Banca de DEFESA: GABRIELA OLIVEIRA MOTA DA SILVA

Uma banca de DEFESA de DOUTORADO foi cadastrada pelo programa.
STUDENT : GABRIELA OLIVEIRA MOTA DA SILVA
DATE: 28/09/2023
TIME: 08:30
LOCAL: https://meet.google.com/hyn-hbkj-ans
TITLE:

EXPLOITING LOD-BASED SIMILARITY PERSONALIZATION STRATEGIES FOR RECOMMENDER SYSTEMS


KEY WORDS:

Recommender Systems, Linked Open Data, Semantic Similarity, Personalization, Feature Selection


PAGES: 114
BIG AREA: Ciências Exatas e da Terra
AREA: Ciência da Computação
SUBÁREA: Metodologia e Técnicas da Computação
SPECIALTY: Sistemas de Informação
SUMMARY:

Linked Open Data (LOD) is a cloud of freely accessible and interconnected datasets that encompass machine-readable data. These data are available under open Semantic Web standards, such as Resource Description Framework (RDF), SPARQL Protocol, and RDF Query Language (SPARQL). One notable example of a LOD set is DBpedia, a crowd-sourced community effort to extract structured information from Wikipedia and make this information openly available on the Web. The semantic content of LOD and the advanced features of SPARQL has opened unprecedented opportunities for enabling semantic-aware applications. LOD-based Recommender Systems Recommender Systems usually leverage the data available within LOD datasets such as DBpedia to recommend items such as movies, places, books, and music to end-users. These systems use a semantic similarity algorithm that calculates the degree of matching between pairs of resources by counting the number of direct and indirect links between them, the length of the path between them, or the hierarchy of classes. Conversely, calculating similarity in RDF graphs could be difficult because each resource can have hundreds of links to other nodes. Not all of them are semantically relevant or can be applied to all resources in the graph. This can lead to the well-known matrix sparsity problem. Nevertheless, some effort has been made to select subsets of features, i.e., links, which are more helpful to computing similarity between items of a graph dataset, reducing the matrix dimension. Despite several studies in this field, there is still a lack of solutions applied to the personalization of feature selection tasks. In this context, we propose personalized strategies to improve semantic similarity precision in LOD-based Recommender Systems, including i) applying a feature selection approach to filter the best features for a particular user, ii) personalizing the RDF graph by adding weights to the edges, according to the user’s previous preferences; and iii) exploiting the similarity of literal properties as well as the links from the user model. The evaluation experiments used combined data from DBpedia and MovieLens and DBpedia and LastFM datasets. Results indicate significant increases in top-n recommendation tasks in Precision@K (K=5, 10), Map, and NDCG over non-personalized baseline similarities methods such as Linked Data Semantic Distance (LDSD) and Resource Similarity (ReSim). The results show that the LOD-based strategies of user model personalization.


COMMITTEE MEMBERS:
Presidente - 2011187 - FREDERICO ARAUJO DURAO
Interna - 1678446 - LAIS DO NASCIMENTO SALVADOR
Interna - 1232218 - DANIELA BARREIRO CLARO
Externo à Instituição - ROSALVO FERREIRA DE OLIVEIRA NETOROSALVO NETO - UNIVASF
Externa à Instituição - NATASHA CORREIA QUEIROZ LINO - UFPB
Notícia cadastrada em: 28/08/2023 09:41
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