Finding Similar Music Artists for Recommendation Members :Abhay Goel, Prerak Trivedi.

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Presentation transcript:

Finding Similar Music Artists for Recommendation Members :Abhay Goel, Prerak Trivedi

Abstract Music Information Retrieval is an Important Research Area. The development of information clustering leads the user to find related contents and interests more easily. In this project, we present Similar music artist based on their genre, ratings and Artist’s Era We use Nearest Neighbor Technique and also other Distance Based classification method can be employed. Yahoo! Music DB to form the base set to compare the results.

Technologies Used Yahoo Webscope Dataset R1 Yahoo! Music User Ratings of Musical Artists, version 1.0 Yahoo Music API and YQL ( HTML, XML DOM, JavaScript Reference from Yahoo Webscope Publication “Finding Similar Music Artists for Recommendation”, on_Lisa_W.pdf.

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