A fuzzy entropy technique for dimensionality reduction in recommender systems using deep learning

AbstractRecommenders utilize the knowledge discovery-based methods for identifying information required by the user. The recommender system faces some serious challenges in recent years to access exponentially increasing information due to high number of Web site users. Some of the challenges posed in this respect are: The system should assure high-quality recommendations and high coverage even during data sparsity and produce more recommendations per second based on million users. To improve the performance of the recommender system, selecting appropriate features from the available highly redundant information is a crucial task. The feature selection technique will bring down the dimensionality and also discard the redundant and the noise-corrupted features. The collaborative filtering-based methods will make use of the past activities or the preferences like the user ratings or content information of the products to regulate the top references. This work proposes a fuzzy entropy-based deep learning for the content features as well as a feature selection method. Deep learning-based recommender process takes extended important consideration by overwhelming difficulties of conventional models and attaining high reference excellence. A fuzzy entropy-based feature selection technique lowers the dimensionality of hyperspectral data.

[1]  Bernabe Batchakui,et al.  Deep Learning Methods on Recommender System: A Survey of State-of-the-art , 2017 .

[2]  John Riedl,et al.  Application of Dimensionality Reduction in Recommender System - A Case Study , 2000 .

[3]  James Nga-Kwok Liu,et al.  An elastic contour matching model for tropical cyclone pattern recognition , 2001, IEEE Trans. Syst. Man Cybern. Part B.

[4]  Wenzhun Huang,et al.  Two-stage plant species recognition by local mean clustering and Weighted sparse representation classification , 2017, Cluster Computing.

[5]  Wei Wang,et al.  Recommender system application developments: A survey , 2015, Decis. Support Syst..

[6]  Yucheng Zhang,et al.  A novel cluster computing technique based on signal clustering and analytic hierarchy model using hadoop , 2017, Cluster Computing.

[7]  Dit-Yan Yeung,et al.  Collaborative Deep Learning for Recommender Systems , 2014, KDD.

[8]  Giles M. Foody,et al.  Feature Selection for Classification of Hyperspectral Data by SVM , 2010, IEEE Transactions on Geoscience and Remote Sensing.

[9]  Tong Zhang,et al.  Deep Learning Based Feature Selection for Remote Sensing Scene Classification , 2015, IEEE Geoscience and Remote Sensing Letters.

[10]  Qi Chen,et al.  Single image shadow detection and removal based on feature fusion and multiple dictionary learning , 2017, Multimedia Tools and Applications.

[11]  Yang Guo,et al.  A survey of collaborative filtering based social recommender systems , 2014, Comput. Commun..

[12]  J. Bobadilla,et al.  Recommender systems survey , 2013, Knowl. Based Syst..

[13]  Chih-Ming Chen,et al.  An efficient fuzzy classifier with feature selection based on fuzzy entropy , 2001, IEEE Trans. Syst. Man Cybern. Part B.

[14]  Francesco Ricci,et al.  A survey of active learning in collaborative filtering recommender systems , 2016, Comput. Sci. Rev..

[15]  Mehrbakhsh Nilashi,et al.  Multi-criteria collaborative filtering with high accuracy using higher order singular value decomposition and Neuro-Fuzzy system , 2014, Knowl. Based Syst..

[16]  Haoxiang Wang,et al.  Plant diseased leaf segmentation and recognition by fusion of superpixel, K-means and PHOG , 2018 .