辛迪加
业务
私人信息检索
贷款
利用
银团贷款
机构投资者
价值(数学)
财务
传播
休克(循环)
货币经济学
金融体系
经济
计算机安全
医学
电信
公司治理
机器学习
计算机科学
内科学
标识
DOI:10.1016/j.jacceco.2023.101663
摘要
I explore whether big-data sources can crowd out the value of private information acquired through lending relationships. Institutional lenders have been shown to exploit their access to borrowers' private information by trading on it in financial markets. As a shock to this advantage, I use the release of the satellite data of car counts in store parking lots of U.S. retailers. This data provides accurate and near–real-time signals of firm performance, which can undermine the value of borrowers' private information obtained through syndicate participation. I find that once the satellite data becomes commercially available, institutional lenders are less likely to participate in syndicated loans. The effect is more pronounced when borrowers are opaque or disseminate private information to their lenders earlier and when the data predicts borrower performance more accurately. I also show that institutional lenders' reduced demand for private information leads to less favorable loan terms for borrowers.
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