Graphs are an essential topic in machine learning. In this proposal, we explore problems in graphical models (where a probability distribution has conditional independencies specified by a graph), causality (where a directed graph specifies causal directions), and clustering (where a weighted graph is used to denote related items). For our first contribution, we consider the facility location problem. In this problem our goal is to select a set of k "facilities" such that the average benefit from a "town" to its most beneficial facility is maximized. As input, we receive a bipartite graph where every edge has a weight denoting the benefit the town would receive from the facility if selected. The input graph is often dense, with O(n²) edges....
This report is a brief exposition of some of the important links between machine learning and combin...
Statistical model learning problems are traditionally solved using either heuristic greedy optimizat...
International audienceThe problem of predicting connections between a set of data points finds many ...
In the first article we present a network based algorithm for probabilistic inference in an undirect...
Existing approaches to solving combinatorial optimization problems on graphs suffer from the need to...
Recovering combinatorial structures from noisy observations is a recurrent problem in many applicati...
We consider energy minimization for undirected graphical models, also known as the MAP-inference pro...
The overaching goal in this thesis is to develop the representational frameworks, the inference algo...
In this thesis, we study the design and analysis of algorithms for discovering the structure and pro...
Graphical models are a well-known convenient tool to describe complex interactions between variables...
We consider energy minimization for undirected graphical models, also known as the MAP-inference pro...
A combinatorial random variable is a discrete random variable defined over a combinatorial set (e.g....
We propose a new type of undirected graphical models called a Combinatorial Markov Random Field (Com...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
Statistical model learning problems are traditionally solved using either heuristic greedy optimizat...
This report is a brief exposition of some of the important links between machine learning and combin...
Statistical model learning problems are traditionally solved using either heuristic greedy optimizat...
International audienceThe problem of predicting connections between a set of data points finds many ...
In the first article we present a network based algorithm for probabilistic inference in an undirect...
Existing approaches to solving combinatorial optimization problems on graphs suffer from the need to...
Recovering combinatorial structures from noisy observations is a recurrent problem in many applicati...
We consider energy minimization for undirected graphical models, also known as the MAP-inference pro...
The overaching goal in this thesis is to develop the representational frameworks, the inference algo...
In this thesis, we study the design and analysis of algorithms for discovering the structure and pro...
Graphical models are a well-known convenient tool to describe complex interactions between variables...
We consider energy minimization for undirected graphical models, also known as the MAP-inference pro...
A combinatorial random variable is a discrete random variable defined over a combinatorial set (e.g....
We propose a new type of undirected graphical models called a Combinatorial Markov Random Field (Com...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
Statistical model learning problems are traditionally solved using either heuristic greedy optimizat...
This report is a brief exposition of some of the important links between machine learning and combin...
Statistical model learning problems are traditionally solved using either heuristic greedy optimizat...
International audienceThe problem of predicting connections between a set of data points finds many ...