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Aggregate insider trading and the prediction of corporate credit spread changes

机译:内幕交易汇总和企业信用利差变化的预测

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This paper shows that equity-based aggregate insider trading predicts future changes in US corporate credit spreads. Results suggest that the closer insiders are involved in daily business activities, the greater the predictive power of those insiders' transactions is. In linewith the literature, we reason and find that closely involved insiders are better at gauging future changes in cash flow realizations eventually affecting a firm's default risk, because these insiders have greater access to in-firm information. The predictive power of aggregate insider trading doubles each time we increase the forecast horizon and each time when gradually increasing the level of default risk from BBB to CCC spreads. For the standard BBB-AAA spread, a univariatemodel explains up to 52% in annual credit spread change variation and is economically meaningful. An increase in one standard deviation in aggregate insider trading translates into a decrease of up to 72% of the standard deviation of annual credit spread changes. The predictive power of aggregate insider trading is neither just driven by the 2007/08 financial crisis, nor only by information conveyed from net purchasing or net selling insiders. Our results recommend portfolio and risk managers to take aggregate inside information and the heterogeneity among insiders into account when assessing future aggregate default risk.
机译:本文表明,基于股权的内部交易总额预测了美国公司信用息差的未来变化。结果表明,内部人参与日常业务活动越近,这些内部人交易的预测力就越大。根据文献,我们推理并发现,密切参与的内部人更擅长衡量未来现金流量变现的变化,最终影响公司的违约风险,因为这些内部人更容易获得公司内部信息。每次我们增加预测范围以及每次逐渐增加从BBB到CCC点差的违约风险水平时,内幕交易总的预测能力都会加倍。对于标准的BBB-AAA利差,单变量模型可解释高达52%的年度信用利差变化,并且具有经济意义。内幕交易总数的一个标准差的增加转化为年度信用息差变化的标准差的减少最多72%。内幕交易的总预测能力不仅受2007/08年金融危机的驱动,也不受净购买者或净出售内部人传达的信息的驱动。我们的结果建议投资组合和风险管理人员在评估未来的总违约风险时,应考虑内部信息的汇总和内部人员之间的异质性。

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