Abstract

We examine one profound learning technique named stacked denoising autoencoder (SDA). SDA stacks a few denoising autoencoders and connects the yield of each layer as the learned portrayal. Each denoising autoencoder in SDA is prepared to recoup the information from a ruined form of it. We build up another content portrayal display in view of a variation of SDA: marginalized stacked denoising autoencoders (mSDA), which receives straight rather than nonlinear projection to quicken preparing and minimizes limitless commotion dissemination keeping in mind the end goal to take in more vigorous portrayals. We use semantic data to grow mSDA and create Semantic-upgraded Marginalized Stacked Denoising Autoencoders (smSDA). The semantic data comprises of bullying words.

Authors and Affiliations

G. V. Chakradhar| Final M.Tech Student, Dept of Computer Science and Engineering, Prasiddha College of Engineering and Technology, Anathavaram-Amalapuram-533222, E.g.dt, A.P., V Swamy Naidu| Asst.Professor, Dept of Computer Science and Engineering, Prasiddha College of Engineering and Technology, Anathavaram-Amalapuram-533222, E.g.dt, A.P., M. Veerabhadra Rao| Head of the Department, Dept of Computer Science and Engineering, Prasiddha College of Engineering and Technology, Anathavaram-Amalapuram-533222, E.g.dt, A.P.

Keywords

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  • EP ID EP17006
  • DOI -
  • Views 200
  • Downloads 8

How To Cite

G. V. Chakradhar, V Swamy Naidu, M. Veerabhadra Rao (2017). . International Journal of Science Engineering and Advance Technology, 5(8), 861-863. https://europub.co.uk/articles/-A-17006