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How does contextually-aware AI use personal data? 


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Contextually-aware AI uses personal data by collecting rich personal data from smartphones and wearable devices for human activity recognition, user modeling, and personalized services . The smartphone acts as a gateway, connecting wearable devices and gathering various types of personal data from these wearables . The data collection schedule is dynamically adjusted based on contingent situations in the condition of wearables, system resource availability, and user behavior . Contextual information is handled by a context-aware engine implemented in the smartphone . The system performs natural language processing on user input to determine parameters and retrieves data from knowledge graphs containing contextual and background information . An action module is selected based on the results, and the arguments are passed to the module to respond to a question or interact with web services . Contextually-aware AI can also utilize social media and other sources of general information to develop smarter mobile services . However, user privacy concerns require new regulations and systems to allow applications to use contextual data without compromising privacy .

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Open accessJournal ArticleDOI
Ao Guo, Jianhua Ma 
08 Feb 2017-IEEE Access
15 Citations
The provided paper does not explicitly mention how contextually-aware AI uses personal data.
The paper does not provide specific information on how contextually-aware AI uses personal data.
The paper does not explicitly mention how contextually-aware AI uses personal data.
The paper does not provide information on how contextually-aware AI uses personal data.
Patent
24 Feb 2006
168 Citations
The provided paper does not explicitly mention how contextually-aware AI uses personal data.

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