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Case Retrieval Algorithm Using Similarity Measure and Adaptive Fractional Brain Storm Optimization for Health Informaticians
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  • 作者:Poonam Yadav
  • 关键词:Case ; based reasoning ; Case retrieval ; Optimization ; Similarity ; Fractional calculus
  • 刊名:Arabian Journal for Science and Engineering
  • 出版年:2016
  • 出版时间:March 2016
  • 年:2016
  • 卷:41
  • 期:3
  • 页码:829-840
  • 全文大小:2,045 KB
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  • 作者单位:Poonam Yadav (1)

    1. D.A.V College of Engineering and Technology, Kanina, Haryana, India
  • 刊物类别:Engineering
  • 刊物主题:Engineering, general
    Mathematics
    Science, general
  • 出版者:Springer Berlin / Heidelberg
文摘
Managing and utilizing health information is recently a challenging task for health informaticians to provide the highest quality healthcare delivery. Here, storage, retrieval, and interpretation of healthcare information are important phases in health informatics. Accordingly, the retrieval of similar cases based on the current patient data can help doctors to identify the similar kind of patients and their methods of treatments. By taking into consideration this as an objective of the work, a hybrid model is developed for retrieval of similar cases through the use of case-based reasoning. Here, a new measure called parametric-enabled similarity measure is proposed and a new optimization algorithm called adaptive fractional brain storm optimization by modifying the well-known brain storm optimization algorithm with inclusion of fractional calculus is proposed. For experimentation, six different patient datasets from UCI machine learning repository are used and the performance is compared with existing method using accuracy and F-measure. The average accuracy and F-measure reached by the proposed method with six different datasets are 89.6 and 88.8%, respectively.

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