Views Navigation

Event Views Navigation

Calendar of Events

S Sun

M Mon

T Tue

W Wed

T Thu

F Fri

S Sat

0 events,

0 events,

0 events,

0 events,

0 events,

1 event,

Statistics and Data Science Seminar Jianqing Fan (Princeton University)

0 events,

0 events,

0 events,

0 events,

0 events,

0 events,

1 event,

Statistics and Data Science Seminar Subhabrata Sen (Microsoft)

0 events,

0 events,

0 events,

0 events,

0 events,

0 events,

1 event,

SDSC Special Events

0 events,

0 events,

0 events,

0 events,

0 events,

0 events,

1 event,

Statistics and Data Science Seminar Genevera Allen (Rice)

0 events,

0 events,

0 events,

0 events,

0 events,

0 events,

1 event,

0 events,

Optimality of Spectral Methods for Ranking, Community Detections and Beyond

Jianqing Fan (Princeton University)
E18-304

Abstract: Spectral methods have been widely used for a large class of challenging problems, ranging from top-K ranking via pairwise comparisons, community detection, factor analysis, among others. Analyses of these spectral methods require super-norm perturbation analysis of top eigenvectors. This allows us to UNIFORMLY approximate elements in eigenvectors by linear functions of the observed random…

Find out more »

Testing degree corrections in Stochastic Block Models

Subhabrata Sen (Microsoft)
E18-304

Abstract: The community detection problem has attracted significant attention in re- cent years, and it has been studied extensively under the framework of a Stochas- tic Block Model (SBM). However, it is well-known that SBMs t real data very poorly, and various extensions have been suggested to replicate characteristics of real data. The recovered community…

Find out more »

SDSCon 2018: Statistics and Data Science Center Conference

Bartos Theater

Join us at SDSCon 2018 on April 20, 2018 to hear leaders in the field of statistics and data science. SDSCon 2018 is the second annual celebration of MIT’s statistics and data science community organized by MIT’s Statistics and Data Center (SDSC). The mission of SDSC is to advance research activities and academic programs in…

Find out more »

Inference, Computation, and Visualization for Convex Clustering and Biclustering

Genevera Allen (Rice)
E18-304

Abstract: Hierarchical clustering enjoys wide popularity because of its fast computation, ease of interpretation, and appealing visualizations via the dendogram and cluster heatmap. Recently, several have proposed and studied convex clustering and biclustering which, similar in spirit to hierarchical clustering, achieve cluster merges via convex fusion penalties. While these techniques enjoy superior statistical performance, they…

Find out more »

Size-Independent Sample Complexity of Neural Networks

Ohad Shamir (Weizman Institute)
E18-304

Abstract: I'll describe new bounds on the sample complexity of deep neural networks, based on the norms of the parameter matrices at each layer. In particular, we show how certain norms lead to the first explicit bounds which are fully independent of the network size (both depth and width), and are therefore applicable to arbitrarily…

Find out more »


MIT Statistics + Data Science Center
Massachusetts Institute of Technology
77 Massachusetts Avenue
Cambridge, MA 02139-4307
617-253-1764