Recommending Web Documents Based on User Preferences
نویسندگان
چکیده
Eric J. Glover1;2 Steve Lawrence1 Michael D. Gordon3 William P. Birmingham2 C. Lee Giles1 fcompuman,lawrence,[email protected] fcompuman,[email protected] [email protected] NEC Research Institute1 Artificial Intelligence Laboratory2 Business Administration3 4 Independence Way University of Michigan University of Michigan Princeton, NJ 0854
منابع مشابه
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