抽象的

Recommendation of Songs for Next Generation with Square Euclidean Distance

Soni Samprati, Prof.Mayura Kinikar

Recommender systems are widely implemented in E-commerce websites to assist customers in finding the items they need. A recommender system should also be able to provide users with useful information about that might interest them. The ability of promptly responding to changes in user’s preference is a valuable asset for such systems. The recommender system presents an innovative recommender system for music data that combines two methodologies; the content based filtering technique and the interactive genetic algorithm. The recommender system analyzes and recommends items that are appropriate with their own favorites. The recommender system provides recommendation by collecting user’s profiles and discovers relations between each profile. Today increasing numbers of people are turning to computational recommendersystems. Emerging in response to the technological possibilities and human needs created by the World Wide Web, these systems aim to mediate, support, or automate the everyday process of sharing recommendations. The main goal is to identify challenges and suggest new opportunities.

免责声明: 此摘要通过人工智能工具翻译,尚未经过审核或验证