A soft-rough set based approach for handling contextual sparsity in context-aware video recommender systems

SM Abbas, KA Alam, S Shamshirband - Mathematics, 2019 - mdpi.com
SM Abbas, KA Alam, S Shamshirband
Mathematics, 2019mdpi.com
Context-aware video recommender systems (CAVRS) seek to improve recommendation
performance by incorporating contextual features along with the conventional user-item
ratings used by video recommender systems. In addition, the selection of influential and
relevant contexts has a significant effect on the performance of CAVRS. However, it is not
guaranteed that, under the same contextual scenario, all the items are evaluated by users
for providing dense contextual ratings. This problem cause contextual sparsity in CAVRS …
Context-aware video recommender systems (CAVRS) seek to improve recommendation performance by incorporating contextual features along with the conventional user-item ratings used by video recommender systems. In addition, the selection of influential and relevant contexts has a significant effect on the performance of CAVRS. However, it is not guaranteed that, under the same contextual scenario, all the items are evaluated by users for providing dense contextual ratings. This problem cause contextual sparsity in CAVRS because the influence of each contextual factor in traditional CAVRS assumes the weights of contexts homogeneously for each of the recommendations. Hence, the selection of influencing contexts with minimal conflicts is identified as a potential research challenge. This study aims at resolving the contextual sparsity problem to leverage user interactions at varying contexts with an item in CAVRS. This problem may be investigated by considering a formal approximation of contextual attributes. For the purpose of improving the accuracy of recommendation process, we have proposed a novel contextual information selection process using Soft-Rough Sets. The proposed model will select a minimal set of influencing contexts using a weights assign process by Soft-Rough sets. Moreover, the proposed algorithm has been extensively evaluated using “LDOS-CoMoDa” dataset, and the outcome signifies the accuracy of our approach in handling contextual sparsity by exploiting relevant contextual factors. The proposed model outperforms existing solutions by identifying relevant contexts efficiently based on certainty, strength, and relevancy for effective recommendations.
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