A visual analytics system to support tax evasion discovery

作者:

Highlights:

• We present TaxNet, a new decision support system for tax evasion discovery.

• It is based on a powerful visual language and on advanced network visualization techniques.

• It has been developed in cooperation with the Italian Revenue Agency, where it is used.

• To evaluate TaxNet we present an experimental study and use cases with experts.

摘要

This paper describes TaxNet, a decision support system for tax evasion discovery, based on a powerful visual language and on advanced network visualization techniques. It has been developed in cooperation with the Italian Revenue Agency, where it is currently used. TaxNet allows users to visually define classes of suspicious patterns, it exploits effective graph pattern matching technologies to rapidly extract subgraphs that correspond to one or more patterns, it provides facilities to conveniently merge the results, and it implements new ad-hoc centrality indexes to rank taxpayers based on their fiscal risk. Moreover, it offers a visual interface to analyze and interact with those networks that match a desired pattern. The paper discusses the results of an experimental study and some use cases conducted with expert officers on real data and in a real working environment. The experiments give evidence of the effectiveness of our system.

论文关键词:Tax evasion,Network analysis,Graph visualization,Visual analytics,Graph pattern matching,Graph database

论文评审过程:Received 7 November 2017, Revised 6 March 2018, Accepted 25 March 2018, Available online 29 March 2018, Version of Record 5 May 2018.

论文官网地址:https://doi.org/10.1016/j.dss.2018.03.008