PHBench: A Benchmark for Predicting Startup Series A Funding from Product Hunt Launch Signals
Yagiz Ihlamur,
Ben Griffin and
Rick Chen
Papers from arXiv.org
Abstract:
Structured launch signals on Product Hunt contain statistically significant predictive information for Series A funding outcomes. We construct PHBench from 67,292 featured Product Hunt posts spanning 2019-2025, linked to Crunchbase funding records via deterministic domain matching, identifying 528 verified Series A raises within 18 months of launch (positive rate: 0.78%). Our best-performing model, a three-component ensemble (ENS_avg, ENS_ISO, XGB) selected by validation F0.5, achieves F0.5 = 0.097 and AP = 0.037 (95% CI: 0.024-0.072; 4.7x lift over random) on the private held-out test set (103 positives). A paired bootstrap confirms a statistically credible advantage over the logistic regression baseline (AP delta: +0.013, 95% CI: [0.004, 0.039], p
Date: 2026-05
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Persistent link: https://EconPapers.repec.org/RePEc:arx:papers:2605.02974
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