集成数据分析降低电子投标串通欺诈风险

Mustofa Kamal
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引用次数: 0

摘要

政府已就侦测串通投标的迹象作出规定和建议,但电子投标中串通投标的风险并没有得到妥善处理。同时,数据分析能力已成为数字化转型成功的先决条件。本研究旨在揭示数据分析整合在电子投标串谋风险控制中的投影。本研究采用定量研究方法。本研究的对象包括投标串谋风险和KPPU 2021年和2022年决策的数据。研究结果表明,投标的平均相似度为0.5308,这是一个反映投标串谋风险的参数。现有的控制措施在处理这种风险方面并不有效。控制开发可以参考KPPU的规定和对LKPP的建议来设计。可以通过为遴选委员会制定数据分析能力培训形式的预防性控制措施来实施最高控制标准,以便他们能够发现投标中串通的迹象。此外,数据分析工具需要集成到电子采购系统(SPSE)的电子投标中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Collusion Fraud Risk Mitigation with Integration of Data Analytics in E-Tendering
There are already mandates and recommendations for detecting indications of tender collusion, but the risk of collusion in e-tendering has not been handled properly. Meanwhile, data analytics competency has become a prerequisite for successful digital transformation. This study aims to reveal the projection of data analytics integration in controlling collusion risk in e-tendering. This study uses a quantitative research method. The object of this study includes data on the risk of tender collusion and the KPPU’s Decisions for 2021 and 2022. The results of this study reveal that the average similarity of bids is 0.5308, a parameter indicating the risk of collusion in tenders. Existing controls have not been effective in dealing with this risk. Control development can be designed by referring to KPPU regulations and recommendations to LKPP. Maximum control standards can be applied by developing preventive controls in the form of data analytics competence training for the Selection Committee so that they are able to detect indications of collusion in tenders. In addition, data analytics tools need to be integrated into e-tendering in the Electronic Procurement System (SPSE).
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