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MLEM: Generative and Contrastive Learning as Distinct Modalities for Event Sequences

This study explores the application of self-supervised learning techniques for event sequences. It is a key modality in various applications such as banking, e-commerce, and healthcare. However, there is limited research on self-supervised learning for event sequences, and methods from other domains...

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Published in:arXiv.org 2024-07
Main Authors: Moskvoretskii, Viktor, Osin, Dmitry, Shvetsov, Egor, Udovichenko, Igor, Zhelnin, Maxim, Dukhovny, Andrey, Zhimerikina, Anna, Burnaev, Evgeny
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container_title arXiv.org
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creator Moskvoretskii, Viktor
Osin, Dmitry
Shvetsov, Egor
Udovichenko, Igor
Zhelnin, Maxim
Dukhovny, Andrey
Zhimerikina, Anna
Burnaev, Evgeny
description This study explores the application of self-supervised learning techniques for event sequences. It is a key modality in various applications such as banking, e-commerce, and healthcare. However, there is limited research on self-supervised learning for event sequences, and methods from other domains like images, texts, and speech may not easily transfer. To determine the most suitable approach, we conduct a detailed comparative analysis of previously identified best-performing methods. We find that neither the contrastive nor generative method is superior. Our assessment includes classifying event sequences, predicting the next event, and evaluating embedding quality. These results further highlight the potential benefits of combining both methods. Given the lack of research on hybrid models in this domain, we initially adapt the baseline model from another domain. However, upon observing its underperformance, we develop a novel method called the Multimodal-Learning Event Model (MLEM). MLEM treats contrastive learning and generative modeling as distinct yet complementary modalities, aligning their embeddings. The results of our study demonstrate that combining contrastive and generative approaches into one procedure with MLEM achieves superior performance across multiple metrics.
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subjects Comparative studies
Self-supervised learning
title MLEM: Generative and Contrastive Learning as Distinct Modalities for Event Sequences
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