xLSTM-Mixer: Multivariate Time Series Forecasting by Mixing via Scalar Memories
–Neural Information Processing Systems
Time series data is prevalent across numerous fields, necessitating the development of robust and accurate forecasting models. Capturing patterns both within and between temporal and multivariate components is crucial for reliable predictions. We introduce xLSTM-Mixer, a model designed to effectively integrate temporal sequences, joint time-variate information, and multiple perspectives for robust forecasting. Our approach begins with a linear forecast shared across variates, which is then refined by xLSTM blocks. They serve as key elements for modeling the complex dynamics of challenging time series data.
Neural Information Processing Systems
Jun-14-2026, 13:48:02 GMT
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