Improving Stability, Smoothing and Diversifying of Recommender Systems
Journal: International Journal of Science and Research (IJSR) (Vol.5, No. 7)Publication Date: 2016-07-05
Authors : Sagar Sontakke; Pratibha Chavan;
Page : 1920-1924
Keywords : Recommendation Systems; Stability; Iterative Smoothing; Collaborative Filtering; Jaccard Distance; Clustering;
Abstract
Recommender systems are used extensively now-a-days for various web-sites such as for providing products suggestions based on customers purchase history and searched product s. Current recommendation system approaches lack of a high degree of stability. Diversification of prediction is also important feature of recommender system. Having displayed same set of results every time may increase lack of trust in recommendation systems. In this paper, our focus is on stability of different recommender system approaches and providing diversity in results. We will focus on different recommender system approaches, methods provided to improve the stability and approaches in increasing diversity of recommender system.
Other Latest Articles
- Effectiveness of Routine Physical Therapy with and Without Pain Release Phenomenon in Patello-Femoral Pain Syndrome
- Enhancing Data Security Using Elliptic Curve Cryptography in Cloud Computing
- Enhancement of Hazy Image Using Visibility Restoration Technique
- A Survey on CommTrust: Computing Multi-Dimensional Trust by Mining E-Commerce Feedback Comments
- Assessment of Fresh Properties of Pond Ash SCC
Last modified: 2021-07-01 14:40:32