• Login
    JavaScript is disabled for your browser. Some features of this site may not work without it.

    Browse

    All of DSpaceCommunities & CollectionsBy Issue DateAuthorsTitlesSubjectsThis CollectionBy Issue DateAuthorsTitlesSubjects

    My Account

    LoginRegister

    Statistics

    View Usage StatisticsView Google Analytics Statistics

    Dimensionality reduction using deep autoencoder

    Thumbnail
    View/Open
    Dissertation (6.496Mb)
    Date
    2019
    Author
    Thaker, Vandan Bharat
    Metadata
    Show full item record
    Abstract
    All the traditional techniques originating from statistics and geometry theory for dimensionality reduction learns underlying manifold by preserving relationships in low-dimensional feature space. In order to use these linear or non-linear techniques to uncover manifold structure, one needs to know whether data lies near linear subspace or non-linear sub-manifold. Autoencoder networks are capable of finding such non-linear manifolds by learning non-linear functions of input data that can best reconstruct data at the output layer. But autoencoder still ignores to explicitly learn data relation. In recent literature, a new model was proposed by modifying the traditional learning process to consider data relation. In this thesis, first we have compared traditional autoencoder with the most widely used technique - Principle Component Analysis(PCA) in terms of classification and reconstruction results. After that, we have used the modified autoencoder model and proposed changes in the similarity function for two conventional techniques. To evaluate the performance of proposed changes we have performed extensive experiments on two handwritten digit data sets. The results show that the proposed changes achieve promising performance.
    URI
    http://drsr.daiict.ac.in//handle/123456789/835
    Collections
    • M Tech Dissertations [923]

    Resource Centre copyright © 2006-2017 
    Contact Us | Send Feedback
    Theme by 
    Atmire NV
     

     


    Resource Centre copyright © 2006-2017 
    Contact Us | Send Feedback
    Theme by 
    Atmire NV