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Comparison of ANN Classifier to the Neuro-Fuzzy System for Collusion Detection in the Tender Procedures of Road Construction Sector

机译:ANN分类器对道路建设领域招标程序勾结检测神经模糊系统的比较

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As the contracts in the road construction sector in Poland are usually of extremely high value and financed from the state budget,the tender procedures should not allow for the non-concurrent behaviours offender participants.Otherwise,the clients’losses will be of high value too.A database comprising hundreds of bidding procedures in the road construction industry in Poland has been developed.It includes the tender's participants,the locations of the roads sections,bids’values,the winners,and the types of roads.Every procedure has been evaluated and assigned to the set with a given level of collusion occurrence probability.The evaluation has required the analysis and the transformation of-described in the literature-collusive types of behaviours to the parameters of procedures that can be shown as numbers or ranks.Four criteria of a collusion threatened contracts have been chosen and applied for evaluation.Then,two methods of machine learning were applied.The first method was to train an artificial neural network(ANN)to classify the procedures to the aforementioned sets.The other method was to utilize artificial neural networks predictive capabilities enriched by the fuzzy sets theory.The multiple output from ANN was defined as membership function values.The use of the fuzzy sets theory-the process of defuzzification-helps to classify the tender procedures to the sets of different level of risk(of collusion appearance).The results achieved in these two separate processes are compared and discussed.The created tool can be applied for the future tender procedures as a pre-test of a collusion appearance.
机译:由于波兰道路建设部门的合同通常是极高的价值和从国家预算融资,因此招标程序不应允许非同时行为罪犯参与者。否则,客户将具有高价值.A数据库,包括在波兰的道路建设行业中增加了数百个招标程序。它包括招标的参与者,道路部分,出价,获奖者和道路类型的地方。每种程序都已评估并分配给具有给定型勾结发生概率的集合。评估需要分析和在文学类型的行为中描述的转换,以便可以显示为数字或秩的程序的参数.Four标准已经选择并申请了危险的合同,以评估。然后,应用了两种机器学习方法。第一种方法是培训一个人工神经网络(ANN)将过程分类到上述集合。其他方法是利用由模糊集理论富集的人工神经网络预测能力。来自ANN的多个输出被定义为隶属函数值。使用模糊集理论 - Defuzzzification的过程 - 有助于将招标程序分类到不同风险水平(勾结外观)的组。比较和讨论了这两个单独的过程中所实现的结果。可以应​​用创建的工具未来的招标程序作为勾结外观的预先测试。

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