LGAug 21, 2025

Enhancing Forecasting with a 2D Time Series Approach for Cohort-Based Data

arXiv:2508.15369v1h-index: 72025 IEEE Symposium on Computational Intelligence for Financial Engineering and Economics Companion (CiFer Companion)
Originality Incremental advance
AI Analysis

This addresses forecasting problems for industries like finance and marketing, but it appears incremental as it builds on existing time series methods with a specific adaptation.

The paper tackled forecasting challenges in small data environments by introducing a novel 2D time series model that integrates cohort behavior, demonstrating superior accuracy and adaptability compared to reference models on multiple real-world datasets.

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.

Foundations

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