ALL libraries (COBIB.SI union bibliographic/catalogue database)
PDF
  • K-means-based algorithm for blockmodeling linked networks
    Žiberna, Aleš
    The paper presents a k-means-based algorithm for blockmodeling linked networks where linked networks are defined as a collection of one-mode and two-mode networks in which units from different ... one-mode networks are connected through two-mode networks. The reason for this is that a faster algorithm is needed for blockmodeling linked networks that can better scale to larger networks. Examples of linked networks include multilevel networks, dynamic networks, dynamic multilevel networks, and meta-networks. Generalized blockmodeling has been developed for linked/multilevel networks, yet the generalized blockmodeling approach is too slow for analyzing larger networks. Therefore, the flexibility of generalized blockmodeling is sacrificed for the speed of k-means-based approaches, thus allowing the analysis of larger networks. The presented algorithm is based on the two-mode k-means (or KL-means) algorithm for two-mode networks or matrices. As a side product, an algorithm for one-mode blockmodeling of one-mode networks is presented. The algorithm's use on a dynamic multilevel network with more than 400 units is presented. A situation study is also conducted which shows that k-means based algorithms are superior to relocation algorithm-based methods for larger networks (e.g. larger than 800 units) and never much worse.
    Source: Social Networks. - ISSN 0378-8733 (Vol. 61, May 2020, str. 153-169)
    Type of material - article, component part
    Publish date - 2020
    Language - english
    COBISS.SI-ID - 36567901

source: Social Networks. - ISSN 0378-8733 (Vol. 61, May 2020, str. 153-169)
loading ...
loading ...
loading ...