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Autori principali: Zhou, Tao, Lee, Yan-Li, Li, Qian, Chen, Duanbing, Xie, Wenbo, Wu, Tong, Zeng, Tu
Natura: Preprint
Pubblicazione: 2022
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Accesso online:https://arxiv.org/abs/2211.14316
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author Zhou, Tao
Lee, Yan-Li
Li, Qian
Chen, Duanbing
Xie, Wenbo
Wu, Tong
Zeng, Tu
author_facet Zhou, Tao
Lee, Yan-Li
Li, Qian
Chen, Duanbing
Xie, Wenbo
Wu, Tong
Zeng, Tu
contents Violations of laws and regulations about food safety, production safety, quality standard and environmental protection, or negative consequences from loan, guarantee and pledge contracts, may result in operating and credit risks of firms. The above illegal or trust-breaking activities are collectively called discreditable activities, and firms with discreditable activities are named as discreditable firms. Identification of discreditable firms is of great significance for investment attraction, bank lending, equity investment, supplier selection, job seeking, and so on. In this paper, we collect registration records of about 113 million Chinese firms and construct an ownership network with about 6 million nodes, where each node is a firm who has invested at least one firm or has been invested by at least one firm. Analysis of publicly available records of discreditable activities show strong network effect, namely the probability of a firm to be discreditable is remarkably higher than the average probability given the fact that one of its investors or investees is discreditable. In comparison, for the risk of being a discreditable firm, an investee has higher impact than an investor in average. The impact of a firm on surrounding firms decays along with the increasing topological distance, analogous to the well-known "three degrees of separation" phenomenon. The uncovered correlation of discreditable activities can be considered as a representative example of network effect, in addition to the propagation of diseases, opinions and human behaviors. Lastly, we show that the utilization of the network effect largely improves the accuracy of the algorithm to identify discreditable firms.
format Preprint
id arxiv_https___arxiv_org_abs_2211_14316
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle Identifying discreditable firms in a large-scale ownership network
Zhou, Tao
Lee, Yan-Li
Li, Qian
Chen, Duanbing
Xie, Wenbo
Wu, Tong
Zeng, Tu
Computers and Society
Violations of laws and regulations about food safety, production safety, quality standard and environmental protection, or negative consequences from loan, guarantee and pledge contracts, may result in operating and credit risks of firms. The above illegal or trust-breaking activities are collectively called discreditable activities, and firms with discreditable activities are named as discreditable firms. Identification of discreditable firms is of great significance for investment attraction, bank lending, equity investment, supplier selection, job seeking, and so on. In this paper, we collect registration records of about 113 million Chinese firms and construct an ownership network with about 6 million nodes, where each node is a firm who has invested at least one firm or has been invested by at least one firm. Analysis of publicly available records of discreditable activities show strong network effect, namely the probability of a firm to be discreditable is remarkably higher than the average probability given the fact that one of its investors or investees is discreditable. In comparison, for the risk of being a discreditable firm, an investee has higher impact than an investor in average. The impact of a firm on surrounding firms decays along with the increasing topological distance, analogous to the well-known "three degrees of separation" phenomenon. The uncovered correlation of discreditable activities can be considered as a representative example of network effect, in addition to the propagation of diseases, opinions and human behaviors. Lastly, we show that the utilization of the network effect largely improves the accuracy of the algorithm to identify discreditable firms.
title Identifying discreditable firms in a large-scale ownership network
topic Computers and Society
url https://arxiv.org/abs/2211.14316