Content relatedness in the social web based on social explicit semantic analysis
Authors: Ntalianis, Klimis 
Otterbacher, Janna 
Mastorakis, Nikolaos 
Issue Date: 5-Jun-2017
Conference: 1st International Conference on Applied Mathematics and Computer Science, 27-29 January 2017, Rome, Italy 
Journal: AIP Conference Proceedings 
Volume: 1836
Issue: 1
Abstract: 
In this paper a novel content relatedness algorithm for social media content is proposed, based on the Explicit Semantic Analysis (ESA) technique. The proposed scheme takes into consideration social interactions. In particular starting from the vector space representation model, similarity is expressed by a summation of term weight products. In this paper, term weights are estimated by a social computing method, where the strength of each term is calculated by the attention the terms receives. For this reason each post is split into two parts, title and comments area, while attention is defined by the number of social interactions such as likes and shares. The overall approach is named Social Explicit Semantic Analysis. Experimental results on real data show the advantages and limitations of the proposed approach, while an initial comparison between ESA and S-ESA is very promising.
ISSN: 1551-7616
0094-243X
DOI: 10.1063/1.4982008
URI: https://uniwacris.uniwa.gr/handle/3000/2918
Type: Conference Paper
Department: Department of Business Administration 
School: School of Administrative, Economics and Social Sciences 
Affiliation: University of West Attica (UNIWA) 
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