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Main Authors: Kesiraju, Santosh, Sagar, Sangeet, Glembek, Ondřej, Burget, Lukáš, Černocký, Ján, Gangashetty, Suryakanth V
Format: Preprint
Published: 2020
Subjects:
Online Access:https://arxiv.org/abs/2007.01359
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author Kesiraju, Santosh
Sagar, Sangeet
Glembek, Ondřej
Burget, Lukáš
Černocký, Ján
Gangashetty, Suryakanth V
author_facet Kesiraju, Santosh
Sagar, Sangeet
Glembek, Ondřej
Burget, Lukáš
Černocký, Ján
Gangashetty, Suryakanth V
contents In this paper, we present a Bayesian multilingual document model for learning language-independent document embeddings. The model is an extension of BaySMM [Kesiraju et al 2020] to the multilingual scenario. It learns to represent the document embeddings in the form of Gaussian distributions, thereby encoding the uncertainty in its covariance. We propagate the learned uncertainties through linear classifiers that benefit zero-shot cross-lingual topic identification. Our experiments on 17 languages show that the proposed multilingual Bayesian document model performs competitively, when compared to other systems based on large-scale neural networks (LASER, XLM-R, mUSE) on 8 high-resource languages, and outperforms these systems on 9 mid-resource languages. We revisit cross-lingual topic identification in zero-shot settings by taking a deeper dive into current datasets, baseline systems and the languages covered. We identify shortcomings in the existing evaluation protocol (MLDoc dataset), and propose a robust alternative scheme, while also extending the cross-lingual experimental setup to 17 languages. Finally, we consolidate the observations from all our experiments, and discuss points that can potentially benefit the future research works in applications relying on cross-lingual transfers.
format Preprint
id arxiv_https___arxiv_org_abs_2007_01359
institution arXiv
publishDate 2020
record_format arxiv
spellingShingle A Bayesian Multilingual Document Model for Zero-shot Topic Identification and Discovery
Kesiraju, Santosh
Sagar, Sangeet
Glembek, Ondřej
Burget, Lukáš
Černocký, Ján
Gangashetty, Suryakanth V
Computation and Language
In this paper, we present a Bayesian multilingual document model for learning language-independent document embeddings. The model is an extension of BaySMM [Kesiraju et al 2020] to the multilingual scenario. It learns to represent the document embeddings in the form of Gaussian distributions, thereby encoding the uncertainty in its covariance. We propagate the learned uncertainties through linear classifiers that benefit zero-shot cross-lingual topic identification. Our experiments on 17 languages show that the proposed multilingual Bayesian document model performs competitively, when compared to other systems based on large-scale neural networks (LASER, XLM-R, mUSE) on 8 high-resource languages, and outperforms these systems on 9 mid-resource languages. We revisit cross-lingual topic identification in zero-shot settings by taking a deeper dive into current datasets, baseline systems and the languages covered. We identify shortcomings in the existing evaluation protocol (MLDoc dataset), and propose a robust alternative scheme, while also extending the cross-lingual experimental setup to 17 languages. Finally, we consolidate the observations from all our experiments, and discuss points that can potentially benefit the future research works in applications relying on cross-lingual transfers.
title A Bayesian Multilingual Document Model for Zero-shot Topic Identification and Discovery
topic Computation and Language
url https://arxiv.org/abs/2007.01359