2017
DOI: 10.5391/ijfis.2017.17.3.187
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Design of a Fast Learning Classifier for Sleep Apnea Database based on Fuzzy SVM

Abstract: In this paper, we compared the performance of support vector machine (SVM) and fuzzy SVM (FSVM) for reduction of learning time when classifying large-scale time series data into two classes. The fast learning time of the pattern classifier for large time series data is very useful in decision support systems. Considering the high interest in healthcare, including big data analysis, it is necessary to design a pattern classifier with a fast learning capability. We used large-scale time series data of 32 patient… Show more

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Cited by 8 publications
(4 citation statements)
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References 9 publications
(11 reference statements)
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“…SVM has been shown to provide higher performance than traditional learning machines and has been introduced as a powerful tool for solving classification problems. However, there are some limitations, including outlier handling, long learning times, and an increased number of support vectors (Lee et al, 2017). With the assistance of SVMs, one can perform both linear as well as non-linear classification (Goudjil et al, 2018;Liu et al, 2012).…”
Section: Methodsmentioning
confidence: 99%
“…SVM has been shown to provide higher performance than traditional learning machines and has been introduced as a powerful tool for solving classification problems. However, there are some limitations, including outlier handling, long learning times, and an increased number of support vectors (Lee et al, 2017). With the assistance of SVMs, one can perform both linear as well as non-linear classification (Goudjil et al, 2018;Liu et al, 2012).…”
Section: Methodsmentioning
confidence: 99%
“…This allows Catboost to better utilize the information from categorical features and improve model accuracy. In addition to handling categorical features, Catboost also introduces a technique called Ordered Target Statistics to address overfitting [10]. This technique sorts the training data based on the values of the objective function and computes cumulative statistical information of the sorted objective function values.…”
Section: Analysis Of Catboost Algorithm Principlesmentioning
confidence: 99%
“…And some other research focus on detecting the number of the apnea or hypopnea and providing a vague position of them by classify signal slices. Annotation is done on epoch of a fixed time, and a machine learning method is used to classify whether this epoch is normal, apnea or hypopnea, there are multiple classification methods that have been test in previous study such as support vector machine(SVM) 8,9 , neural network 10,11 , fuzzy logic 12,13 , linear discriminant analysis(LDA) 14 .…”
Section: Introductionmentioning
confidence: 99%