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Short communications
Space semantic aware loss function for embedding creation in case of transaction data
M. E. Vatkin, D. A. Vorobey, M. V. Yakovlev, M. G. Krivova Sber Bank, 6 Muliavina Boulevard, Minsk 220005, Belarus
Abstract:
Transaction data are the most popular data type of bank domain, they are often represented as sparse vectors with
a large number of features. Using sparse vectors in deep learning tasks is computationally inefficient and may lead to
overfitting. Аutoencoders are widely applied to extract new useful features in a lower dimensional space. In this paper we
propose to use a novel loss function based on the metric that estimates the quality of mapping the semantic structure of
the original tabular data to the embedded space. The proposed loss function allows preserving the item relation structure
of the original space during the dimension reduction transformation. The obtained results show the improvement of the
resulting embedding properties while using the combination of the new loss function and the traditional mean squared
error one.
Keywords:
data; embedding; vector; loss function; autoencoder.
Received: 21.10.2021 Revised: 08.11.2021 Accepted: 14.02.2022
Citation:
M. E. Vatkin, D. A. Vorobey, M. V. Yakovlev, M. G. Krivova, “Space semantic aware loss function for embedding creation in case of transaction data”, Journal of the Belarusian State University. Mathematics and Informatics, 1 (2022), 97–102
Linking options:
https://www.mathnet.ru/eng/bgumi181 https://www.mathnet.ru/eng/bgumi/v1/p97
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Abstract page: | 80 | Full-text PDF : | 29 | References: | 20 |
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