Muhammad Arif | Umm Al-Qura University, Makkah, Saudi Arabia (original) (raw)

Address: Saudi Arabia

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Papers by Muhammad Arif

Research paper thumbnail of Assessment of Walking Stability of Elderly by Means of Nonlinear Time-Series Analysis and Simple Accelerometry

JSME International Journal Series C, 2005

Research paper thumbnail of Estimation of the effect of cadence on gait stability in young and elderly people using approximate entropy technique

Research paper thumbnail of Arif Index for Predicting the Classification Accuracy of Features and Its Application in Heart Beat Classification Problem

Lecture Notes in Computer Science, 2009

Research paper thumbnail of A revised framework of machine learning application for optimal activity recognition

Cluster Computing, Springer, 2017

Data science augments manual data understanding with machine learning for potential performance i... more Data science augments manual data understanding with machine learning for potential performance increase. In this paper, data science methodology is examined to enhance machine learning application in smartphone based automatic human activity recognition (HAR). Eventually, a modified feature engineering and a novel post-learning data engineering are proposed in the machine learning framework as the alternate of data understanding for an effective HAR. The proposed framework is examined on two different HAR data sets demonstrating a possibility of data-driven machine learning for near an optimal classification of activities. The proposed framework exhibited effectiveness and efficiency when compared with the existing methods. The modified feature engineering resulted in 42% fewer features required by support vector machine to yield 97.3% correct recognition of human physical activities. However, the addition of post-learning data engineering further improved the model to perform 99% accurate classification, which is an almost optimal performance.

Research paper thumbnail of Assessment of Walking Stability of Elderly by Means of Nonlinear Time-Series Analysis and Simple Accelerometry

JSME International Journal Series C, 2005

Research paper thumbnail of Estimation of the effect of cadence on gait stability in young and elderly people using approximate entropy technique

Research paper thumbnail of Arif Index for Predicting the Classification Accuracy of Features and Its Application in Heart Beat Classification Problem

Lecture Notes in Computer Science, 2009

Research paper thumbnail of A revised framework of machine learning application for optimal activity recognition

Cluster Computing, Springer, 2017

Data science augments manual data understanding with machine learning for potential performance i... more Data science augments manual data understanding with machine learning for potential performance increase. In this paper, data science methodology is examined to enhance machine learning application in smartphone based automatic human activity recognition (HAR). Eventually, a modified feature engineering and a novel post-learning data engineering are proposed in the machine learning framework as the alternate of data understanding for an effective HAR. The proposed framework is examined on two different HAR data sets demonstrating a possibility of data-driven machine learning for near an optimal classification of activities. The proposed framework exhibited effectiveness and efficiency when compared with the existing methods. The modified feature engineering resulted in 42% fewer features required by support vector machine to yield 97.3% correct recognition of human physical activities. However, the addition of post-learning data engineering further improved the model to perform 99% accurate classification, which is an almost optimal performance.

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