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Effective Training Data Improved Ensemble Approaches for Urinalysis Model
Author(s) -
Ping Wu,
Min Zhu,
Peng Pu,
Tang Jiang
Publication year - 2011
Publication title -
international journal of modern education and computer science
Language(s) - English
Resource type - Journals
eISSN - 2075-017X
pISSN - 2075-0161
DOI - 10.5815/ijmecs.2011.04.04
Subject(s) - urinalysis , computer science , machine learning , training set , artificial intelligence , ensemble learning , training (meteorology) , sampling (signal processing) , data mining , urine , medicine , physics , meteorology , filter (signal processing) , computer vision , endocrinology
Urinalysis remains one of the most commonly performed tests in clinical practice. Laboratory work can be greatly relieved by automated analyzing techniques. However, noisy and imbalanced urine samples make automatically identifying and classifying urine-related diseases become very difficult. This paper proposed hybrid sampling-based ensemble learning strategies by improving training data and classification performance. Having compared the effectiveness of several learning classifiers and data processing techniques, the experiments showed that the suggesting methods provided better classification accuracy than other approaches.

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