63,891 research outputs found

    The state-of-the-art in personalized recommender systems for social networking

    Get PDF
    With the explosion of Web 2.0 application such as blogs, social and professional networks, and various other types of social media, the rich online information and various new sources of knowledge flood users and hence pose a great challenge in terms of information overload. It is critical to use intelligent agent software systems to assist users in finding the right information from an abundance of Web data. Recommender systems can help users deal with information overload problem efficiently by suggesting items (e.g., information and products) that match usersā€™ personal interests. The recommender technology has been successfully employed in many applications such as recommending films, music, books, etc. The purpose of this report is to give an overview of existing technologies for building personalized recommender systems in social networking environment, to propose a research direction for addressing user profiling and cold start problems by exploiting user-generated content newly available in Web 2.0

    Midwest Urban Tree Care Forum April 4-6 2003

    Get PDF
    The 1st annual Midwest Urban Tree Care Forum was held in Chicago, IL and surrounding suburbs in early April of2003. This forum was an opportunity for students, teachers, practicing arborists, and urban foresters from all over the Midwest to come together and discuss the state of urban tree care. Despite unseasonably cold weather and lots of rain, we traveled to over 14 different sites and listened to over 20 different speakers all around Chicagoland during this three-day period. ISU attendees included Rex Johnson, Derek Mercer, Andrea Frost, and Dr. Jan Thompson. The forum presented countless networking opportunities, and it would not have been hard for one to leave the forum with several prospects for future employment. Every speaker and site presented unique circumstances for the care of urban trees, but over the three days there were a few major topics that almost every speaker mentioned

    PICES Press, Vol. 18, No. 2, Summer 2010

    Get PDF
    ā€¢The 2010 Inter-sessional Science Board Meeting: A Note from the Science Board Chairman (pp. 1-3) ā€¢2010 Symposium on ā€œEffects of Climate Change on Fish and Fisheriesā€ (pp. 4-11) ā€¢2009 Mechanism of North Pacific Low Frequency Variability Workshop (pp. 12-14) ā€¢The Fourth China-Japan-Korea GLOBEC/IMBER Symposium (pp. 15-17, 23) ā€¢2010 Sendai Ocean Acidification Workshop (pp. 18-19, 31) ā€¢2010 Sendai Coupled Climate-to-Fish-to-Fishers Models Workshop (pp. 20-21) ā€¢2010 Sendai Salmon Workshop on Climate Change (pp. 22-23) ā€¢2010 Sendai Zooplankton Workshop (pp. 24-25, 28) ā€¢2010 Sendai Workshop on ā€œNetworking across Global Marine Hotspotsā€ (pp. 26-28) ā€¢The Ocean, Salmon, Ecology and Forecasting in 2010 (pp. 29, 44) ā€¢The State of the Northeast Pacific during the Winter of 2009/2010 (pp. 30-31) ā€¢The State of the Western North Pacific in the Second Half of 2009 (pp. 32-33) ā€¢The Bering Sea: Current Status and Recent Events (pp. 34-35, 39) ā€¢PICES Seafood Safety Project: Guatemala Training Program (pp. 36-39) ā€¢The Pacific Ocean Boundary Ecosystem and Climate Study (POBEX) (pp. 40-43) ā€¢PICES Calendar (p. 44

    Digital learning objects: a local response to the California State University system initiative

    Get PDF
    The purpose of this paper is to present a virtual library plan created by library directors of the 23 California State University (CSU) system campuses. The information literacy portion of the project offers a repository of high quality interactive digital learning objects (DLOs) in the MERLOT repository. Therefore, DLOs created locally at the Dr Martin Luther King, Jr Library at San JosĆ© State University (SJSU) focus on topics that supplement the ā€œcoreā€ DLO collection

    Inferring Networks of Substitutable and Complementary Products

    Full text link
    In a modern recommender system, it is important to understand how products relate to each other. For example, while a user is looking for mobile phones, it might make sense to recommend other phones, but once they buy a phone, we might instead want to recommend batteries, cases, or chargers. These two types of recommendations are referred to as substitutes and complements: substitutes are products that can be purchased instead of each other, while complements are products that can be purchased in addition to each other. Here we develop a method to infer networks of substitutable and complementary products. We formulate this as a supervised link prediction task, where we learn the semantics of substitutes and complements from data associated with products. The primary source of data we use is the text of product reviews, though our method also makes use of features such as ratings, specifications, prices, and brands. Methodologically, we build topic models that are trained to automatically discover topics from text that are successful at predicting and explaining such relationships. Experimentally, we evaluate our system on the Amazon product catalog, a large dataset consisting of 9 million products, 237 million links, and 144 million reviews.Comment: 12 pages, 6 figure
    • ā€¦
    corecore