期刊文献+
共找到2篇文章
< 1 >
每页显示 20 50 100
A CASE STUDY OF TEACHING INPUTS AND LEARNING OUTPUTS FOR SPOKEN ENGLISH WITHIN A COLLEGE CONTEXT IN CHINA 被引量:4
1
作者 Jeremy Brayshaw & Pat Goodall Qinzhou Teachers College,Guangxi 《Chinese Journal of Applied Linguistics》 2004年第5期118-120,共3页
Definition of termsInputs can be defined as everything which students bring tothe classroom including their prior teaching and learningenvironment,attitude,enthusiasm,motivation,phonologyfrom their first language and ... Definition of termsInputs can be defined as everything which students bring tothe classroom including their prior teaching and learningenvironment,attitude,enthusiasm,motivation,phonologyfrom their first language and varying degrees of confidence.When they arrive in college they are exposed to spoken Englishfrom a range of teachers who have a variety of spoken abilitiesand teaching techniques. 展开更多
关键词 oral A CASE STUDY OF TEACHING INPUTS AND learning outputs FOR SPOKEN ENGLISH WITHIN A COLLEGE CONTEXT IN CHINA
原文传递
Online payment fraud:from anomaly detection to risk management
2
作者 Paolo Vanini Sebastiano Rossi +1 位作者 Ermin Zvizdic Thomas Domenig 《Financial Innovation》 2023年第1期1788-1812,共25页
Online banking fraud occurs whenever a criminal can seize accounts and transfer funds from an individual’s online bank account.Successfully preventing this requires the detection of as many fraudsters as possible,wit... Online banking fraud occurs whenever a criminal can seize accounts and transfer funds from an individual’s online bank account.Successfully preventing this requires the detection of as many fraudsters as possible,without producing too many false alarms.This is a challenge for machine learning owing to the extremely imbalanced data and complexity of fraud.In addition,classical machine learning methods must be extended,minimizing expected financial losses.Finally,fraud can only be combated systematically and economically if the risks and costs in payment channels are known.We define three models that overcome these challenges:machine learning-based fraud detection,economic optimization of machine learning results,and a risk model to predict the risk of fraud while considering countermeasures.The models were tested utilizing real data.Our machine learning model alone reduces the expected and unexpected losses in the three aggregated payment channels by 15%compared to a benchmark consisting of static if-then rules.Optimizing the machine-learning model further reduces the expected losses by 52%.These results hold with a low false positive rate of 0.4%.Thus,the risk framework of the three models is viable from a business and risk perspective. 展开更多
关键词 Payment fraud risk management Anomaly detection Ensemble models Integration of machine learning and statistical risk modelling Economic optimization machine learning outputs
下载PDF
上一页 1 下一页 到第
使用帮助 返回顶部