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Towards risk models in machine learning

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TitleInfo
Title
Towards risk models in machine learning
Name (type = personal)
NamePart (type = family)
Vitt
NamePart (type = given)
Constantine Alexander
NamePart (type = date)
1983-
DisplayForm
Constantine Alexander Vitt
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author
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Xiong
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Hui
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Hui Xiong
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Advisory Committee
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chair
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NamePart (type = family)
Lin
NamePart (type = given)
Xiadong
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Xiadong Lin
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Advisory Committee
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internal member
Name (type = personal)
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Papadimitriou
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Spiros
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Spiros Papadimitriou
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Advisory Committee
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internal member
Name (type = personal)
NamePart (type = family)
Kuang
NamePart (type = given)
Rui
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Rui Kuang
Affiliation
Advisory Committee
Role
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outside member
Name (type = corporate)
NamePart
Rutgers University
Role
RoleTerm (authority = RULIB)
degree grantor
Name (type = corporate)
NamePart
Graduate School - Newark
Role
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school
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Text
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theses
OriginInfo
DateCreated (qualifier = exact)
2018
DateOther (qualifier = exact); (type = degree)
2018-05
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2018
Place
PlaceTerm (type = code)
xx
Language
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eng
Abstract (type = abstract)
This thesis explores new models for some machine learning problems based on recent developments in the theory and methods of risk analysis and risk-averse optimization. Two types of risk models are used: coherent measures of risk and a dynamic model based on stochastic differential equations. These models are applied to two areas of machine learning: classification and identification of the impact of patent activity on the stock-price dynamics of companies in the technology sector. We propose a new approach to classification, which aims at determining a risk-averse classifier. It allows different attitude to misclassification risk for the different classes. This is accomplished by the application of non-linear risk functions specific to each class. The structure of the new classification problems is analyzed and optimality conditions are obtained. We show that the risk-averse classification problem is equivalent to an optimization problem with unequal, implicitly defined but unknown weights for each data point. The new methodology is implemented in a binary classification scenario in several versions. One type of risk-averse SVM is based on a soft-margin classifier using various coherent measures of risk as objectives. Another type of risk-averse SVM problems determine a classifier with a normalized vector of the separation plane using again several sets of risk measures in the respective objectives. We propose a numerical method for solving the classification problem with normalization constraint. Numerical test are performed on several data sets with different levels of separation difficulty. The results are compared to classification with benchmark loss functions, which are well established in the literature. In the second part of the thesis, we consider patent activity in the technology sector and their impact on the stock-price dynamics. We show the promises of exploiting patent data for the analysis and prospecting of high-tech companies in the stock market. A new approach to analyze the relationships between patent activities and statistical characteristics of the stock price is developed, which may be of interest to discovery of statistical relations among sequential data beyond this context. We demonstrate the relationships between the monthly drift and volatility of the market adjusted stock returns and the number of patent applications as well as the diversity of the corresponding patent categories. We use a widely accepted model of the market-adjusted stock returns and estimate its parameters. Adopting the moving window technique, we fit models by introducing various lagged terms of patent activity characteristics. For each company, we consider the coefficients of each significant term over the entire time horizon and perform further statistical hypothesis testing on the overall significance of the corresponding indicator. The analysis has been performed on real-world stock trading data as well as patent data. The results confirm the impact of innovations on stock movement and show that the market-adjusted stock returns do exhibit more volatility if the company has been extending their patents to new areas. On the other hand, the statistical relation between the drift of stock returns and the patent activity of a company appears to be of more complex nature involving other latent factors.
Subject (authority = RUETD)
Topic
Management
Subject (authority = ETD-LCSH)
Topic
Risk
Subject (authority = ETD-LCSH)
Topic
Machine learning
RelatedItem (type = host)
TitleInfo
Title
Rutgers University Electronic Theses and Dissertations
Identifier (type = RULIB)
ETD
Identifier
ETD_8974
PhysicalDescription
Form (authority = gmd)
electronic resource
InternetMediaType
application/pdf
InternetMediaType
text/xml
Extent
1 online resource (xii, 100 p. : ill.)
Note (type = degree)
Ph.D.
Note (type = bibliography)
Includes bibliographical references
Note (type = statement of responsibility)
by Constantine Alexander Vitt
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TitleInfo
Title
Graduate School - Newark Electronic Theses and Dissertations
Identifier (type = local)
rucore10002600001
Location
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NjNbRU
Identifier (type = doi)
doi:10.7282/T3CN77B3
Genre (authority = ExL-Esploro)
ETD doctoral
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Rights

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The author owns the copyright to this work.
RightsHolder (type = personal)
Name
FamilyName
Vitt
GivenName
Constantine
MiddleName
Alexander
Role
Copyright Holder
RightsEvent
Type
Permission or license
DateTime (encoding = w3cdtf); (qualifier = exact); (point = start)
2018-04-29 20:17:58
AssociatedEntity
Name
Constantine Vitt
Role
Copyright holder
Affiliation
Rutgers University. Graduate School - Newark
AssociatedObject
Type
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Author Agreement License
Detail
I hereby grant to the Rutgers University Libraries and to my school the non-exclusive right to archive, reproduce and distribute my thesis or dissertation, in whole or in part, and/or my abstract, in whole or in part, in and from an electronic format, subject to the release date subsequently stipulated in this submittal form and approved by my school. I represent and stipulate that the thesis or dissertation and its abstract are my original work, that they do not infringe or violate any rights of others, and that I make these grants as the sole owner of the rights to my thesis or dissertation and its abstract. I represent that I have obtained written permissions, when necessary, from the owner(s) of each third party copyrighted matter to be included in my thesis or dissertation and will supply copies of such upon request by my school. I acknowledge that RU ETD and my school will not distribute my thesis or dissertation or its abstract if, in their reasonable judgment, they believe all such rights have not been secured. I acknowledge that I retain ownership rights to the copyright of my work. I also retain the right to use all or part of this thesis or dissertation in future works, such as articles or books.
Copyright
Status
Copyright protected
Availability
Status
Open
Reason
Permission or license
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2018-05-08T20:47:40
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