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Can Large Language Models Improve Venture Capital Exit Timing After IPO?

Can Large Language Models Improve Venture Capital Exit Timing After IPO? ArXiv ID: 2601.00810 “View on arXiv” Authors: Mohammadhossien Rashidi Abstract Exit timing after an IPO is one of the most consequential decisions for venture capital (VC) investors, yet existing research focuses mainly on describing when VCs exit rather than evaluating whether those choices are economically optimal. Meanwhile, large language models (LLMs) have shown promise in synthesizing complex financial data and textual information but have not been applied to post-IPO exit decisions. This study introduces a framework that uses LLMs to estimate the optimal time for VC exit by analyzing monthly post IPO information financial performance, filings, news, and market signals and recommending whether to sell or continue holding. We compare these LLM generated recommendations with the actual exit dates observed for VCs and compute the return differences between the two strategies. By quantifying gains or losses associated with following the LLM, this study provides evidence on whether AI-driven guidance can improve exit timing and complements traditional hazard and real-options models in venture capital research. ...

December 22, 2025 · 2 min · Research Team

Prima de riesgo del mercado utilizada para España: encuesta 2011 (The Equity Premium in Spain: Survey 2011)

Prima de riesgo del mercado utilizada para España: encuesta 2011 (The Equity Premium in Spain: Survey 2011) ArXiv ID: ssrn-1822422 “View on arXiv” Authors: Unknown Abstract Spanish Abstract: Este documento resume 1.502 respuestas a una encuesta por realizada a directivos de empresas, a analistas y a profesores de universidad Keywords: Corporate Finance, Capital Budgeting, Investment Decisions, Survey Analysis, Real Options, Corporate Finance Complexity vs Empirical Score Math Complexity: 2.0/10 Empirical Rigor: 3.0/10 Quadrant: Philosophers Why: The paper is an empirical survey of practitioners’ opinions with minimal mathematical formulas, relying on descriptive statistics and qualitative comments, placing it in the low math/low rigor quadrant. flowchart TD A["Research Goal: Estimate the Equity Risk Premium in Spain for corporate valuation"] --> B["Data Collection via Survey 2011"] B --> C["Participants: 1,502 Corporate Executives, Analysts, & Professors"] C --> D{"Key Methodology: Analysis of Discount Rate & Risk Perception"} D --> E["Computational Process: Aggregation & Statistical Analysis of Responses"] E --> F["Key Findings: Reported Equity Risk Premium Values & Industry Differences"] F --> G["Outcome: Benchmark for Valuation in Corporate Finance & Investment Decisions"]

April 26, 2011 · 1 min · Research Team