Challenge: a recent paper aims to improve the effectiveness of unsupervised language analysis techniques in low resource settings.
Approach: They propose to use a weak supervision to improve linguistic segmentation in low resource languages . they propose to provide linguists with LTs that can be used to create interactive annotation tools .
Outcome: The proposed models can be used to improve the quality of language segmentation in low resource languages.

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Weakly supervised discourse segmentation for multiparty oral conversations (2021.emnlp-main)

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Challenge: Discourse segmentation is the first step of discourse analysis.
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Unsupervised Cross-Lingual Representation Learning (P19-4)

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Challenge: a comprehensive survey of cutting-edge weakly-supervised and unsupervised cross-lingual word representations is presented .
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Learning Concept Abstractness Using Weak Supervision (D18-1)

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Challenge: Existing methods for inferring abstractness of words and expressions without labeled data are limited and limited.
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X-Class: Text Classification with Extremely Weak Supervision (2021.naacl-main)

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Challenge: Weak supervision is a problem in text classification, but it requires corpusspecific knowledge.
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Contextualized Weak Supervision for Text Classification (2020.acl-main)

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Challenge: Existing methods for weakly supervised text classification generate pseudo-labels in a context-free manner, thus, the ambiguous, context-dependent nature of human language has been long overlooked.
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Tackling the Low-resource Challenge for Canonical Segmentation (2020.emnlp-main)

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Challenge: morphological segmentation is a task of dividing words into their constituting morphemes . we compare two new approaches for the task when training data is limited .
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Minimally-Supervised Morphological Segmentation using Adaptor Grammars with Linguistic Priors (2021.findings-acl)

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Challenge: Unsupervised morphological segmentation is an essential subtask in many natural language processing applications.
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Distant Supervision from Disparate Sources for Low-Resource Part-of-Speech Tagging (D18-1)

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Challenge: Low-resource languages lack manual annotated data to learn basic models such as part-of-speech (POS) taggers.
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Morphological Segmentation for Low Resource Languages (2020.lrec-1)

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Challenge: a new corpus of annotated morphological data is described for the DARPA LORELEI Program . the data is annotating 9 low resource languages and root information for 7 of the languages .
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