Prognosis of Disease that may Occur with Growing Age using Confabulation Based Algorithm
Keywords:
associations rule mining, cogency, confabulation, mapreduce, data mining, prognosis, disease, CMARM
Abstract
The enduring diagnosis of patient’s medical records might be useful to determine the causes that are responsible for a particular disease. So that, one can take early preventive measures to curtail the risk of diseases that may occur with the growing age. Consequently, this can enhance the life expectancy probability. Here, a new algorithm CMARM is proposed for analysis of symptoms in order to find out the disease that may occur frequently and rarely with growing age. It uses map reduce paradigm inspired by cognitive learning. It is concerned with acquisition of problem-solving skills, intelligence and conscious thought and uses prevailing knowledge to generate new rules. It has been evaluated over synthetic data sets collected from the health data repository. Since, CMARM requires one-time file access therefore, it is consistently faster and also consuming less memory space than the FP tree based algorithm.
Published
2017-11-10
How to Cite
Srivastava, N., & Gautam, J. (2017). Prognosis of Disease that may Occur with Growing Age using Confabulation Based Algorithm. Defence Life Science Journal, 2(4), 399-405. https://doi.org/10.14429/dlsj.2.11029
Section
Research Article
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