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(38)¡¡Effectiveness of Action Prediction Method for a
User Using Inductive Learning WIith N-gram
¡¡¡¡¡¡¡¡Proceedings of the IASTED International Conference
¡¡¡¡¡¡¡¡ARTIFICIAL AND COMPUTATIONAL INTELLIGENCE, pp.179-184, 2002-9
¡¡This paper describes a method for action prediction of a user. When we build
a care system with learning function like a learning room, a statistical approach
or an analytical approach can be considered. Statistical approaches are not liable
to produce reliable result unless a huge prepared database is available. The analytical
approaches are necessary to give the prepared rules adapted to the user and the
adaptability of this method is low. Aiming at solution of such problems, we have
proposed a method to predict the action of a user using Inductive Learning with
N-gram. The system based on this method is able to acquire needed rules from comparative
few data history automatically using Inductive Learning. The rules express a user's
taste and custom. Therefore the system is able to adapt dynamically to the users
by it's own learning ability. The rate of the average correct prediction was 60.1[%]
on the experiment. The user must proofread the erroneous conversion in the prediction
results. However, the erroneous conversion decreases since the system based on
this method is able to adapt dynamically to various users. This paper shows the
evaluation results of the action prediction in our proposed method.
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