Score-based generative models (SGMs) are generative models that are in the spotlight these days. Time-series frequently occurs in our daily life, e.g., stock data, climate data, and so on. Especially, time-series forecasting and classification are popular research topics in the field of machine learning. SGMs are also known for outperforming other generative models. As a result, we apply SGMs to synthesize time-series data by learning conditional score functions. We propose a conditional score network for the time-series generation domain. Furthermore, we also derive the loss function between the score matching and the denoising score matching in the time-series generation domain. Finally, we achieve state-of-the-art results on real-world datasets in terms of sampling diversity and quality.
翻译:基于分数的基因化模型(SGMs)是当今人们关注的基因化模型。时间序列经常发生在我们的日常生活中,例如股票数据、气候数据等等。特别是,时间序列的预测和分类是机器学习领域的流行研究课题。时间序列的预测和分类也以优于其他基因化模型而闻名。结果,我们运用SGMs来通过学习有条件的评分功能来综合时间序列数据。我们为时间序列的生成域提议一个有条件的得分网络。此外,我们还在时间序列生成域的得分匹配和分解得分匹配之间得出损失函数。最后,我们从抽样多样性和质量方面实现了真实世界数据集的最新结果。