AN INFECTIOUS DISEASE
PREDICTION METHOD BASED ON K-NEAREST NEIGHBOR IMPROVED ALGORITHM
Yaming Chen1
, Weiming Meng2 , Fenghua Zhang3 ,Xinlu Wang4
and Qingtao Wu5
1,2&4Computer Science and
Technology, Henan University of Science and Technology, Luo Yang, China 3Computer
Technology, Henan University of Science and Technology, Luo Yang, China
5 Professor, Henan University of Science
and Technology, Luo Yang, China
ABSTRACT
With the continuous
development of medical information construction, the potential value of a large
amount of medical information has not been exploited. Excavate a large number
of medical records of outpatients, and train to generate disease prediction
models to assist doctors in diagnosis and improve work efficiency.This paper
proposes a disease prediction method based on k-nearest neighbor improvement
algorithm from the perspective of patient similarity analysis. The method draws
on the idea of clustering, extracts the samples near the center point generated
by the clustering, applies these samples as a new training sample set in the
K-nearest neighbor algorithm; based on the maximum entropy The K-nearest
neighbor algorithm is improved to overcome the influence of the weight
coefficient in the traditional algorithm and improve the accuracy of the
algorithm. The real experimental data proves that the proposed k-nearest
neighbor improvement algorithm has better accuracy and operational efficiency.
KEYWORDS
Data Mining,KNN, Clustering,Maximum
Entropy
ORIGINAL SOURCE URL: http://aircconline.com/ijdms/V11N1/11119ijdms02.pdf
VOLUME LINK: http://airccse.org/journal/ijdms/current2019.html
ORIGINAL SOURCE URL: http://aircconline.com/ijdms/V11N1/11119ijdms02.pdf
VOLUME LINK: http://airccse.org/journal/ijdms/current2019.html
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