Probabilistic forecasting consists in predicting a distribution of possible future outcomes. In this paper, we address this problem for non-stationary time series, which is very challenging yet crucially important. We introduce the STRIPE model for representing structured diversity based on shape and time features, ensuring both probable predictions while being sharp and accurate. STRIPE is agnostic to the forecasting model, and we equip it with a diversification mechanism relying on determinantal point processes (DPP). We introduce two DPP kernels for modeling diverse trajectories in terms of shape and time, which are both differentiable and proved to be positive semi-definite. To have an explicit control on the diversity structure, we also design an iterative sampling mechanism to disentangle shape and time representations in the latent space. Experiments carried out on synthetic datasets show that STRIPE significantly outperforms baseline methods for representing diversity, while maintaining accuracy of the forecasting model. We also highlight the relevance of the iterative sampling scheme and the importance to use different criteria for measuring quality and diversity. Finally, experiments on real datasets illustrate that STRIPE is able to outperform state-of-the-art probabilistic forecasting approaches in the best sample prediction.
翻译:概率预测包括预测未来可能的结果的分布。 在本文中,我们处理非静止时间序列的这一问题,这是一个非常富有挑战性但至关重要的问题。我们采用STRIPE模型,代表基于形状和时间特征的结构多样性,确保可能的预测同时精确和精确。STRIPE对预测模型是不可知的,我们为它配备了一个依赖决定因素进程(DPP)的多样化机制。我们引入了两个DPP核心,用于建模在形状和时间方面的各种轨迹,这些轨迹既不同,又证明是积极的半确定性。为了明确控制多样性结构,我们还设计了一个迭代抽样机制,以分解潜在空间的形状和时间表现。在合成数据集上进行的实验表明,STRIPE大大超越了代表多样性的基线方法,同时保持了预测模型的准确性。我们还强调了迭代抽样机制的相关性,以及使用不同标准衡量质量和多样性的重要性。最后,关于真实数据设置的实验表明,STRIPE的样本预测方法能够超越状态。