A survey on the use of association rules mining techniques in textual social media
Metadatos
Mostrar el registro completo del ítemEditorial
Springer
Materia
Social media mining Association rules Text mining Social networks
Fecha
2022-05-12Referencia bibliográfica
Diaz-Garcia, J.A., Ruiz, M.D. & Martin-Bautista, M.J. A survey on the use of association rules mining techniques in textual social media. Artif Intell Rev (2022). [https://doi.org/10.1007/s10462-022-10196-3]
Patrocinador
COPKIT project under the European Union's Horizon 2020 research and innovation program 786687; Andalusian government; FEDER operative program under the project BigDataMed P18-RT-2947 B-TIC-145-UGR18; Spanish Government FPU18/00150Resumen
The incursion of social media in our lives has been much accentuated in the last decade.
This has led to a multiplication of data mining tools aimed at obtaining knowledge from
these data sources. One of the greatest challenges in this area is to be able to obtain this
knowledge without the need for training processes, which requires structured information
and pre-labelled datasets. This is where unsupervised data mining techniques come in.
These techniques can obtain value from these unstructured and unlabelled data, providing
very interesting solutions to enhance the decision-making process. In this paper, we first
address the problem of social media mining, as well as the need for unsupervised techniques,
in particular association rules, for its treatment. We follow with a broad overview
of the applications of association rules in the domain of social media mining, specifically,
their application to the problems of mining textual entities, such as tweets. We also focus
on the strengths and weaknesses of using association rules for solving different tasks in
textual social media. Finally, the paper provides a perspective overview of the challenges
that association rules must face in the next decade within the field of social media mining.