Predicting tax avoidance by means of social network analytics
作者:
Highlights:
• First tax avoidance prediction model by means of advanced social network analytics
• Network of firms which are connected if they share board members now or in the past
• A 7 pp increase in AUC thanks to including uni- and bipartite network variables
• Tax rate of neighboring firms and number of low-tax neighbors has an influence
• Implies carry-over of knowledge between firms by board members
摘要
This study predicts tax avoidance by means of social network analytics. We extend previous literature by being the first to build a predictive model including a larger variation of network features. We construct a network of firms connected through shared board membership. Then, we apply three analytical techniques, logistic regression, decision trees, and random forests; to create five models using either firm characteristics, network characteristics or different combinations of both. A random forest including firm characteristics, network characteristics of firms and network characteristics of board members provides the best performance with a minimal increase of 7 pp in AUC. Hence, including network effects significantly improves the predictive ability of tax avoidance models, implying that board members exhibit specific knowledge which can carry over across firms. We find that having board members with no connections to low-tax companies lowers the likelihood of being a low-tax firm. Similarly, the higher the average tax rate of the companies a board member is connected to, the lower the chance of being low-tax. On the other hand, being connected to more low-tax firms increases the probability of being low-tax. Consistent with prior literature on firm-specific variables, PP&E has a positive influence on the probability of being low-tax, while EBITDA has a negative effect. Our results are informative for companies as to the director expertise they want to attract in their boards. Additionally, financial analysts and regulatory agencies can use our insights to predict which firms are likely to be low-tax and potentially at risk.
论文关键词:Board interlocks,Predictive analytics,Social network analytics,Social ties,Tax avoidance,Tax planning
论文评审过程:Received 19 July 2017, Revised 30 January 2018, Accepted 1 February 2018, Available online 9 February 2018, Version of Record 16 April 2018.
论文官网地址:https://doi.org/10.1016/j.dss.2018.02.001