A Matrix Framework Factorization on a Sentiment Based Rating Prediction Method tackles Cyber bullying Detection

Shiny Prathyusha Kambham, G.P Madhuri

Abstract


It displays a great chance to share our perspectives for different items we buy. In any case, we confront the data over-overloading issue. Instructions to mine profitable data from audits to comprehend a client's inclinations and make an exact proposal is critical. Customary recommender systems (RS) think of some as variables, for example, client's buy records, item classification, and geographic area. In this work, we propose a supposition based rating prediction technique (RPS) to enhance expectation exactness in recommender systems. In this paper, we extricate item highlights from literary audits utilizing LDA. We for the most part need to get the item highlights including some named elements and some item/thing/benefit characteristics. LDA is a Bayesian model, which is used to show the relationship of audits, points and words.

 


References


R. Salakhutdinov, and A. Mnih, “Probabilistic matrix factorization,” in NIPS, 2008.

X. Yang, H. Steck, and Y. Liu, “Circle-based recommendation in online social networks, ” in Proc. 18th ACM SIGKDD Int. Conf. KDD, New York, NY, USA, Aug. 2012, pp. 1267–1275.

M. Jiang, P. Cui, R. Liu, Q. Yang, F. Wang, W. Zhu, and S. Yang, “Social contextual recommendation,” in proc. 21st ACM Int. CIKM, 2012, pp. 45-54.

M. Jamali and M. Ester, “A matrix factorization technique with trust propagation for recommendation in social networks,” in Proc. ACM conf. RecSys, Barcelona, Spain. 2010, pp. 135-142.

Z. Fu, X. Sun, Q. Liu, et al., “Achieving Efficient Cloud Search Services: Multi-Keyword Ranked Search over Encrypted Cloud Data Supporting Parallel Computing,” IEICE Transactions on Communications, 2015, 98(1):190-200.

G. Ganu, N. Elhadad, A Marian, “Beyond the stars: Improving rating predictions using Review text content,” in 12th International Workshop on the Web and Databases (WebDB 2009). pp. 1-6.

J. Xu, X. Zheng, W. Ding, “Personalized recommendation based on reviews and ratings alleviating the sparsity problem of collaborative filtering,” IEEE International Conference on e-business Engineering. 2012, pp. 9-16.

X. Qian, H. Feng, G. Zhao, and T. Mei, “Personalized recommendation combining user interest and social circle,” IEEE Trans. Knowledge and data engineering. 2014, pp. 1763-1777.

H. Feng, and X. Qian, “Recommendation via user’s personality and social contextual,” in Proc. 22nd ACM international conference on information & knowledge management. 2013, pp. 1521-1524.

Z. Fu, K. Ren, J. Shu, et al., “Enabling Personalized Search over Encrypted Outsourced Data with Efficiency Improvement,” IEEE Transactions on Parallel & Distributed Systems, 2015:1-1.

D.M. Blei, A.Y. Ng, and M. I. Jordan, “Latent Dirichlet Allocation,” Journal of machine learning research 3. 2003, pp. 993-1022.

W. Zhang, G. Ding, L. Chen, C. Li , and C. Zhang, “ Generating virtual ratings from Chinese reviews to augment online recommendations,” ACM TIST, vol.4, no.1. 2013, pp. 1-17.

Z. Xia, X. Wang, X. Sun, and Q. Wang, “A Secure and Dynamic Multi-keyword Ranked Search Scheme over Encrypted Cloud Data,” IEEE Transactions on Parallel and Distributed Systems, vol. 27, no. 2, 2015, pp. 340-352.

J. Weston, R. J. Weiss, H. Yee, “Nonlinear latent factorization by embedding multiple user interests,” 7th ACM, RecSys, 2013, pp. 65-68.

J. Huang, X. Cheng, J. Guo, H. Shen, and K. Yang, “ Social recommendation with interpersonal influence,” in Proc. ECAI, 2010, pp. 601-606.


Full Text: PDF [Full Text]

Refbacks

  • There are currently no refbacks.


Copyright © 2013, All rights reserved.| ijseat.com

Creative Commons License
International Journal of Science Engineering and Advance Technology is licensed under a Creative Commons Attribution 3.0 Unported License.Based on a work at IJSEat , Permissions beyond the scope of this license may be available at http://creativecommons.org/licenses/by/3.0/deed.en_GB.