際際滷

際際滷Share a Scribd company logo
_   nets & the city  _
Use  mobility data
  to recommend social events
mobile phone location data
location estimations lessons
1. infer attendace at events  2. recommend in 6 ways location estimations lessons 3. measure quality
time distance 1m users (20% population) sample 80K 1. infer attendace at events  location estimations attendance
distance 1. infer attendace at events  location estimations attendance
time 1. infer attendace at events  location estimations attendance
resolutions: time (1 遜 h) & space (350m) 1. infer attendace at events  location estimations attendance
1. infer attendace at events  location estimations attendance
its  not  about single  individuals . its about  areas 1. infer attendace at events  location estimations attendance
油
On input of  area of residence :  1. popular events  2. geographically close 3. popular in area of residence 4. TF-IDF  (similar to 3 expect for less-attended events) 5. K-Nearest Locations 6. K-Nearest Events 2. recommend in 6 ways attendance ranked recommendations
Shakespeare Red Sox You  went to lessons 3. measure quality ranked recommendations
Shakespeare Red Sox You went to lessons 3. measure quality ranked recommendations
Shakespeare Red Sox You went to 1.  Shakespeare 2. Cirque  5.  Red Sox 1.  Shakespeare 2.  Red Sox  5. Cirque lessons 3. measure quality ranked recommendations
Shakespeare Red Sox You went to 1.  Shakespeare 2. Cirque  5.  Red Sox 1.  Shakespeare 2.  Red Sox  5. Cirque average percentile ranking High   Low   lessons 3. measure quality ranked recommendations
lessons 3. measure quality ranked recommendations
Lesson 1: geographically close isnt the best ;-)  lessons 3. measure quality ranked recommendations
lessons 3. measure quality ranked recommendations
Lesson 2: popular in area rocks ;-)  lessons 3. measure quality ranked recommendations
lessons 3. measure quality ranked recommendations
Lesson 3: geographical patterns matter ;-)  lessons 3. measure quality ranked recommendations
geographical patterns matter geographically close isnt the best   popular in area rocks
Future
Future  1| differential privacy
SpotME if you can fake your location yet aggregate location data is still OK
promoting location privacy one lie at a time
Future  2| social nets & space
油

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