01764nas a2200229 4500000000100000008004100001653002200042653002000064653003000084653002800114653001900142653001800161653001800179100001700197700001600214700002200230700001900252245008500271300001100356490000700367520116000374 2021 d10aclustering method10aCyberAggregator10ainformation summarization10asocial media monitoring10asubject domain10avisualization10awords network1 aDmytro Lande1 aIhor Subach1 aOlexander Puchkov1 aArtem Soboliev00aA Clustering Method for Information Summarization and Modelling a Subject Domain a79-86 0 v503 a

The article presents a discriminant cluster analysis method used to form real-time models of subject areas and digests based on automatic analysis of a large number of messages from social networks. It is based on estimating the discriminant value of terms. Cluster analysis, like the well-known LSA algorithm, provides a matrix representation of the data. The novelty is in using the most significant discriminant values as centroids to define clusters.

The algorithm is simplified; it does not involve referencing to the adjacency matrix, definition of eigenvectors. Its complexity is O(N2), where K is the number of clusters and N – the number of reference terms. If it is necessary to improve the quality of the proposed approach, the defined centroids can be transferred as input data for other known algorithms. Based on the above algorithm, toolkits for the formation of a language network and digests were developed and embedded in the “CyberAggregator” system, which provides accumulation, processing, summarization of data from social networks on cybersecurity issues.