Title of article :
A Nondisturbing Service to Automatically Customize Notification Sending Using Implicit-Feedback
Author/Authors :
Herna´ndez, Fernando Lo´pez Universidad International de la Rioja (UNIR), Spain , Pe´rez, Elena Verdu´ Universidad International de la Rioja (UNIR), Spain , Rainer Granados, J. Javier Universidad International de la Rioja (UNIR), Spain , Gonza´lez Crespo, Rube´n Universidad International de la Rioja (UNIR), Spain
Pages :
18
From page :
1
To page :
18
Abstract :
This paper addresses the problem of automatically customizing the sending of notifications in a nondisturbing way, that is, by using only implicit-feedback. Then, we build a hybrid filter that combines text mining content filtering and collaborative filtering to predict the notifications that are most interesting for each user. The content-based filter clusters notifications to find content with topics for which the user has shown interest. The collaborative filter increases diversity by discovering new topics of interest for the user, because these are of interest to other users with similar concerns. The paper reports the result of measuring the performance of this recommender and includes a validation of the topics-based approach used for content selection. Finally, we demonstrate how the recommender uses implicit-feedback to personalize the content to be delivered to each user.
Keywords :
Customize , Automatically , Nondisturbing Service , Implicit-Feedback , Notification
Journal title :
Scientific Programming
Serial Year :
2019
Full Text URL :
Record number :
2611662
Link To Document :
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