PAKDD 1998: Research and Development in Knowledge Discovery and Data Mining pp 385-387 | Cite as
Learning user preferences on the WEB
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Abstract
We present a new tool called INDWEB, based on Inductive Logic Programming, that can learn some concepts that characterized interesting pages for a user or a group of users with respect to a set of criteria on these pages but also on these users or group of users.
Keywords
Inductive Logic Programming WEB Information RetrievalPreview
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© Springer-Verlag Berlin Heidelberg 1998