Intelligent Widget Reconfiguration for Mobile Phones

A significant amount of research work in user interface design exists with a proportion of this extendable platforms. Some investigate the effect of user ability on interface generation for mobile applications. Other works analyzed how different contexts and mobile platforms affect the generation of these interfaces. However, most of these exist works require a significant degree of context requirements modeling before interface reconfiguration takes place. Few on the% fly reconfiguration approaches exist that learn from user interactions as well as contextual information received by a mobile p hone. With the explosive growth of new applications for the mobile phone, its user interface is quickly becoming flooded with application widgets. This work investigates some on user interactions and c ontextual information received by the mobile phone. Performance evaluations demonstrate how a simple neural network% based engine is able to improve the prediction accuracy of the interface reconfiguration in a mobile phone.

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