Visible to the public Biblio

Filters: Author is Moscibroda, Thomas  [Clear All Filters]
2017-09-15
Shi, Tianlin, Agostinelli, Forest, Staib, Matthew, Wipf, David, Moscibroda, Thomas.  2016.  Improving Survey Aggregation with Sparsely Represented Signals. Proceedings of the 22Nd ACM SIGKDD International Conference on Knowledge Discovery and Data Mining. :1845–1854.

In this paper, we develop a new aggregation technique to reduce the cost of surveying. Our method aims to jointly estimate a vector of target quantities such as public opinion or voter intent across time and maintain good estimates when using only a fraction of the data. Inspired by the James-Stein estimator, we resolve this challenge by shrinking the estimates to a global mean which is assumed to have a sparse representation in some known basis. This assumption has lead to two different methods for estimating the global mean: orthogonal matching pursuit and deep learning. Both of which significantly reduce the number of samples needed to achieve good estimates of the true means of the data and, in the case of presidential elections, can estimate the outcome of the 2012 United States elections while saving hundreds of thousands of samples and maintaining accuracy.

2017-05-19
Zhou, Mengyu, Sui, Kaixin, Ma, Minghua, Zhao, Youjian, Pei, Dan, Moscibroda, Thomas.  2016.  MobiCamp: A Campus-wide Testbed for Studying Mobile Physical Activities. Proceedings of the 3rd International on Workshop on Physical Analytics. :1–6.

Ubiquitous WiFi infrastructure and smart phones offer a great opportunity to study physical activities. In this paper, we present MobiCamp, a large-scale testbed for studying mobility-related activities of residents on a campus. MobiCamp consists of \textasciitilde2,700 APs, \textasciitilde95,000 smart phones, and an App with \textasciitilde2,300 opt-in volunteer users. More specifically, we capture how mobile users interact with different types of buildings, with other users, and with classroom courses, etc. To achieve this goal, we first obtain a relatively complete coverage of the users' mobility traces by utilizing four types of information from SNMP and by relaxing the location granularity to roughly at the room level. Then the popular App provides user attributes (grade, gender, etc.) and fine-grained behavior information (phone usages, course timetables, etc.) of the sampled population. These detailed mobile data is then correlated with the mobility traces from the SNMP to estimate the entire campus population's physical activities. We use two applications to show the power of MobiCamp.