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Hauptverfasser: Zivanovic, Uros, Di Gioia, Serafina, Scaffidi, Andre, Rios, Martín de los, Contardo, Gabriella, Trotta, Roberto
Format: Preprint
Veröffentlicht: 2025
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2505.20535
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author Zivanovic, Uros
Di Gioia, Serafina
Scaffidi, Andre
Rios, Martín de los
Contardo, Gabriella
Trotta, Roberto
author_facet Zivanovic, Uros
Di Gioia, Serafina
Scaffidi, Andre
Rios, Martín de los
Contardo, Gabriella
Trotta, Roberto
contents Applying Transformers to irregular time-series typically requires specializations to their baseline architecture, which can result in additional computational overhead and increased method complexity. We present the Rotary Masked Autoencoder (RoMAE), which utilizes the popular Rotary Positional Embedding (RoPE) method for continuous positions. RoMAE is an extension to the Masked Autoencoder (MAE) that enables interpolation and representation learning with multidimensional continuous positional information while avoiding any time-series-specific architectural specializations. We showcase RoMAE's performance on a variety of modalities including irregular and multivariate time-series, images, and audio, demonstrating that RoMAE surpasses specialized time-series architectures on difficult datasets such as the DESC ELAsTiCC Challenge while maintaining MAE's usual performance across other modalities. In addition, we investigate RoMAE's ability to reconstruct the embedded continuous positions, demonstrating that including learned embeddings in the input sequence breaks RoPE's relative position property.
format Preprint
id arxiv_https___arxiv_org_abs_2505_20535
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Rotary Masked Autoencoders are Versatile Learners
Zivanovic, Uros
Di Gioia, Serafina
Scaffidi, Andre
Rios, Martín de los
Contardo, Gabriella
Trotta, Roberto
Machine Learning
Applying Transformers to irregular time-series typically requires specializations to their baseline architecture, which can result in additional computational overhead and increased method complexity. We present the Rotary Masked Autoencoder (RoMAE), which utilizes the popular Rotary Positional Embedding (RoPE) method for continuous positions. RoMAE is an extension to the Masked Autoencoder (MAE) that enables interpolation and representation learning with multidimensional continuous positional information while avoiding any time-series-specific architectural specializations. We showcase RoMAE's performance on a variety of modalities including irregular and multivariate time-series, images, and audio, demonstrating that RoMAE surpasses specialized time-series architectures on difficult datasets such as the DESC ELAsTiCC Challenge while maintaining MAE's usual performance across other modalities. In addition, we investigate RoMAE's ability to reconstruct the embedded continuous positions, demonstrating that including learned embeddings in the input sequence breaks RoPE's relative position property.
title Rotary Masked Autoencoders are Versatile Learners
topic Machine Learning
url https://arxiv.org/abs/2505.20535