generalizations of the concept of self-organizing neural networks-usually referred to as self-organizing maps (SOMs)-to illustrate their advantages in applications that range from high-dimensional data visualization to complex data clustering. Starting from conventional SOMs, Growing SOMs (GSOMs), Growing Grid Networks (GGNs), Incremental Grid Growing (IGG) approach, Growing Neural Gas (GNG) method as well as our two original solutions, i.e., Generalized SOMs with 1-Dimensional Neighborhood (GeSOMs with 1DN also referred to as Dynamic SOMs (DSOMs)) and Generalized SOMs with Tree-Like Structures (GeSOMs with T-LSs) are discussed. They are characterized in terms of (i) the modification mechanisms used, (ii) the range of network modifications introduced, (iii) the structure regularity, and (iv) the data-visualization/data-clustering effectiveness. The performance of particular solutions is illustrated and compared by means of selected data sets. We also show that the proposed original solutions, i.e., GeSOMs with 1DN (DSOMs) and GeSOMS with T-LSs outperform alternative approaches in various complex clustering tasks by providing up to 20% increase in the clustering accuracy. The contribution of this work is threefold. First, algorithm-oriented original computer-implementations of particular SOM's generalizations are developed. Second, their detailed simulation results are presented and discussed. Third, the advantages of our earlier-mentioned original solutions are demonstrated.
引用
收藏
页数:24
相关论文
共 50 条
  • [1] An algorithm for high-dimensional traffic data clustering
    Zheng, Pengjun
    McDonald, Mike
    FUZZY SYSTEMS AND KNOWLEDGE DISCOVERY, PROCEEDINGS, 2006, 4223 : 59 - 68
  • [2] Functional clustering algorithm for high-dimensional proteomics data
    Bensmail, H
    Aruna, B
    Semmes, OJ
    Haoudi, A
    JOURNAL OF BIOMEDICINE AND BIOTECHNOLOGY, 2005, (02): : 80 - 86
  • [3] Evolutionary Subspace Clustering Algorithm for High-Dimensional Data
    Nourashrafeddin, S. N.
    Arnold, Dirk V.
    Milios, Evangelos
    PROCEEDINGS OF THE FOURTEENTH INTERNATIONAL CONFERENCE ON GENETIC AND EVOLUTIONARY COMPUTATION COMPANION (GECCO'12), 2012, : 1497 - 1498
  • [4] Clustering algorithm of high-dimensional data based on units
    School of In formation Engineering, Hubei Institute for Nationalities, Enshi 445000, China
    Jisuanji Yanjiu yu Fazhan, 2007, 9 (1618-1623): : 1618 - 1623
  • [5] High-dimensional data visualization
    Tang, Lin
    NATURE METHODS, 2020, 17 (02) : 129 - 129
  • [6] High-dimensional data visualization
    Lin Tang
    Nature Methods, 2020, 17 : 129 - 129
  • [7] High-dimensional data clustering
    Bouveyron, C.
    Girard, S.
    Schmid, C.
    COMPUTATIONAL STATISTICS & DATA ANALYSIS, 2007, 52 (01) : 502 - 519
  • [8] Clustering High-Dimensional Data
    Masulli, Francesco
    Rovetta, Stefano
    CLUSTERING HIGH-DIMENSIONAL DATA, CHDD 2012, 2015, 7627 : 1 - 13
  • [9] Visualization and data mining of high-dimensional data
    Inselberg, A
    CHEMOMETRICS AND INTELLIGENT LABORATORY SYSTEMS, 2002, 60 (1-2) : 147 - 159
  • [10] Beyond Multidimensional Data in Model Visualization: High-Dimensional and Complex Nonnumeric Data
    Villa-Vialaneix, Nathalie
    Ruiz-Gazen, Anne
    STATISTICAL ANALYSIS AND DATA MINING, 2015, 8 (04) : 232 - 239