Social media repositories serve as a significant source of evidence when extracting information related to the reputation of a particular entity (e.g., a particular politician, singer or company). Reputation management experts manually mine the social media repositories (in particular Twitter) for monitoring the reputation of a particular entity. Recently, the online reputation management evaluation campaign known as RepLab at CLEF has turned attention to devising computational methods for facilitating reputation management experts. A quite significant research challenge related to the above issue is to classify the reputation dimension of tweets with respect to entity names. More specifically, finding various aspects of a brand’s reputation is an important task which can help companies in monitoring areas of their strengths and weaknesses in an effective manner. To address this issue in this paper we use dominant Wikipedia categories related to a reputation dimension; the dominant Wikipedia categories are then utilised within a semantic relatedness scoring framework to generate “associativities” with respect to the various reputation dimensions, and another version of “associativity” normalized by the “content entropy” of Wikipedia categories. The Wikipedia categories obtained through our applied methods are finally used in a random forest classifier for the task of reputation dimensions classification. The experimental evaluations show a significant improvement over the baseline accuracy.

Qureshi, M., Younus, A., O’Riordan, C., Pasi, G. (2018). A wikipedia-based semantic relatedness framework for effective dimensions classification in online reputation management. JOURNAL OF AMBIENT INTELLIGENCE AND HUMANIZED COMPUTING, 9(5), 1403-1413 [10.1007/s12652-017-0536-y].

A wikipedia-based semantic relatedness framework for effective dimensions classification in online reputation management

Qureshi, MA
;
Younus, A;Pasi, G
2018

Abstract

Social media repositories serve as a significant source of evidence when extracting information related to the reputation of a particular entity (e.g., a particular politician, singer or company). Reputation management experts manually mine the social media repositories (in particular Twitter) for monitoring the reputation of a particular entity. Recently, the online reputation management evaluation campaign known as RepLab at CLEF has turned attention to devising computational methods for facilitating reputation management experts. A quite significant research challenge related to the above issue is to classify the reputation dimension of tweets with respect to entity names. More specifically, finding various aspects of a brand’s reputation is an important task which can help companies in monitoring areas of their strengths and weaknesses in an effective manner. To address this issue in this paper we use dominant Wikipedia categories related to a reputation dimension; the dominant Wikipedia categories are then utilised within a semantic relatedness scoring framework to generate “associativities” with respect to the various reputation dimensions, and another version of “associativity” normalized by the “content entropy” of Wikipedia categories. The Wikipedia categories obtained through our applied methods are finally used in a random forest classifier for the task of reputation dimensions classification. The experimental evaluations show a significant improvement over the baseline accuracy.
Articolo in rivista - Articolo scientifico
Online reputation management; Reputation dimensions; Semantic relatedness; Wikipedia;
Online reputation management, Semantic relatedness, Wikipedia, Reputation dimensions
English
2018
9
5
1403
1413
none
Qureshi, M., Younus, A., O’Riordan, C., Pasi, G. (2018). A wikipedia-based semantic relatedness framework for effective dimensions classification in online reputation management. JOURNAL OF AMBIENT INTELLIGENCE AND HUMANIZED COMPUTING, 9(5), 1403-1413 [10.1007/s12652-017-0536-y].
File in questo prodotto:
Non ci sono file associati a questo prodotto.

I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/187634
Citazioni
  • Scopus 2
  • ???jsp.display-item.citation.isi??? 3
Social impact