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CExp: secure and verifiable outsourcing of composite modular exponentiation with single untrusted server 被引量:2
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作者 Shuai Li Longxia Huang +1 位作者 Anmin Fu john yearwood 《Digital Communications and Networks》 SCIE 2017年第4期236-241,共6页
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A Global Training Model for Beat Classification Using Basic Electrocardiogram Morphological Features
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作者 Shubha Sumesh john yearwood +1 位作者 Shamsul Huda Shafiq Ahmad 《Computers, Materials & Continua》 SCIE EI 2022年第3期4503-4521,共19页
Clinical Study and automatic diagnosis of electrocardiogram(ECG)data always remain a challenge in diagnosing cardiovascular activities.The analysis of ECG data relies on various factors like morphological features,cla... Clinical Study and automatic diagnosis of electrocardiogram(ECG)data always remain a challenge in diagnosing cardiovascular activities.The analysis of ECG data relies on various factors like morphological features,classification techniques,methods or models used to diagnose and its performance improvement.Another crucial factor in themethodology is howto train the model for each patient.Existing approaches use standard training model which faces challenges when training data has variation due to individual patient characteristics resulting in a lower detection accuracy.This paper proposes an adaptive approach to identify performance improvement in building a training model that analyze global trainingmethodology against an individual training methodology and identifying a gap between them.We provide our investigation and comparative study on these methods and model with standard classification techniques with basic morphological features and Heart RateVariability(HRV)thatmay aid real time application.This approach helps in analyzing and evaluating the performance of different techniques and can suggests adoption of a best model identification with efficient technique and efficient attribute set for real-time systems. 展开更多
关键词 ECG morphological feature HRV GLOBAL adaptive training multilayer perceptron(MLP) support vector machine(SVM) random forest(RF)
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