MACE: Mobile Artificial Conversational Entity for Adapting Domain Knowledge and Generating Personalized Advice

Mobile learning offers, with the help of handheld devices, a continuous access to the learning process. With the advent of mobile learning, educational systems are changing, offering the possibilit...

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