Followee recommendation in twitter using fuzzy link prediction.
Rodríguez Aldape, Fernando Manuel y Torres Treviño, Luis Martín y Garza Villarreal, Sara Elena (2016) Followee recommendation in twitter using fuzzy link prediction. Expert systems, 33 (4). pp. 349-361. ISSN 1468-0394
|
Texto
rodriguez2016followee.pdf - Versión Publicada Available under License Creative Commons Attribution Non-commercial No Derivatives. Download (289kB) | Vista previa |
Resumen
In social networking sites, it is useful to receive recommendations about whom to contact or follow. These recommendations not only allow to establish connections with people one might already know in real life, but also with people or users that have similar interests or are potentially interesting. We propose an approach that tackles contact (followee) recommendation in Twitter by means of fuzzy logic. This fuzzy approach handles recommendation as a link prediction problem and uses three types of similarity between a pair of users: tweet similarity, followee id similarity, and followee tweet similarity. These similarities are calculated by extracting user profiles. These profiles are, in turn, obtained by considering Twitter as a heterogeneous information network. To test our approach, we crawled a repository of 6,000 users and 2 million tweets, and we measured accuracy by comparing our results with the actual followee lists of the users. These results, which are also compared against the results given by state-of-the-art methods, show a high accuracy. Other advantages of the fuzzy system include a self-explanatory capability and the ability to produce a non-binary friendship value.
Tipo de elemento: | Article | ||||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Palabras claves no controlados: | Fuzzy systems, Recommender systems, Twitter, Link prediction, Expert systems, Artificial intelligence. | ||||||||||||
Materias: | Q Ciencia > QA Matemáticas, Ciencias computacionales | ||||||||||||
Divisiones: | Ingeniería Mecánica y Eléctrica | ||||||||||||
Usuario depositante: | Dra. Sara Elena Garza Villarreal | ||||||||||||
Creadores: |
|
||||||||||||
Fecha del depósito: | 20 Sep 2018 15:50 | ||||||||||||
Última modificación: | 25 Sep 2018 19:18 | ||||||||||||
URI: | http://eprints.uanl.mx/id/eprint/13557 |
Actions (login required)
Ver elemento |