Title
Cascaded generic XCS to learn about reminding preferences
Abstract
We are developing an adaptive reminding system, which learns when and how to present notifications. In this paper, we focus on our XCS-based model, composed of two cascaded sets of classifiers: the first one learns a categorization of calendar data, while the second selects the appropriate forms of combinable reminders depending on the user and device contexts. After describing the characteristics of the input data, we present the extensions we propose to provide a generic XCS architecture, which seems suitable for processing those specific inputs. Finally, we describe our user feedback mechanism, and the according reward system.
Year
DOI
Venue
2007
10.1145/1274000.1274062
GECCO (Companion)
Keywords
Field
DocType
combinable reminder,input data,cascaded generic xcs,reward system,cascaded set,device context,user feedback mechanism,appropriate form,calendar data,generic xcs architecture,xcs-based model,learning classifier system,time management
Categorization,Architecture,Computer science,Artificial intelligence,Reward system,Machine learning
Conference
Citations 
PageRank 
References 
0
0.34
5
Authors
3
Name
Order
Citations
PageRank
Nadine Richard173.28
Samuel Tardieu2588.65
Seiji Yamada337360.21