TY - CONF ID - www2009196 UR - http://www2009.eprints.org/196/ A1 - Parikh, Nish A1 - Sundaresan, Neel Y1 - 2009/04// N2 - In this paper, we describe a buzz-based recommender system based on a large source of queries in an eCommerce application. The system detects bursts in query trends. These bursts are linked to external entities like news and inventory information to find the queries currently in-demand which we refer to as buzz queries. The system follows the paradigm of limited quantity merchandising, in the sense that on a per-day basis the system shows recommendations around a single buzz query with the intent of increasing user curiosity, and improving activity and stickiness on the site. A semantic neighborhood of the chosen buzz query is selected and appropriate recommendations are made on products that relate to this neighborhood. TI - Buzz-Based Recommender System SP - 1231 M2 - Madrid, Spain AV - public EP - 1231 T2 - 18th International World Wide Web Conference ER -