[图书][B] Approximate inference for determinantal point processes
J Gillenwater - 2014 - search.proquest.com
2014•search.proquest.com
In this thesis we explore a probabilistic model that is well-suited to a variety of subset
selection tasks: the determinantal point process (DPP). DPPs were originally developed in
the physics community to describe the repulsive interactions of fermions. More recently, they
have been applied to machine learning problems such as search diversification and
document summarization, which can be cast as subset selection tasks. A challenge,
however, is scaling such DPP-based methods to the size of the datasets of interest to this …
selection tasks: the determinantal point process (DPP). DPPs were originally developed in
the physics community to describe the repulsive interactions of fermions. More recently, they
have been applied to machine learning problems such as search diversification and
document summarization, which can be cast as subset selection tasks. A challenge,
however, is scaling such DPP-based methods to the size of the datasets of interest to this …
Abstract
In this thesis we explore a probabilistic model that is well-suited to a variety of subset selection tasks: the determinantal point process (DPP). DPPs were originally developed in the physics community to describe the repulsive interactions of fermions. More recently, they have been applied to machine learning problems such as search diversification and document summarization, which can be cast as subset selection tasks. A challenge, however, is scaling such DPP-based methods to the size of the datasets of interest to this community, and developing approximations for DPP inference tasks whose exact computation is prohibitively expensive.
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