Description

Technological advances have allowed for the assimilation of a variety of data, driving a shift away from the use of simpler and constrained patterns to more complex and diverse patterns

Technological advances have allowed for the assimilation of a variety of data, driving a shift away from the use of simpler and constrained patterns to more complex and diverse patterns in retrieval and analysis of such data. This shift has inundated the conventional techniques and has stressed the need for intelligent mechanisms that can model the complex patterns in the data. Deep neural networks have shown some success at capturing complex patterns, including the so-called attentioned networks, have significant shortcomings in distinguishing what is important in data from what is noise.

19.32 MB application/pdf

Download count: 0

Details

Contributors
Date Created
  • 2020
Subjects
Resource Type
  • Text
  • Collections this item is in
    Note
    • Doctoral Dissertation Computer Science 2020

    Machine-readable links