Center for Machine Learning and Intelligent Systems
About  Citation Policy  Donate a Data Set  Contact


Repository Web            Google
View ALL Data Sets

UbiqLog (smartphone lifelogging) Data Set
Download: Data Folder, Data Set Description

Abstract: UbiqLog is the smartphone lifelogging tool that runs on the smartphone of 35 users for about 2 months.

Data Set Characteristics:  

Multivariate

Number of Instances:

9782222

Area:

Computer

Attribute Characteristics:

N/A

Number of Attributes:

N/A

Date Donated

2016-06-16

Associated Tasks:

Causal-Discovery

Missing Values?

N/A

Number of Web Hits:

3529


Source:

Reza Rawassizadeh rrawassizadeh '@' acm.org. University of California Riverside.


Data Set Information:

This is the first smartphone based lifelogging dataset that is going to be available for public use. Please consider that the user of this dataset are obliged NOT to perform any sort of analysis that can harm the privacy of participants. This dataset is not for any privacy related analysis that can re-identify users.
The UbiqLog tool is open source and accessible here: [Web Link]


Attribute Information:

With respect to users privacy UbiqLog collects their Calls, SMS headers (no content), App use, WiFi & Bluetooth devices in user's proximity, geographical location (if available and GPS works), physical activities form Google play API.
Data format is in JSON, because there are different sensors and they have different variables. Nevertheless, we have the code for cleaning and converting the data into CSV + smoothing the time. Moreover, we can share our visualization code. Interested individuals could contact the given email address.


Relevant Papers:

To appear: Scalable Daily Human Behavioral Pattern Mining from Multivariate Temporal Data.



Citation Request:

Please cite both of the following paper and NOT only one of them:

Rawassizadeh, R., Tomitsch, M., Wac, K., & Tjoa, A. M. (2013). UbiqLog: a generic mobile phone-based life-log framework. Personal and ubiquitous computing, 17(4), 621-637.

Rawassizadeh, R., Momeni, E., Dobbins, C., Mirza-Babaei, P., & Rahnamoun, R. (2015). Lesson Learned from Collecting Quantified Self Information via Mobile and Wearable Devices. Journal of Sensor and Actuator Networks, 4(4), 315-335.


Supported By:

 In Collaboration With:

About  ||  Citation Policy  ||  Donation Policy  ||  Contact  ||  CML