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Published August 24, 2018 | Version v1
Conference paper Open

Feature Selection and Weighing for Case-based Reasoning System using Random Forests

  • 1. School of Computing, Ulster University Northern Ireland, UK

Description

Case-based reasoning has become a successful technique that uses the previous experience as a problem-solving paradigm. It adapts or reuses the solutions of a similar problem to solve a new one. In a case-based reasoning system, it is important to have a good similarity retrieval algorithm to retrieve the most similar cases to the query case. However, we also note that in a medical domain with increased use of electronic health records, the availability of patient cases and the related attributes have increased. Thus, as a preprocessing step or as part of the retrieval algorithm, it becomes critical to select the most informative features to improve the retrieval efficiency and accuracy in a case-based reasoning system. In this paper, we explore random forest, a popular method in machine learning, for feature selection and weighting in a case-based reasoning system and investigate the case retrieval accuracy.

Files

FLINS18_1_B.Sekar_Feature Selection and Weighing.pdf

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Additional details

Funding

DESIREE – Decision Support and Information Management System for Breast Cancer 690238
European Commission