iChecker

Samuel P. M. Choi, S. S. Lam
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引用次数: 0

Abstract

Academic plagiarism is regarded as a serious offense and much effort in the past has been devoted to build stand-alone plagiarism detection systems for a specific language. This paper proposes a new information retrieval-based plagiarism detection algorithm that handles multilingual documents and enables seamless integration with learning management systems. The proposed algorithm employs information retrieval and sequence matching techniques to identify suspected plagiarized sentences and permits parametric control to reduce both false-positive and false-negative results. The full-featured implementation, called iChecker, not only could quickly identify suspected plagiarized works but also ease academics' effort to evaluate the severity of the offence by a quantified measure. Currently iChecker is adopted by over 300 courses (with some having several hundred of students) and has obtained satisfactory results. During 2012 to 2016, iChecker has processed and verified a total of 276,943 documents in English, Traditional Chinese and Simplified Chinese text.
iChecker
学术剽窃被认为是一种严重的犯罪行为,过去一直致力于为特定语言建立独立的剽窃检测系统。本文提出了一种新的基于信息检索的抄袭检测算法,该算法可以处理多语言文档,并实现与学习管理系统的无缝集成。该算法采用信息检索和序列匹配技术来识别疑似抄袭句子,并允许参数控制以减少假阳性和假阴性结果。这款功能齐全的软件名为iChecker,它不仅可以快速识别涉嫌抄袭的作品,还可以简化学者们通过量化衡量来评估剽窃行为严重程度的工作。目前,iChecker已被300多门课程(有些课程有数百名学生)采用,并取得了令人满意的效果。2012年至2016年,我查共处理和审核了276943份英文、繁体中文和简体中文文件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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