In this paper, we present a Web content adaptation system that is able to automatically adapt textual elements of Web pages, based on the user profile and preferences. The system employs Web intelligence to perform these automatic adaptations on single elements composing a Web page. In particular, a reinforcement learning algorithm, i.e. Q-learning, based on the idea of reward/punishment is utilized as the machine learning system that manages the user profile. Based on it, the user profile is updated, so that automatic adaptations can be effectively performed while surfing the Web. We created a simulation scenario to test our approach over different users with specific preferences and/or different kinds of disabilities. Simulation results confirm the viability of the proposal.
Stefano Ferretti, Silvia Mirri, Catia Prandi, Paola Salomoni (2014). Exploiting Reinforcement Learning to Profile Users and Personalize Web Pages [10.1109/COMPSACW.2014.45].
Exploiting Reinforcement Learning to Profile Users and Personalize Web Pages
FERRETTI, STEFANO;MIRRI, SILVIA;PRANDI, CATIA;SALOMONI, PAOLA
2014
Abstract
In this paper, we present a Web content adaptation system that is able to automatically adapt textual elements of Web pages, based on the user profile and preferences. The system employs Web intelligence to perform these automatic adaptations on single elements composing a Web page. In particular, a reinforcement learning algorithm, i.e. Q-learning, based on the idea of reward/punishment is utilized as the machine learning system that manages the user profile. Based on it, the user profile is updated, so that automatic adaptations can be effectively performed while surfing the Web. We created a simulation scenario to test our approach over different users with specific preferences and/or different kinds of disabilities. Simulation results confirm the viability of the proposal.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.