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Can we detect contract cheating using existing assessment data? Applying crime prevention theory to an academic integrity issue

机译:我们可以使用现有评估数据检测合同作弊吗?将犯罪预防理论应用于学术诚信问题

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Objectives Building on what is known about the non-random nature of crime problems and the explanatory capacity of opportunity theories of crime, this study explores the utility of using existing university administrative data to detect unusual patterns of performance consistent with a student having engaged in contract cheating (paying a third-party to produce unsupervised work on their behalf). Methods Results from an Australian university were analysed ( N ?=?3798 results, N ?=?1459 students). Performances on unsupervised and supervised assessment items were converted to percentages and percentage point differences analysed at the academic discipline-, unit-, and student-level, looking for non-random patterns of unusually large differences. Results Non-random, unusual patterns, consistent with contract cheating, were found at the academic discipline-, unit-, and student-level, with approximately 2.1% of students producing multiple unusual patterns. Conclusions These findings suggest it may be possible to use existing administrative data to identify assessment items that provide suitable opportunities for contract cheating. This approach could be used in conjunction with targeted problem-prevention strategies (based on situational crime prevention) to reduce the vulnerability of academic assessment items to contract cheating. This approach is worthy of additional research as it has the potential to help academic institutions around the world manage contract cheating; a problem that currently threatens the validity and integrity of tertiary qualifications.
机译:目标基于对犯罪问题的非随机性质和犯罪机会理论的解释能力的了解,本研究探索了使用现有大学行政数据来检测与从事合同的学生相符的异常表现模式的实用性作弊(向第三方付费以代表他们制作无监督的作品)。方法分析澳大利亚某大学的成绩(N == 3798结果,N == 1459学生)。将无监督和有监督的评估项目的绩效转换为在学科,单位和学生级别上分析的百分比和百分点差异,以寻找非随机的,差异非常大的模式。结果在学科,单位和学生级别发现了与合同作弊相一致的非随机,异常模式,大约2.1%的学生产生了多种异常模式。结论这些发现表明,有可能使用现有的行政数据来确定为合同作弊提供适当机会的评估项目。这种方法可以与针对性的问题预防策略(基于情境犯罪预防)结合使用,以减少学术评估项目对合同作弊的脆弱性。这种方法值得进一步研究,因为它有可能帮助世界各地的学术机构管理合同作弊。当前威胁到大专学历的有效性和完整性的问题。

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