Wednesday, February 28, 2018 - 4:30pm to Thursday, March 1, 2018 - 4:55pm
Event Calendar Category
LIDS & Stats Tea
Speaker Name
Cheng Mao
Affiliation
Mathematics Department, MIT
Building and Room Number
LIDS Lounge
There has been a recent surge of interest in studying permutation-based models, such as the noisy sorting (NS) model and the strong stochastic transitivity (SST) model, for ranking from pairwise comparisons. Although permutation-based ranking models are richer than traditional parametric models, a wide gap exists between the statistically optimal rate n^{-1} and the rate n^{-1/2} achieved by the best computationally efficient algorithms. In this talk, I will discuss new algorithms that achieve rates n^{-1} and n^{-3/4} for the NS and the SST model respectively.
I am a fifth-year graduate student in the Mathematics Department at MIT. My advisor is Philippe Rigollet. My research interests include statistics theory, machine learning and probability. Previously, I was an undergraduate student at UCLA.