Techniques are provided to determine user-interest features and
user-interest parameter weights for a user-interest model. The
user-interest features are pre-determined and/or determined dynamically.
Pre-determined user-interest features are based on user-interest
profiles, prior user activities, documents listed in a resume, reading or
browsing patterns and the like. Dynamically determined user-interest
features include features learned from an archive of user activities
using statistical analysis, machine learning and the like. User-interest
parameter weights are pre-determined and/or dynamically determined.
Pre-determined user-interest parameter weights include parameter weights
manually entered by a user indicating the relevant importance of a
user-interest feature and parameter weights previously learned from an
archive of the user's past activities. Dynamically assigned user-interest
parameter weights include dynamically determined updates to user-interest
parameter weights based on newly identified documents or topics of
interest.