Selected article for: "mean absolute error and square error"

Author: Dandajena, Kudakwashe; Venter, Isabella M.; Ghaziasgar, Mehrdad; Dodds, Reg
Title: Complex Sequential Data Analysis: A Systematic Literature Review of Existing Algorithms
  • Cord-id: flfa8ra0
  • Document date: 2020_7_22
  • ID: flfa8ra0
    Snippet: This paper provides a review of past approaches to the use of deep-learning frameworks for the analysis of discrete irregular-patterned complex sequential datasets. A typical example of such a dataset is financial data where specific events trigger sudden irregular changes in the sequence of the data. Traditional deep-learning methods perform poorly or even fail when trying to analyse these datasets. The results of a systematic literature review reveal the dominance of frameworks based on recurr
    Document: This paper provides a review of past approaches to the use of deep-learning frameworks for the analysis of discrete irregular-patterned complex sequential datasets. A typical example of such a dataset is financial data where specific events trigger sudden irregular changes in the sequence of the data. Traditional deep-learning methods perform poorly or even fail when trying to analyse these datasets. The results of a systematic literature review reveal the dominance of frameworks based on recurrent neural networks. The performance of deep-learning frameworks was found to be evaluated mainly using mean absolute error and root mean square error accuracy metrics. Underlying challenges that were identified are: lack of performance robustness, non-transparency of the methodology, internal and external architectural design and configuration issues. These challenges provide an opportunity to improve the framework for complex irregular-patterned sequential datasets.

    Search related documents:
    Co phrase search for related documents