Enhancing Forecasting with a 2D Time Series Approach for Cohort-Based Data
By: Yonathan Guttel , Orit Moradov , Nachi Lieder and more
Potential Business Impact:
Predicts future trends even with little data.
This paper introduces a novel two-dimensional (2D) time series forecasting model that integrates cohort behavior over time, addressing challenges in small data environments. We demonstrate its efficacy using multiple real-world datasets, showcasing superior performance in accuracy and adaptability compared to reference models. The approach offers valuable insights for strategic decision-making across industries facing financial and marketing forecasting challenges.
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