This work concerns learning probabilistic models for ranking data in a heteroge-neous population. The specific problem we study is learning the parameters of a Mallows Mixture Model. Despite being widely studied, current heuristics for this problem do not have theoretical guarantees and can get stuck in bad local optima. We present the first polynomial time algorithm which provably learns the param-eters of a mixture of two Mallows models. A key component of our algorithm is a novel use of tensor decomposition techniques to learn the top-k prefix in both the rankings. Before this work, even the question of identifiability in the case of a mixture of two Mallows models was unresolved.
This work considers a computationally and statistically efficient parameter estimation method for a ...
We study the problem of learning a distribution from samples, when the underlying distribution is a ...
The thesis deals with the problem of analyzing ranking data and focuses, in particular, on the proba...
This work concerns learning probabilistic models for ranking data in a heterogeneous population. The...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
In this paper we consider the problem of learning a mixture of permutations, where each component of...
Mixture models of Plackett-Luce (PL), one of the most fundamental ranking models, are an active rese...
Learning preference distributions is a critical problem in many areas (e.g., recommender systems, IR...
We consider the problem of learning mixtures of generalized linear models (GLM) which arise in class...
Learning preference distributions is a critical problem in many areas (e.g., recommender systems, IR...
In the last decade, machine learning algorithms have been substantially developed and they have gain...
Motivated by generating personalized recommendations using ordinal (or pref-erence) data, we study t...
This note is a short version of that in [1]. It is intended as a survey for the 2015 Algorithmic Lea...
The class of Mallows models (MMs) occupy a central role in the literature for the analysis and learn...
Ranking and comparing items is crucial for collecting information about preferences in many areas, f...
This work considers a computationally and statistically efficient parameter estimation method for a ...
We study the problem of learning a distribution from samples, when the underlying distribution is a ...
The thesis deals with the problem of analyzing ranking data and focuses, in particular, on the proba...
This work concerns learning probabilistic models for ranking data in a heterogeneous population. The...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
In this paper we consider the problem of learning a mixture of permutations, where each component of...
Mixture models of Plackett-Luce (PL), one of the most fundamental ranking models, are an active rese...
Learning preference distributions is a critical problem in many areas (e.g., recommender systems, IR...
We consider the problem of learning mixtures of generalized linear models (GLM) which arise in class...
Learning preference distributions is a critical problem in many areas (e.g., recommender systems, IR...
In the last decade, machine learning algorithms have been substantially developed and they have gain...
Motivated by generating personalized recommendations using ordinal (or pref-erence) data, we study t...
This note is a short version of that in [1]. It is intended as a survey for the 2015 Algorithmic Lea...
The class of Mallows models (MMs) occupy a central role in the literature for the analysis and learn...
Ranking and comparing items is crucial for collecting information about preferences in many areas, f...
This work considers a computationally and statistically efficient parameter estimation method for a ...
We study the problem of learning a distribution from samples, when the underlying distribution is a ...
The thesis deals with the problem of analyzing ranking data and focuses, in particular, on the proba...