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Residual Reservoir Memory Networks

About

We introduce a novel class of untrained Recurrent Neural Networks (RNNs) within the Reservoir Computing (RC) paradigm, called Residual Reservoir Memory Networks (ResRMNs). ResRMN combines a linear memory reservoir with a non-linear reservoir, where the latter is based on residual orthogonal connections along the temporal dimension for enhanced long-term propagation of the input. The resulting reservoir state dynamics are studied through the lens of linear stability analysis, and we investigate diverse configurations for the temporal residual connections. The proposed approach is empirically assessed on time-series and pixel-level 1-D classification tasks. Our experimental results highlight the advantages of the proposed approach over other conventional RC models.

Matteo Pinna, Andrea Ceni, Claudio Gallicchio• 2025

Related benchmarks

TaskDatasetResultRank
Multivariate Time Series ClassificationLIBRAS (test)
Accuracy0.807
25
Time-series classificationFordA (test)
Accuracy88.9
17
Time-series classificationFordB (test)
Accuracy72.6
17
Time-series classificationBeef (test)
Accuracy87
13
Time-series classificationWINE (test)
Accuracy86.1
13
Time-series classificationAdiac (test)
Accuracy60.9
13
Time-series classificationCar (test)
Accuracy79.1
13
Time-series classificationOSULeaf (test)
Accuracy59.3
13
Time-series classificationMallat (test)
Accuracy88.8
13
Time-series classificationHandMovementDirection (HMD) (test)
Accuracy42
12
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