Existing state of the art approaches for Sanskrit Dependency Parsing (SDP), are hybrid in nature, and rely on a lexicon-driven shallow parser for linguistically motivated feature engineering. However, these methods fail to handle out of vocabulary (OOV) words, which limits their applicability in realistic scenarios. On the other hand, purely data-driven approaches do not match the performance of hybrid approaches due to the labelled data sparsity. Thus, in this work, we investigate the following question: How far can we push a purely data-driven approach using recently proposed strategies for low-resource settings? We experiment with five strategies, namely, data augmentation, sequential transfer learning, cross-lingual/mono-lingual pretrai...
The paper introduces a dependency annotation effort which aims to fully annotate a million word Hind...
This paper reports about our work in the ICON 2009 NLP TOOLS CONTEST: Parsing. We submitted two runs...
Nowadays, the interest in code-mixing has become ubiquitous in Natural Language Processing (NLP); ho...
Key to fast adaptation of language technologies for any language hinges on the availability of funda...
We report our dependency parsing experiments on two Indian Languages, Telugu and Hindi. We first exp...
Cross-lingual transfer has been shown effective for dependency parsing of some low-resource language...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
In this paper, we present our efforts to-wards incorporating external knowledge from Hindi WordNet t...
Today, the top performing parsing algorithms rely on the availability of annotated data for learning...
Thesis (Master's)--University of Washington, 2014Dependency parsing is an important natural language...
International audienceThe paper presents a method for parsing low-resource languages with very small...
Existing approaches for unsupervised bilingual lexicon induction (BLI) often depend on good quality ...
Empirical Models for an Indic Language Continuum Niyati Bafna July 20, 2022 Many Indic languages and...
Out-of-vocabulary (OOV) words can pose serious challenges for machine translation (MT) tasks, and in...
International audienceThis paper studies cross-lingual transfer for dependency parsing, focusing on ...
The paper introduces a dependency annotation effort which aims to fully annotate a million word Hind...
This paper reports about our work in the ICON 2009 NLP TOOLS CONTEST: Parsing. We submitted two runs...
Nowadays, the interest in code-mixing has become ubiquitous in Natural Language Processing (NLP); ho...
Key to fast adaptation of language technologies for any language hinges on the availability of funda...
We report our dependency parsing experiments on two Indian Languages, Telugu and Hindi. We first exp...
Cross-lingual transfer has been shown effective for dependency parsing of some low-resource language...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
In this paper, we present our efforts to-wards incorporating external knowledge from Hindi WordNet t...
Today, the top performing parsing algorithms rely on the availability of annotated data for learning...
Thesis (Master's)--University of Washington, 2014Dependency parsing is an important natural language...
International audienceThe paper presents a method for parsing low-resource languages with very small...
Existing approaches for unsupervised bilingual lexicon induction (BLI) often depend on good quality ...
Empirical Models for an Indic Language Continuum Niyati Bafna July 20, 2022 Many Indic languages and...
Out-of-vocabulary (OOV) words can pose serious challenges for machine translation (MT) tasks, and in...
International audienceThis paper studies cross-lingual transfer for dependency parsing, focusing on ...
The paper introduces a dependency annotation effort which aims to fully annotate a million word Hind...
This paper reports about our work in the ICON 2009 NLP TOOLS CONTEST: Parsing. We submitted two runs...
Nowadays, the interest in code-mixing has become ubiquitous in Natural Language Processing (NLP); ho...