Monday, November 14 |
07:30 - 09:00 |
Breakfast (Restaurant Hotel Hacienda Los Laureles) |
09:15 - 09:30 |
Introduction and Welcome (Conference Room San Felipe) |
09:30 - 10:30 |
Guy Bresler: Algorithmic Decorrelation and Planted Clique in Dependent Random Graphs ↓ There is a growing collection of average-case reductions starting from Planted Clique (or Planted Dense Subgraph) and mapping to a variety of statistics problems, sharply characterizing their computational phase transitions. These reductions transform an instance of Planted Clique, a highly structured problem with its simple clique signal and independent noise, to problems with richer structure. In this talk we aim to make progress in the other direction: to what extent can these problems, which often have complicated dependent noise, be transformed back to Planted Clique? Such a bidirectional reduction between Planted Clique and another problem shows a strong computational equivalence between the two problems. As a concrete instance of a more general result, we consider the planted clique (or dense subgraph) problem in an ambient graph that has dependent edges induced by randomly adding triangles to the Erdos-Renyi graph G(n,p), and show how to successfully eliminate dependence by carefully removing the triangles while approximately preserving the clique (or dense subgraph). In order to analyze our reduction we develop new methods for bounding the total variation distance between dependent distributions. Joint work with Chenghao Guo and Yury Polyanskiy. (Conference Room San Felipe) |
10:30 - 11:00 |
Coffee Break (Conference Room San Felipe) |
11:00 - 12:00 |
Julia Gaudio: Spectral algorithms for community detection ↓ Many networks exhibit community structure, meaning that there are two or more groups of nodes which are densely connected. Identifying these communities gives valuable insights about the latent features of the nodes. Community detection has been used in a wide array of applications including online advertising, recommender systems (e.g., Netflix), webpage sorting, fraud detection, and neurobiology.
I will present my work on algorithms for community detection in two contexts, each with an underlying probabilistic generative model.
(1) Censored networks: How can we identify communities when some connectivity information is missing? Here we consider recovery from the Censored Stochastic Block Model. (Joint work with Souvik Dhara, Elchanan Mossel, and Colin Sandon)
(2) Higher-order networks: Beyond pairwise relationships. Here we consider recovery from the Hypergraph SBM, where we are given access to the "similarity matrix" of the hypergraph. (Joint work with Nirmit Joshi)
We show that simple spectral algorithms achieve the information-theoretic thresholds of both exact recovery problems. (Conference Room San Felipe) |
12:00 - 13:00 |
Will Perkins: The (symmetric) Ising perceptron: progress and problems ↓ The Perceptron model was proposed as early as the 1950's as a toy model of a one-layer neural network. The basic model consists of a set of solutions (either the Hamming cube or the sphere of dimension n) and a set of constraints given by n-dimensional Gaussian vectors. The constraints are that the inner product of a solution vector with each constraint vector scaled by sqrt{n} must lie in some interval on the real line. Probabilistic questions about the model include the satisfiability threshold (or the "storage capacity") and questions about the typical structure of the solution space. Algorithmic questions include the tractability of finding a solution (the learning problem in the neural network interpretation). I will survey the model, the main problems, and recent progress. (Conference Room San Felipe) |
13:20 - 13:30 |
Group Photo (Hotel Hacienda Los Laureles) |
13:30 - 15:00 |
Lunch (Restaurant Hotel Hacienda Los Laureles) |
15:00 - 16:00 |
Weina Wang: Stochastic Bin Packing with Time-Varying Item Sizes ↓ In today's computing systems, there is a strong contention between achieving high server utilization and accommodating the time-varying resource requirements of jobs. Motivated by this problem, we study a stochastic bin packing formulation with time-varying item sizes, where bins and items correspond to servers and jobs, respectively. Our goal is to answer the following fundamental question: How can we minimize the number of active servers (servers running at least one job) given a budget for the cost associated with resource overcommitment on servers? We propose a novel framework for designing job dispatching policies, which reduces the problem to a policy design problem in a single-server system through policy conversions. Through this framework, we develop a policy that is asymptotically optimal as the job arrival rate increases. This is a joint work with Yige Hong at Carnegie Mellon University and Qiaomin Xie at the University of Wisconsin–Madison. ((Conference Room San Felipe)) |
16:00 - 16:30 |
Coffee Break (Conference Room San Felipe) |
19:00 - 21:00 |
Dinner (Restaurant Hotel Hacienda Los Laureles) |