2021
DOI: 10.48550/arxiv.2104.11142
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Deep learning for detecting bid rigging: Flagging cartel participants based on convolutional neural networks

Abstract: Adding to the literature on the data-driven detection of bid-rigging cartels, we propose a novel approach based on deep learning (a subfield of artificial intelligence) that flags cartel participants based on their pairwise bidding interactions with other firms. More concisely, we combine a so-called convolutional neural network for image recognition with graphs that in a pairwise manner plot the normalized bid values of some reference firm against the normalized bids of any other firms participating in the sa… Show more

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Cited by 1 publication
(1 citation statement)
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“…Colusión y corrupción [73] "Deep learning for detecting bid rigging: Flagging cartel participants based on convolutional neural networks" [74] "Anomaly Detection in Public Procurements using the Open Contracting Data Standard" [75] "Artificial Intelligence Techniques to Detect and Prevent Corruption in Procurement: A Systematic Literature Review" [76] "Transnational machine learning with screens for flagging bid-rigging cartels"…”
Section: Ref Título Del Artículo O Libromentioning
confidence: 99%
“…Colusión y corrupción [73] "Deep learning for detecting bid rigging: Flagging cartel participants based on convolutional neural networks" [74] "Anomaly Detection in Public Procurements using the Open Contracting Data Standard" [75] "Artificial Intelligence Techniques to Detect and Prevent Corruption in Procurement: A Systematic Literature Review" [76] "Transnational machine learning with screens for flagging bid-rigging cartels"…”
Section: Ref Título Del Artículo O Libromentioning
confidence: 99%