Cold-Start Forecasting of New Product Life-Cycles via Conditional Diffusion Models
Ruihan Zhou, Zishi Zhang, Jinhui Han, Yijie Peng, Xiaowei Zhang
TLDR
CDLF uses conditional diffusion models to accurately forecast new product life-cycles from cold-start, combining diverse data for robust predictions.
Key contributions
- Introduces CDLF, a conditional diffusion model for cold-start new product life-cycle forecasting.
- Integrates static product descriptors, similar product trajectories, and early observations for robust predictions.
- Enables adaptive forecast updates without retraining, yielding flexible multi-modal predictive distributions.
- Outperforms classical diffusion models and ML baselines in accuracy and probabilistic forecast quality.
Why it matters
Accurate cold-start forecasting is crucial for new product success, guiding launch planning and resource allocation. This paper introduces CDLF, a novel conditional diffusion model that effectively tackles extreme data scarcity. Its ability to integrate diverse information and adapt forecasts without retraining offers significant improvements for businesses.
Original Abstract
Forecasting the life-cycle trajectory of a newly launched product is important for launch planning, resource allocation, and early risk assessment. This task is especially difficult in the pre-launch and early post-launch phases, when product-specific outcome history is limited or unavailable, creating a cold-start problem. In these phases, firms must make decisions before demand patterns become reliably observable, while early signals are often sparse, noisy, and unstable We propose the Conditional Diffusion Life-cycle Forecaster (CDLF), a conditional generative framework for forecasting new-product life-cycle trajectories under cold start. CDLF combines three sources of information: static descriptors, reference trajectories from similar products, and newly arriving observations when available. Here, static descriptors refer to structured pre-launch characteristics of the product, such as category, price tier, brand or organization identity, scale, and access conditions. This structure allows the model to condition forecasts on relevant product context and to update them adaptively over time without retraining, yielding flexible multi-modal predictive distributions under extreme data scarcity. The method satisfies consistency with a horizon-uniform distributional error bound for recursive generation. Across studies on Intel microprocessor stock keeping unit (SKU) life cycles and the platform-mediated adoption of open large language model repositories, CDLF delivers more accurate point forecasts and higher-quality probabilistic forecasts than classical diffusion models, Bayesian updating approaches, and other state-of-the-art machine-learning baselines.
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