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عنوان
Learning Latent Hierarchical Structures via Probabilistic Models and Deep Learning

پدید آورنده
Arabshahi, Forough

موضوع

رده

کتابخانه
Center and Library of Islamic Studies in European Languages

محل استقرار
استان: Qom ـ شهر: Qom

Center and Library of Islamic Studies in European Languages

تماس با کتابخانه : 32910706-025

NATIONAL BIBLIOGRAPHY NUMBER

Number
TL4w44s8sx

LANGUAGE OF THE ITEM

.Language of Text, Soundtrack etc
انگلیسی

TITLE AND STATEMENT OF RESPONSIBILITY

Title Proper
Learning Latent Hierarchical Structures via Probabilistic Models and Deep Learning
General Material Designation
[Thesis]
First Statement of Responsibility
Arabshahi, Forough
Subsequent Statement of Responsibility
Singh, Sameer

.PUBLICATION, DISTRIBUTION, ETC

Name of Publisher, Distributor, etc.
UC Irvine
Date of Publication, Distribution, etc.
2018

DISSERTATION (THESIS) NOTE

Body granting the degree
UC Irvine
Text preceding or following the note
2018

SUMMARY OR ABSTRACT

Text of Note
Hierarchical structures arise in many real world applications and domains. For example, in social networks people's relationships and the groups to which they belong form a hierarchy. In natural language and computer programs, parse trees (which have a hierarchical structure) are used to represent the compositionality of expressions. These hierarchies strongly affect the statistics and the behavior of the data. Hence, it is important to develop algorithms that take these structures into account when modeling such data. Apart from these hierarchical structures, some datasets are best explained with hierarchical models even though there is no apparent hierarchy in the data itself. For instance when modeling the occurrence of words in a document, it is more realistic to assume that the words are drawn in a hierarchical manner from a topic distribution rather than independently from a single topic. In this dissertation, we focus on capturing these hierarchies and leveraging them for modeling high dimensional datasets.Hierarchical structures underlying the data are either observed or latent. For example in the context of computer programs, the syntax tree is inherent to the program and is therefore observed. On the other hand, the statistical dependence of a social network's users is latent. In this dissertation, we study both types of hierarchies and develop models under both struc- tures because they both arise in many applications and are equally important. Nevertheless, capturing latent hierarchical structures is more challenging. We develop novel probabilistic models to capture latent hierarchies and present statistically efficient and provably consistent parameter learning algorithms for them. When capturing observed hierarchical structures we develop deep learning models that learn low-dimensional continuous representations for the discrete symbols and variables.

PERSONAL NAME - PRIMARY RESPONSIBILITY

Arabshahi, Forough

PERSONAL NAME - SECONDARY RESPONSIBILITY

Singh, Sameer

CORPORATE BODY NAME - SECONDARY RESPONSIBILITY

UC Irvine

ELECTRONIC LOCATION AND ACCESS

Electronic name
 مطالعه متن کتاب 

p

[Thesis]
276903

a
Y

Proposal/Bug Report

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