Publication | Open Access
TimeMachine: A Time Series is Worth 4 Mambas for Long-Term Forecasting
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2024
Year
Long-term DependenciesForecasting MethodologyEngineeringMachine LearningLong-term Time-series ForecastingRecurrent Neural NetworkTime Series EconometricsData ScienceLinear ScalabilityWorth 4Nonlinear Time SeriesSequence ModellingPredictive AnalyticsComputer EngineeringTemporal Pattern RecognitionComputer ScienceLong-term ForecastingForecastingDeep LearningFinanceBusinessBusiness Forecasting
Long-term time-series forecasting remains challenging due to the difficulty in capturing long-term dependencies, achieving linear scalability, and maintaining computational efficiency. We introduce TimeMachine, an innovative model that leverages Mamba, a state-space model, to capture long-term dependencies in multivariate time series data while maintaining linear scalability and small memory footprints. TimeMachine exploits the unique properties of time series data to produce salient contextual cues at multi-scales and leverage an innovative integrated quadruple-Mamba architecture to unify the handling of channel-mixing and channel-independence situations, thus enabling effective selection of contents for prediction against global and local contexts at different scales. Experimentally, TimeMachine achieves superior performance in prediction accuracy, scalability, and memory efficiency, as extensively validated using benchmark datasets.