VALOR: Value-Aware Revenue Uplift Modeling with Treatment-Gated Representation for B2B Sales
About
B2B sales organizations must identify "persuadable" accounts within zero-inflated revenue distributions to optimize expensive human resource allocation. Standard uplift frameworks struggle with treatment signal collapse in high-dimensional spaces and a misalignment between regression calibration and the ranking of high-value "whales." We introduce VALOR (Value Aware Learning of Optimized (B2B) Revenue), a unified framework featuring a Treatment-Gated Sparse-Revenue Network that uses bilinear interaction to prevent causal signal collapse. The framework is optimized via a novel Cost-Sensitive Focal-ZILN objective that combines a focal mechanism for distributional robustness with a value-weighted ranking loss that scales penalties based on financial magnitude. To provide interpretability for high-touch sales programs, we further derive Robust ZILN-GBDT, a tree based variant utilizing a custom splitting criterion for uplift heterogeneity. Extensive evaluations confirm VALOR's dominance, achieving a 20% improvement in rankability over state-of-the-art methods on public benchmarks and delivering a validated 2.7x increase in incremental revenue per account in a rigorous 4-month production A/B test.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Revenue Uplift Modeling | Synthetic dataset | AUUC0.3155 | 17 | |
| Revenue Uplift Modeling | Production Dataset | AUUC1.425 | 15 | |
| Revenue Uplift Modeling | Online A/B Experiment Long Tail Sales program | Opportunity Rate17.6 | 2 |