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عنوان
Opportunistic Learning: Algorithms and Methods for Cost-Sensitive and Context-Aware Learning

پدید آورنده
Kachuee, Mohammad

موضوع
Artificial intelligence,Computer science,Information science,Information technology

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
TL55710

LANGUAGE OF THE ITEM

.Language of Text, Soundtrack etc
انگلیسی

TITLE AND STATEMENT OF RESPONSIBILITY

Title Proper
Opportunistic Learning: Algorithms and Methods for Cost-Sensitive and Context-Aware Learning
General Material Designation
[Thesis]
First Statement of Responsibility
Kachuee, Mohammad
Subsequent Statement of Responsibility
Sarrafzadeh, Majid

.PUBLICATION, DISTRIBUTION, ETC

Name of Publisher, Distributor, etc.
University of California, Los Angeles
Date of Publication, Distribution, etc.
2020

GENERAL NOTES

Text of Note
115 p.

DISSERTATION (THESIS) NOTE

Dissertation or thesis details and type of degree
Ph.D.
Body granting the degree
University of California, Los Angeles
Text preceding or following the note
2020

SUMMARY OR ABSTRACT

Text of Note
Classical approaches to machine learning sought to improve the efficiency and accuracy of prediction but often failed to account for the costs associated with the collection of data and expert labels. This shortcoming is particularly limiting in the smart health setting, where accurate classification often requires an invasive level of information querying. Furthermore, in domains such as medical diagnosis, appropriate data should be collected based on a scientific hypothesis, and ground-truth labels may only be provided by highly trained domain experts. Additionally, in many studies, informative features are not scientifically predetermined, and usually, there are many information sources that can be considered as hypothetical relevant features that including all of them is not practical. In order to address these issues, we suggest novel end-to-end solutions considering different aspects of a real-world learning system. Specifically, we consider feature acquisition, labeling, model training, and prediction at test-time as different aspects of a system that tries to achieve the goal of making accurate predictions efficiently. In this paradigm, information is acquired incrementally based on the value it provides and the cost that should be paid for acquiring it. In this thesis, we explore dynamic and context-aware information acquisition techniques to collect the right piece of information at the right time. Additionally, as inference using incomplete data is an inevitable part of such methods, we propose a novel approach to not only impute missing values but also to capture prediction uncertainties.

UNCONTROLLED SUBJECT TERMS

Subject Term
Artificial intelligence
Subject Term
Computer science
Subject Term
Information science
Subject Term
Information technology

PERSONAL NAME - PRIMARY RESPONSIBILITY

Kachuee, Mohammad

PERSONAL NAME - SECONDARY RESPONSIBILITY

Sarrafzadeh, Majid

CORPORATE BODY NAME - SECONDARY RESPONSIBILITY

University of California, Los Angeles

ELECTRONIC LOCATION AND ACCESS

Electronic name
 مطالعه متن کتاب 

p

[Thesis]
276903

a
Y

Proposal/Bug Report

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