4 research outputs found
Overlapping Community Discovery Methods: A Survey
The detection of overlapping communities is a challenging problem which is
gaining increasing interest in recent years because of the natural attitude of
individuals, observed in real-world networks, to participate in multiple groups
at the same time. This review gives a description of the main proposals in the
field. Besides the methods designed for static networks, some new approaches
that deal with the detection of overlapping communities in networks that change
over time, are described. Methods are classified with respect to the underlying
principles guiding them to obtain a network division in groups sharing part of
their nodes. For each of them we also report, when available, computational
complexity and web site address from which it is possible to download the
software implementing the method.Comment: 20 pages, Book Chapter, appears as Social networks: Analysis and Case
Studies, A. Gunduz-Oguducu and A. S. Etaner-Uyar eds, Lecture Notes in Social
Networks, pp. 105-125, Springer,201
Data-driven Computational Social Science: A Survey
Social science concerns issues on individuals, relationships, and the whole
society. The complexity of research topics in social science makes it the
amalgamation of multiple disciplines, such as economics, political science, and
sociology, etc. For centuries, scientists have conducted many studies to
understand the mechanisms of the society. However, due to the limitations of
traditional research methods, there exist many critical social issues to be
explored. To solve those issues, computational social science emerges due to
the rapid advancements of computation technologies and the profound studies on
social science. With the aids of the advanced research techniques, various
kinds of data from diverse areas can be acquired nowadays, and they can help us
look into social problems with a new eye. As a result, utilizing various data
to reveal issues derived from computational social science area has attracted
more and more attentions. In this paper, to the best of our knowledge, we
present a survey on data-driven computational social science for the first time
which primarily focuses on reviewing application domains involving human
dynamics. The state-of-the-art research on human dynamics is reviewed from
three aspects: individuals, relationships, and collectives. Specifically, the
research methodologies used to address research challenges in aforementioned
application domains are summarized. In addition, some important open challenges
with respect to both emerging research topics and research methods are
discussed.Comment: 28 pages, 8 figure
Detección de comunidades en redes: Algoritmos y aplicaciones
El presente trabajo de fin de máster tiene como objetivo la realización de un análisis de los métodos de detección de comunidades en redes. Como parte inicial se realizó un estudio de las caracterÃsticas principales de la teorÃa de grafos y las comunidades, asà como medidas comunes en este problema. Posteriormente, se realizó una revisión de los principales métodos de detección de comunidades, elaborando una clasificación, teniendo en cuenta sus caracterÃsticas y complejidad computacional, para la detección de las fortalezas y debilidades en los métodos, asà como también trabajos posteriores. Luego, se estudio el problema de la calificación de un método de agrupamiento, esto con el fin de evaluar la calidad de las comunidades detectadas, analizando diferentes medidas. Por último se elaboraron las conclusiones asà como las posibles lÃneas de trabajo que se pueden derivar.This master's thesis work has the objective of performing an analysis of the methods for detecting communities in networks. As an initial part, I study of the main features of graph theory and communities, as well as common measures in this problem. Subsequently, I was performed a review of the main methods of detecting communities, developing a classification, taking into account its characteristics and computational complexity for the detection of strengths and weaknesses in the methods, as well as later works. Then, study the problem of classification of a clustering method, this in order to evaluate the quality of the communities detected by analyzing different measures. Finally conclusions are elaborated and possible lines of work that can be derived