“…In the online peer-to-peer lending domain, the existing literature mainly focuses on the predictable factors, including description (Chen, Huang, & Ye, 2018;Dorfleitner, Priberny, Schuster, Stoiber, Weber, de Castro, & Kammler, 2016;Herzenstein, Sonenshein, & Dholakia, 2011;Larrimore, Jiang, Larrimore, Markowitz, & Gorski, 2011), appearance (Duarte, Siegel, & Young, 2012), social capital (Freedman & Jin, 2017;Lin, Prabhala, & Viswanathan, 2013), gender (Chen, Huang, & Ye, 2020), race (Pope & Sydnor, 2011), credit grade (Emekter, Tu, Jirasakuldech, & Lu, 2015;Han, Chen, Liu, Luo, & Fan, 2018), location (Burtch, Ghose, & Wattal, 2014;Lin & Viswanathan, 2016;Wang, Zhao, & Shen, 2021), education (Chen, Zhang, & Yin, 2018), debt to income ratio (Emekter, Tu, Jirasakuldech, & Lu, 2015;Iyer, Khwaja, Luttmer, & Shue, 2016), etc., on the funding probability and default risk. We add to the literature by investigating formal financial signals' effects on successful funding and default risk in the peer-to-peer lending market.…”