Integrating Exponential Dispersion Models to Latent Structures
<p> Latent variable models have two basic components: a latent structure encoding a hypothesized complex pattern and an observation model capturing the data distribution. With the advancements in machine learning and increasing availability of resources, we are able to perform inference in dee...
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ndltd-PROQUEST-oai-pqdtoai.proquest.com-102540572017-02-09T16:01:41Z Integrating Exponential Dispersion Models to Latent Structures Basbug, Mehmet Emin Artificial intelligence|Computer science <p> Latent variable models have two basic components: a latent structure encoding a hypothesized complex pattern and an observation model capturing the data distribution. With the advancements in machine learning and increasing availability of resources, we are able to perform inference in deeper and more sophisticated latent variable models. In most cases, these models are designed with a particular application in mind; hence, they tend to have restrictive observation models. The challenge, surfaced with the increasing diversity of data sets, is to generalize these latent models to work with different data types. We aim to address this problem by utilizing exponential dispersion models (EDMs) and proposing mechanisms for incorporating them into latent structures. (Abstract shortened by ProQuest.)</p> Princeton University 2017-02-08 00:00:00.0 thesis http://pqdtopen.proquest.com/#viewpdf?dispub=10254057 EN |
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EN |
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Artificial intelligence|Computer science |
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Artificial intelligence|Computer science Basbug, Mehmet Emin Integrating Exponential Dispersion Models to Latent Structures |
description |
<p> Latent variable models have two basic components: a latent structure encoding a hypothesized complex pattern and an observation model capturing the data distribution. With the advancements in machine learning and increasing availability of resources, we are able to perform inference in deeper and more sophisticated latent variable models. In most cases, these models are designed with a particular application in mind; hence, they tend to have restrictive observation models. The challenge, surfaced with the increasing diversity of data sets, is to generalize these latent models to work with different data types. We aim to address this problem by utilizing exponential dispersion models (EDMs) and proposing mechanisms for incorporating them into latent structures. (Abstract shortened by ProQuest.)</p> |
author |
Basbug, Mehmet Emin |
author_facet |
Basbug, Mehmet Emin |
author_sort |
Basbug, Mehmet Emin |
title |
Integrating Exponential Dispersion Models to Latent Structures |
title_short |
Integrating Exponential Dispersion Models to Latent Structures |
title_full |
Integrating Exponential Dispersion Models to Latent Structures |
title_fullStr |
Integrating Exponential Dispersion Models to Latent Structures |
title_full_unstemmed |
Integrating Exponential Dispersion Models to Latent Structures |
title_sort |
integrating exponential dispersion models to latent structures |
publisher |
Princeton University |
publishDate |
2017 |
url |
http://pqdtopen.proquest.com/#viewpdf?dispub=10254057 |
work_keys_str_mv |
AT basbugmehmetemin integratingexponentialdispersionmodelstolatentstructures |
_version_ |
1718413192979283968 |