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Suman Nath Microsoft Research
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Contextual Computing Make computing context-aware Context: location, activity, preference, history A lot of progresses in location-aware services
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Not enough … Need to use other signals o Do I like Italian restaurant? o Am I walking? Do I drive 10 miles to eat? o Is it lunch time or dinner time? o Alone with family? o Queue time ? How do we get them? o Ask users to release more contextual information o Rely on crowdsourcing Challenges to address: o Energy: partially solved o Privacy: mostly unsolved Personal preference/history User’s context Real-time status
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Energy Many services require continuous sensing Acquiring context is expensive Many optimizations proposed o Not sufficient for continuous sensing o Phone will die in a few hours Challenge: continuous sensing for a day without charging Needs innovation: Efficient “Assisted” GPS
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Low Power Assisted GPS Not regular GPS replacement Location-based services (e.g. mobile search) Batched location estimation (e.g. path prediction) Delay-tolerance positioning (e.g. geo- tagging photos) Crowdsourcing code phase NMS 1ms Requires a few ms Takes 1s to minutes Same for ~150KM Mobile phone sends to server: Code phases Cell tower ID Time stamp Server: Computes NMS Computes mobile location LEAP: A Low Energy Assisted GPS for Trajectory-Based Services, Ramos et al. Ubicomp 2011
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Privacy: do we care? News: iPhone keeps record of everywhere you go
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Do people care? 52% said they were "very or extremely concerned" about loss of privacy from using location-sharing applications Are you worried about geolocation privacy? 48% seriously concerned, 32% little worried 48%
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Why is the stake high? Apple fined 1M won ($932) by South Korea over iPhone tracking allegations The suit now counts 26,691 plaintiffs => $26 million Lawmakers Demand Apple Clarify iPhone Tracking Capability Facebook fights new California privacy bill 'Do Not Track Me Online' privacy bill introduced by California Rep. Jackie Speier
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PER Theorem Impossible to maximize all three Trivial to maximize any two Privacy Revenue/ Relevance Efficiency Server-side Client-side No-result Michaela Goetz and Suman Nath, Privacy-Aware Personalization for Mobile Advertising, no. MSR-TR-2011-92, August 2011
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My wishlist My context-aware service knows what is relevant Without affecting my phone battery much Without me telling it much about my private context Even if I release limited private information o My privacy is preserved (even with strong adversaries) o In future I can revoke my data o (Only) I can decide how my data is used and shared
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