2025年6月3日
For many years, venture capital decisions have depended on personal judgment, industry knowledge, and manual review. Investors often spend hours reading pitch decks, researching markets, and speaking with founders to understand a startup’s potential. While this approach has helped build strong portfolios, it is now being challenged by a new, more efficient model: data-driven analysis powered by artificial intelligence.
Traditional Evaluation Is Time Consuming
Manually reviewing startup materials, conducting interviews, and researching the market takes a lot of time. In a fast-moving industry, this can slow down decision-making and cause investors to miss out on high-potential opportunities.
It also reduces the time analysts and partners can spend helping portfolio companies after investment, something many founders value and expect.
Personal Bias Affects Investment Decisions
Investors are human, and human decisions are rarely neutral. Many studies have shown that investors often favour founders who look like them, attended the same schools, or are part of the same professional networks.
According to Forbes, more than 60% of venture deals happen through personal referrals, which often leaves out founders from underrepresented backgrounds. In contrast, AI tools look at objective data, such as revenue growth, customer retention, and product usage, regardless of who the founder knows. Further, a research study found that machine learning models were 20–30% more accurate at predicting startup success than traditional methods.
Find The Startups That Humans Miss
Traditional methods have limits. It’s difficult for a person to track hundreds of early-stage companies or recognize patterns across large amounts of data from social media, user reviews, or product performance.
AI can do this efficiently. It looks at detailed signals like customer acquisition cost or user engagement to highlight startups that may be growing in smart, sustainable ways. This helps investors discover companies that might otherwise be overlooked because they don’t yet fit familiar patterns.
Why This Matters Now
The real cost of using only traditional methods is becoming clear. They take too long, they can be unfair, and they often miss key information. AI doesn’t replace the human side of investing, it supports it. Founders can use the same tools to understand their market better, improve their pitch, and show clear evidence of progress. And investors can make better, faster, and more inclusive decisions.
Final Thoughts
Traditional evaluation methods still have value, especially when it comes to understanding people and vision. But in today’s market, where information moves quickly and competition is strong, data-driven tools are not just a nice addition they are now essential.
Sources
Altun, Y. B. (2024). Data-Driven Decisions: How Startups and VCs Leverage Analytics for Success. Forbes Technology Council. https://www.forbes.com/councils/forbestechcouncil/2024/11/06/data-driven-decisions-how-startups-and-vcs-leverage-analytics-for-success/
Hunter, D. S., Saini, A., & Zaman, T. (2017). Picking Winners: A Data Driven Approach to Evaluating the Quality of Startup Companies. ArXiv. https://arxiv.org/abs/1706.04229