Skip to content

DAEMA: Denoising Autoencoder with Mask Attention

Missing data is a recurrent and challenging problem, especially when using machine learning algorithms for real-world applications. For this reason, missing data imputation has become an active research area, in which recent deep learning approaches have achieved state-of-the-art results. We propose DAEMA: Denoising Autoencoder with Mask Attention, an algorithm based on a denoising autoencoder architecture with an attention mechanism.
While most imputation algorithms use incomplete inputs as they would use complete data – up to basic preprocessing (e.g. mean imputation) – DAEMA leverages a mask-based attention mechanism to focus on the observed values of its inputs.
We evaluate DAEMA both in terms of reconstruction capabilities and downstream prediction and show that it achieves superior performance to state-of-the-art algorithms on several publicly available real-world datasets under various missingness settings.

The paper won the third-best paper award of ICANN 2021! It is freely accessible in its preprint form: https://arxiv.org/abs/2106.16057.

Simon Tihon*, Muhammad Usama Javaid*, Damien Fourure, Nicolas Posocco, Thomas Peel, DAEMA: Denoising Autoencoder with Mask Attention, In Proc. of the The 30th International Conference on Artificial Neural Networks, 2021.

* equal contributions

Watch the presentation on YouTube.

Releated Posts

Kafka Summit 2024: Announcements & Trends

The Kafka Summit brought together industry experts, developers, and enthusiasts to discuss the latest advancements and practical applications of event streaming and microservices. In this article, our CTO Sabri Skhiri
Read More

Privacy Enhancing Technologies 2024: A Summary

For Large Language Models (LLMs), Azure confidential computing offers TEEs to protect data integrity throughout various stages of the LLM lifecycle, including prompts, fine-tuning, and inference. This ensures that all
Read More