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Estimating the risk-return profile of new venture investments using a risk-neutral framework and 'thick' models

机译:使用风险中性框架和“厚实”模型估算新风险投资的风险收益状况

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摘要

This study proposes cascade neural networks to estimate the model parameters of the Cox-Ross-Rubinstein risk-neutral approach, which, in turn, explain the risk-return profile of firms at venture capital and initial public offering (IPO)financing rounds. Combining the two methods provides better estimation accuracy than risk-adjusted valuation approaches, conventional neural networks, and linear benchmark models. The findings are persistent across in-sample and out-of-sample tests using 3926 venture capital and 1360 US IPO financing rounds between January 1989 and December 2008. More accurate estimates of the risk-return profile are due to less heterogeneous risk-free rates of return from the risk-neutral framework. Cascade neural networks nest both the linear and nonlinear functional estimation form in addition to taking account of variable interaction effects. Better estimation accuracy of the risk-return profile is desirable for investors so they can make a more informed judgement before committing capital at different stages of development and various financing rounds.
机译:这项研究提出了级联神经网络,以估计Cox-Ross-Rubinstein风险中性方法的模型参数,从而反过来解释了风险资本和首次公开募股(IPO)融资回合的公司的风险收益状况。与风险调整后的估值方法,传统的神经网络和线性基准模型相比,两种方法的组合提供了更好的估计准确性。在1989年1月至2008年12月之间使用3926个风险资本和1360次美国IPO融资回合进行的样本内和样本外测试中,发现都是持久的。风险收益曲线的更准确估计是由于不同的无风险利率所致风险中性框架的回报率。级联神经网络除了考虑变量交互作用外,还嵌套了线性和非线性函数估计形式。投资者希望获得更好的风险收益曲线估计准确性,因此他们可以在发展的不同阶段和各种融资周期投入资金之前做出更明智的判断。

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