A Hybrid Semantic Recommender System Based on an Improved Clustering

Author:

Bahrani Payam1,Minaei-Bidgoli Behrouz2,Parvin Hamid1,Mirzarezaee Mitra1,Keshavarz Ahmad

Affiliation:

1. Islamic Azad University

2. Iran University of Science and Technology

Abstract

Abstract A recommender system is a model that automatically recommends some meaningful cases (such as clips/films/goods/items) to the clients/people/consumers/users according to their (previous) interests. These systems are expected to recommend the items according to the users’ interests. There are two traditional general recommender system models, i.e., Collaborative Filtering Recommender System (ColFRS) and Content-based Filtering Recommender System (ConFRS). Also, there is another model that is a hybrid of those two traditional recommender systems; it is called Hybrid Recommender System (HRS). An HRS usually outperforms simple traditional recommender systems. The problems such as scalability, cold start, and sparsity belong to the main problems that any recommender system should deal with. The memory-based (modeless) recommender systems benefit from good accuracies. But they suffer from a lack of admissible scalability. The model-based recommender systems suffer from a lack of admissible accuracies. But they benefit from good scalability. In this paper, it is tried to propose a hybrid model based on an automatically improved ontology to deal with the scalability, cold start, and sparsity problems. Our proposed HRS also uses an innovative approach of clustering as an augmented section. When there are enough ratings, it uses a collaborative filtering approach to predict the missing ratings. When there are not enough ratings, it uses a content-based filtering approach to predict the missing ratings. In the content-based filtering section of our proposed HRS, ontology concepts are used to improve the accuracy of ratings’ prediction. If our target client is severely sparse, we can not trust even the ratings predicted by the content-based filtering section of our proposed HRS. Therefore, our proposed HRS uses additive clustering to improve the prediction of the missing ratings if the target client is severely sparse. It is experimentally shown that our model outperforms many of the newly developed recommender systems.

Publisher

Research Square Platform LLC

Reference71 articles.

1. New recommendation techniques for multicriteria rating systems;Adomavicius G;IEEE Intell Syst,2007

2. Generating semantically enriched user profiles for web personalization;Anand SS;ACM Trans Internet Technol (TOIT),2007

3. Buitelaar P, Cimiano P, Magnini B (2005) Ontology learning from text: methods, evaluation and applications, vol 123. IOS press

4. Hybrid recommender systems: Survey and experiments;Burke R;User Model User-Adapt Interact,2002

5. A fuzzy recommender system based on the integration of subjective preferences and objective information;Cheng L-C;Appl Soft Comput,2014

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