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Browsing by Subject "Machine Learning"

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Browsing by Subject "Machine Learning"

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  • Wilson, Aaron (Aaron Creighton) (2012-07-28)
    How can an agent generalize its knowledge to new circumstances? To learn effectively an agent acting in a sequential decision problem must make intelligent action selection choices based on its available knowledge. Thi ...
  • Hao, Guohua (2009-07-21)
    Sequential supervised learning problems arise in many real applications. This dissertation focuses on two important research directions in sequential supervised learning: efficient training and feature induction. In t ...
  • Wynkoop, Michael S. (2008-06-09)
    This thesis addresses the problem of learning dynamic Bayesian network (DBN) models to support reinforcement learning. It focuses on learning regression tree models of the conditional probability distributions of the ...
  • Bjarnason, Ronald V. (2009-12-01)
    This thesis presents a progression of novel planning algorithms that culminates in a new family of diverse Monte-Carlo methods for probabilistic planning domains. We provide a proof for performance guarantees and analyz ...
  • Lin, Wei; Fern, Alan; Fern, Xiaoli (2009-01-20)
    Motivated by a real-world problem, we study a novel setting for budgeted optimization where the goal is to optimize an unknown function f(x) given a budget. In our setting, it is not practical to request samples of f(x) ...
  • Parker, Charles (Charles Lincoln) (2007-09-18)
    The goal of many machine learning problems can be formalized as the creation of a function that can properly classify an input vector, given a set of examples of that function. While this formalism has produced a number ...
  • Lin, Junyuan (2013-02-18)
    Object categorization is one of the fundamental topics in computer vision research. Most current work in object categorization aims to discriminate among generic object classes with gross differences. However, many appli ...
  • Mayes, Sean M. (2012-05-31)
    The purpose of this thesis is to increase the positional accuracy of Global Position System (GPS) modules using an artificial intelligence algorithm. Three basic and identical GPS modules were setup in an equilateral t ...

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