Using computer simulation, we investigate the
impact of different strategies on the financial performance of VCs. We COMPARE
simple heuristics such as equal weighting and fast and frugal trees with more
complex machine learning and regression models and analyze the impact of three
factors: VC learning, the statistical properties of the investment environment,
and the amount of information available in a business plan. We demonstrate that
the performance of decision strategies and the relative quality of decision
outcomes change critically between environments in which different statistical
relationships hold between information contained in business plans and the
likelihood of financial success. The Equal Weighting strategy is competitive
with more complex investment decision strategies and its performance is robust
across environments. Learning only from those plans that the simulated VC
invested in, drastically reduces the VC's potential to learn from experience.
Lastly, the results confirm that decision strategies differ in respect to the
impact of added information on the outcomes of decisions. Finally, we discuss
real-world implications for the practice of VCs and research on VC decision
making.
Website: http://www.arjonline.org/business-and-management/american-research-journal-of-business-and-management/
Website: http://www.arjonline.org/business-and-management/american-research-journal-of-business-and-management/
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