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Journal Article

The impact of memory on learning sequence-to-sequence tasks

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Tucci,  Gennaro       
Department of Living Matter Physics, Max Planck Institute for Dynamics and Self-Organization, Max Planck Society;

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Citation

Seif, A., Loos, S., Tucci, G., Roldán, I., & Goldt, S. (2024). The impact of memory on learning sequence-to-sequence tasks. Machine Learning: Science and Technology, 5(1): 015053. doi:10.1088/2632-2153/ad2feb.


Cite as: https://hdl.handle.net/21.11116/0000-000F-1AEC-B
Abstract
The recent success of neural networks in natural language processing has drawn renewed attention to learning sequence-to-sequence (seq2seq) tasks. While there exists a rich literature that studies classification and regression tasks using solvable models of neural networks, seq2seq tasks have not yet been studied from this perspective. Here, we propose a simple model for a seq2seq task that has the advantage of providing explicit control over the degree of memory, or non-Markovianity, in the sequences—the stochastic switching-Ornstein–Uhlenbeck (SSOU) model. We introduce a measure of non-Markovianity to quantify the amount of memory in the sequences. For a minimal auto-regressive (AR) learning model trained on this task, we identify two learning regimes corresponding to distinct phases in the stationary state of the SSOU process. These phases emerge from the interplay between two different time scales that govern the sequence statistics. Moreover, we observe that while increasing the integration window of the AR model always improves performance, albeit with diminishing returns, increasing the non-Markovianity of the input sequences can improve or degrade its performance. Finally, we perform experiments with recurrent and convolutional neural networks that show that our observations carry over to more complicated neural network architectures.