Circular trading is a form of tax evasion in Goods and Services Tax where a group of fraudulent taxpayers (traders) aims to mask illegal transactions by superimposing several fictitious transactions (where no value is added to the goods or service) among themselves in a short period. Due to the vast database of taxpayers, it is infeasible for authorities to manually identify groups of circular traders and the illegitimate transactions they are involved in. This work uses big data analytics and graph representation learning techniques to propose a framework to identify communities of circular traders and isolate the illegitimate transactions in the respective communities. Our approach is tested on real-life data provided by the Department of Commercial Taxes, Government of Telangana, India, where we uncovered several communities of circular traders.
翻译:循环交易是商品和服务税中的一种逃税形式,在这一形式中,一群欺诈性纳税人(交易商)企图在短时间内掩盖非法交易,在他们中间制造若干假交易(货物或服务没有增值),由于纳税人数据库庞大,当局无法人工识别循环交易人集团及其参与的非法交易,这项工作使用大数据分析和图表代表学习技术,提出一个框架,以识别循环交易人群体,并孤立各自社区的非法交易。我们的方法是用印度泰兰加纳政府商业税务局提供的实际数据检验的,我们在那里发现了几个循环交易人社区。