SMART Asthma Alert Using IoT and Predicting Threshold Values Using Decision Tree Classifier

Author(s):  
Anoop Kumar Prasad
2013 ◽  
Vol 340 ◽  
pp. 773-777
Author(s):  
Xue Fei Gao ◽  
Yong Li An ◽  
Yan Liu

In order to recognize the mode of analog modulation with low SNR, a recognition procedure is proposed. In this procedure, the high-order feature is used as characteristic parameter for recognition. Firstly, the characteristic parameter needs to be extracted from the signal to be recognized. Secondly, the threshold values of four modulation modes need to be calculated. At last, the characteristic parameter extracted will be compared with the four threshold values, respectively. The method and order of comparison is based on decision tree classifier. By comparison, the mode of analog modulation with low SNR can be recognized accurately.


Author(s):  
P. Hamsagayathri ◽  
P. Sampath

Breast cancer is one of the dangerous cancers among world’s women above 35 y. The breast is made up of lobules that secrete milk and thin milk ducts to carry milk from lobules to the nipple. Breast cancer mostly occurs either in lobules or in milk ducts. The most common type of breast cancer is ductal carcinoma where it starts from ducts and spreads across the lobules and surrounding tissues. According to the medical survey, each year there are about 125.0 per 100,000 new cases of breast cancer are diagnosed and 21.5 per 100,000 women due to this disease in the United States. Also, 246,660 new cases of women with cancer are estimated for the year 2016. Early diagnosis of breast cancer is a key factor for long-term survival of cancer patients. Classification plays an important role in breast cancer detection and used by researchers to analyse and classify the medical data. In this research work, priority-based decision tree classifier algorithm has been implemented for Wisconsin Breast cancer dataset. This paper analyzes the different decision tree classifier algorithms for Wisconsin original, diagnostic and prognostic dataset using WEKA software. The performance of the classifiers are evaluated against the parameters like accuracy, Kappa statistic, Entropy, RMSE, TP Rate, FP Rate, Precision, Recall, F-Measure, ROC, Specificity, Sensitivity.


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