公司知识图谱中的被动公司控制

Davide Magnanimi, Luigi Bellomarini, S. Ceri, D. Martinenghi
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引用次数: 1

摘要

公司控制问题在于了解谁在公司中行使决策权。中央银行、金融情报机构和市场监管机构都对这个问题感兴趣,这对他们的核心目标至关重要。在这些行为者运作的环境中,公司控制的变化需要立即做出反应。然而,计算控制关系是一个计算成本很高的问题,它涉及遍历整个股权结构并在多条路径上聚合股份。在欧洲银行联合监管的背景下,意大利银行将很快处理所有欧洲公司的股权图,其中包括数亿实体(公司和个人)和数十亿的边缘和财产。由于世行不断以不可预测的高频率收到有关股权关系的更新,因此该图的波动性很大。这使得直接的批量解决方案在实践中难以承受,在这种解决方案中,每当发生变化时,所有公司控制关系都要计算和具体化。在这项工作中,我们提出了一个基于规则的增量问题形式化,采用Datalog+/-语言家族的Vadalog片段。我们的方法分析具体的变化,挑出受其影响的部分,并有选择地更新它们。这使得人们能够及时评估所有权变化对广泛的欧洲规模股权图的影响,并使经济学家能够执行所谓的“假设分析”,即模拟情景,主动研究潜在的股份收购操作的后果,目前这是非常昂贵的时间。我们在非常大的公司图表上提供了广泛的实验评估,相对地证实了我们的技术在实际生产环境中的可扩展性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reactive Company Control in Company Knowledge Graphs
The Company Control Problem consists in understanding who exerts decision power in companies. Central banks, financial intelligence units, and market regulators are all interested in this problem, which is crucial for their core goals. In the context where these actors operate, changes in company control call for immediate reactions.Yet, computing control relationships is a computationally expensive problem that involves traversing the entire shareholding structure and aggregating shares over multiple paths.In the context of the joint European banking supervision, the Bank of Italy will soon handle the shareholding graph of all European companies, which comprises hundreds of millions of entities (firms and individuals) and billions of edges and properties. This graph is highly volatile as the Bank continuously receives updates about shareholding relationships with unpredictable high frequency. This makes the straightforward bulk solution, where all the company control relationships are computed and materialized whenever a change occurs, unaffordable in practice.In this work, we present an incremental rule-based formalization of the problem, adopting the Vadalog fragment of the Datalog+/- families of languages. Our approach analyzes the specific change, singles out the portions of the graph that are affected by it, and selectively updates them. This allows one both to timely evaluate the impact of ownership variations on an extensive European-scale shareholding graph and to enable economists to perform the so-called "what-if analysis", i.e., simulation scenarios to proactively study the consequences of potential share acquisition operations, that currently are prohibitively time expensive. We provide an extensive experimental evaluation on very large company graphs, comparatively confirming the scalability of our technique in a real production setting.
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