Analysis and Performance Evaluation of Cosine Neighbourhood Recommender System
Journal: The International Arab Journal of Information Technology (Vol.14, No. 5)Publication Date: 2017-09-01
Authors : Kola Periyasamy; Jayadharini Jaiganesh; Kanchan Ponnambalam; Jeevitha Rajasekar; Kannan Arputharaj;
Page : 747-754
Keywords : Big Data; Recommender System; Cosine Neighbourhood Similarity; Recommender Evaluator.;
Abstract
Growth of technology and innovation leads to large and complex data which is coined as Bigdata. As the quantity of information increases, it becomes more difficult to store and process data. The greater problem is finding right data from these enormous data. These data are processed to extract the required data and recommend high quality data to the user. Recommender system analyses user preference to recommend items to user. Problem arises when Bigdata is to be processed for Recommender system. Several technologies are available with which big data can be processed and analyzed. Hadoop is a framework which supports manipulation of large and varied data. In this paper, a novel approach Cosine Neighbourhood Similarity measure is proposed to calculate rating for items and to recommend items to user and the performance of the recommender system is evaluated under different evaluator which shows the proposed Similarity measure is more accurate and reliable.
Other Latest Articles
- Diagnosis of Leptomeningeal Metastases Disease in MRI Images by Using Image Enhancement Methods
- SIMPLE DESALINATION PROCESS FOR MAKING AGRICULTURAL CULTIVATION SOLUTION FROM SEAWATER USING NATURAL ZEOLITE AND ACTIVATED ALUMINA
- HEALTH LITERACY ON HYPERTENSION AND FUNCTIONAL HEALTH STATUS AMONG ELDERLY OF MALABON CITY, PHILIPPINES
- A Metrics Driven Design Approach for Real Time Environment Application
Last modified: 2019-05-09 18:55:15