This study had two aims: to test the effect and the effect size of specific problematic Internet use (SPIU) [online shopping, online pornography, social network site (SNS) usage, and Internet gaming] on generalized problematic Internet use (GPIU) and to reveal the gender differences in GPIU and SPIU for students from the elementary school level to
Study on the Influence of Radial Inlet Chamber Splitter Blades on the Oblique Flow Compressor Performance
The oblique flow compressor is one of the important components in the compressed air energy storage (CAES) system.The structural shape of the radial inlet chamber (RIC) directly affects the compressor performance, and a reasonable RIC design should achieve the smallest total pressure loss and outlet distortion as much as possible to meet the struct
Theory-Driven Statistics for the Digital Humanities: Presenting Pitfalls and a Practical Guide by the Example of the Reformation
The Digital Humanities face the problem of multiple hypothesis testing: Evermore hypotheses are tested until a desired pattern has been found.This practice is prone to mistaking random patterns for real ones.Instead, we should reduce the number of hypothesis tests to only test meaningful ones.We address this problem by using theory to generate hypo
أثر استخدام استراتيجية البنتاجرام في تعلم بعض المسكات في المصارعة الحرة لدى الطلاب
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Integrating machine learning algorithms and explainable artificial intelligence approach for predicting patient unpunctuality in psychiatric clinics
This Fire Pit study addresses patient unpunctuality, a major concern affecting patient waiting time, resource utilization, and quality of care.We develop and compare four machine learning models, including multinomial logistic regression, decision tree, random forest, and artificial neural network, to accurately predict patient arrival patterns and