Neue generative probabilistische Prognosemethode basierend auf Wiener-Kallianpur-Innovationsdarstellung.
Exploiting locally stationary lead-lag relationships between variates improves multivariate time series forecasting accuracy.
提案されたWIAE-GPFアルゴリズムは、非パラメトリックな時系列データに基づいて未来のサンプルを生成し、高い動的性能を示す。
HTV-Trans is a novel model that effectively captures non-stationarity and stochasticity in multivariate time series forecasting, outperforming other methods.
Principal Component Analysis (PCA) enhances transformer-based time series forecasting by reducing redundant information, improving accuracy, and optimizing runtime efficiency.
InjectTST proposes a method to inject global information into individual channels for improved time series forecasting.
The author presents a novel generative probabilistic forecasting approach based on the Wiener-Kallianpur innovation representation, demonstrating superior performance in real-time market operations.
The author proposes a novel Hierarchical Time series Variational Transformer (HTV-Trans) to address non-stationarity and stochasticity in multivariate time series forecasting, combining a generative module with a transformer for improved performance.
The author proposes a novel framework that leverages Principal Component Analysis (PCA) to enhance transformer-based time series forecasting models by reducing redundant information, improving accuracy, and optimizing runtime efficiency.
The author proposes a novel prompt mining framework to improve language-based mobility forecasting by generating and refining prompts. The approach leverages prompt entropy and a chain of thought to enhance forecasting accuracy.