scholarly journals The Probability Prediction Model of Motorcyclist Accident Against IRSMS and AIS from the Police Department, East Java (A Case Study in Kediri Regency and Surabaya City)

Author(s):  
Muhammad Zainul Arifin ◽  
Achmad Wicaksono
2000 ◽  
Vol 11 (3) ◽  
pp. 234-253 ◽  
Author(s):  
Myrna M. Cornett-DeVito ◽  
Edward L. McGlone

This exploratory case study focused on multicultural communication training within the community policing context. Little research has addressed what constitutes effective content and delivery of multicultural training for law enforcement officers. Brislin and Yoshida's four-component multicultural plan was combined with limited law enforcement-related multicultural training literature to design a training program for a small city's police department. Two 4-hour training sessions were conducted by one of the investigators using a culture-general content approach and selected training methods to determine their usefulness for improving officers' multi-cultural competencies. The case included the training sessions together with pre-and posttraining activities over a period of approximately 3 months. Data were collected with selected test instruments and also from the field notes taken during the case activities. The results suggest that the culture-general model and interactive training methods and trainer qualifications may be key to yielding positive training outcomes.


2020 ◽  
Author(s):  
Tianyu Xu ◽  
Yongchuan Yu ◽  
Jianzhuo Yan ◽  
Hongxia Xu

Abstract Due to the problems of unbalanced data sets and distribution differences in long-term rainfall prediction, the current rainfall prediction model had poor generalization performance and could not achieve good prediction results in real scenarios. This study uses multiple atmospheric parameters (such as temperature, humidity, atmospheric pressure, etc.) to establish a TabNet-LightGbm rainfall probability prediction model. This research uses feature engineering (such as generating descriptive statistical features, feature fusion) to improve model accuracy, Borderline Smote algorithm to improve data set imbalance, and confrontation verification to improve distribution differences. The experiment uses 5 years of precipitation data from 26 stations in the Beijing-Tianjin-Hebei region of China to verify the proposed rainfall prediction model. The test set is to predict the rainfall of each station in one month. The experimental results shows that the model has good performance with AUC larger than 92%. The method proposed in this study further improves the accuracy of rainfall prediction, and provides a reference for data mining tasks.


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