We asked ChatGPT to Create an Algorithm from our Data fields
Sherwood (Woodie) Neiss
Investment Crowdfunding - Venture, data, issuance, liquidity, policy expert
See what you can do with our Data, Machine Learning, and AI
If you are anything like us, you spend much time in front of ChatGPT and its equivalents. The use cases are countless, and with our unique 100% complete dataset of every Regulation Crowdfunding offering, the ability to analyze what is happening in this industry just exploded, particularly when you consider layering on our dataset with datasets comparing states, economic output, other parts of the private capital markets, etc.
Back in 2016, we launched the industry’s first data aggregator. We collect 125 data points on every company that is raising capital online, from who they are when they are incorporated, what industry they are in, where they are located, their valuation, their financials, the daily amount committed, and daily investor count. This data has been available on Bloomberg’s Terminal since 2020.
We track not only each of these deals while they are live but also their successive rounds and progress via their annual reports. Needless to say, our tiny dataset when we started is quite huge today. You’ve seen much of our analysis in our monthly recaps and our annual report.
We were fascinated with what ChatGPT could do, so we asked it the following: “Create an algorithm that reviews investment crowdfunding offerings and rates them from good to bad based on when a business was incorporated, where it is located, if it has sales, how fair its valuation is compared to others in its 3-digit NAICS code, how much capital has been invested, how many investors in the round, and other factors like cash, accounts receivables, short-term debt, long-term debt, and income.”
Here’s what it had to say:
Certainly, here is an algorithm that reviews an investment crowdfunding offering and rates it from good to bad based on various factors:
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3. Calculate a weighted average score based on the importance of each factor to determine the overall score for the business. For example, the overall score might be calculated as follows:
Overall score = (Incorporation date score x 0.1) + (Location score x 0.2) + (Sales score x 0.2) + (Valuation score x 0.2) + (Funding score x 0.2) + (Cash score x 0.05) + (Accounts receivables score x 0.05) + (Short-term debt score x 0.05) + (Long-term debt score x 0.05) + (Income score x 0.05)
4. Rank the business based on its overall score, with the highest-scoring businesses being rated as good and the lowest-scoring businesses being rated as bad. For example, businesses with an overall score of 4.5 or higher might be rated as good, while businesses with an overall score
Pretty interesting right? While this doesn’t consider the necessary diligence needed on founders, their industry experience, their startup experience, or their experience at raising capital. It does provide a way to narrow down the focus.
What do you think? Are you looking for data for machine learning or AI that you can use in conjunction with other data sets? If so, contact [email protected] for more information!
Founder & CEO at ChainCo Companies
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