IPO Automation
Description
The dataset comprises detailed financial and market data related to companies planning or having conducted Initial Public Offerings (IPOs). It includes identifiers such as the serial number and company name for reference purposes. Key financial metrics like Current Market Price, Price-to-Earnings (P/E) ratio, Market Capitalization, Dividend Yield, and Return on Capital Employed (ROCE) provide insight into the valuation, profitability, and operational efficiency of these companies. Performance indicators such as Net Profit of the last quarter, Quarterly Profit Variation, Quarterly Sales, and Sales Variation track recent growth trends, helping to assess momentum and financial health. IPO-specific features like Issue Price, Listing Price, Listing Premium or Discount, and Current Returns offer information regarding the pricing strategy and the market's reception of the IPO. The dataset also includes a Classification feature that categorizes companies by sector or business type, aiding comparative analysis. Together, these features form a comprehensive profile that allows in-depth evaluation of IPO candidates. This dataset is invaluable for building predictive models to assist investors and analysts in deciding whether to apply for or invest in an IPO, by leveraging company fundamentals, historical financial performance, and market data. Its richness and diversity in feature types enable robust machine learning applications aimed at forecasting IPO success or suitability for investment.
Files
Steps to reproduce
1. Collect a list of companies that went public in a specific period. 2. Gather IPO details like Name of Company, Current Market Price Rs., P/E ration, Mar Capitalization Rs. in Crore, Dividend Yield, Net Profit of last quarter Rs. in Crore, Quarterly Profit Variation, Quarterly Sales Rs. in Crore, Quarterly Sales Variation, Issue Price Rs., Return on Capital Employed (ROCE), etc 3. Track post-IPO stock price movement, Listing Premium/Discount, Current Returns Listing Price Rs., Classification, etc. over time for performance analysis. 4. Label each company as Success, Fail, Normal, or NA based on gain/loss and financial health. 7. Organize data into a structured tabular format with columns for each attribute.
Institutions
- Savitribai Phule Pune University