We propose to cast the task of morphological inflection—mapping a lemma to an indicated inflected form—for resource-poor languages as a meta-learning problem. Treating each language as a separate task, we use data from high-resource source languages to learn a set of model parameters that can serve as a strong initialization point for fine-tuning on a resource-poor target language. Experiments with two model architectures on 29 target languages from 3 families show that our suggested approach outperforms all baselines. In particular, it obtains a 31.7% higher absolute accuracy than a previously proposed cross-lingual transfer model and outperforms the previous state of the art by 1.7% absolute accuracy on average over languages
We present a neural transition-based model that uses a simple set of edit actions (copy, delete, ins...
This thesis focuses on unsupervised morphological seg- mentation, the fundamental task in NLP which ...
Although multilingual pretrained models (mPLMs) enabled support of various natural language processi...
Lexical sparsity is a major challenge for machine translation into morphologically rich languages. W...
We present a novel method of statisti-cal morphological generation, i.e. the pre-diction of inflecte...
A core issue that hampers development and use of language technology for underresourced and morpholo...
We improve the quality of statistical machine translation (SMT) by applying models that predict word...
This article surveys resource-light monolingual approaches to morphological analysis and tagging. Wh...
Supervised morphological paradigm learning by identifying and aligning the longest com-mon subsequen...
The field of statistical natural language processing has been turning toward morpholog-ically rich l...
Translating into morphologically rich languages is difficult. Although the coverage of lemmas may...
This paper presents an algorithm for the unsuper-vised learning of a simple morphology of a nat-ural...
The world-wide proliferation of digital communications has created the need for language and speech ...
The scarcity of parallel data is a major limitation for Neural Machine Translation (NMT) systems, in...
Translation into morphologically rich languages is an important but recalcitrant problem in MT. We p...
We present a neural transition-based model that uses a simple set of edit actions (copy, delete, ins...
This thesis focuses on unsupervised morphological seg- mentation, the fundamental task in NLP which ...
Although multilingual pretrained models (mPLMs) enabled support of various natural language processi...
Lexical sparsity is a major challenge for machine translation into morphologically rich languages. W...
We present a novel method of statisti-cal morphological generation, i.e. the pre-diction of inflecte...
A core issue that hampers development and use of language technology for underresourced and morpholo...
We improve the quality of statistical machine translation (SMT) by applying models that predict word...
This article surveys resource-light monolingual approaches to morphological analysis and tagging. Wh...
Supervised morphological paradigm learning by identifying and aligning the longest com-mon subsequen...
The field of statistical natural language processing has been turning toward morpholog-ically rich l...
Translating into morphologically rich languages is difficult. Although the coverage of lemmas may...
This paper presents an algorithm for the unsuper-vised learning of a simple morphology of a nat-ural...
The world-wide proliferation of digital communications has created the need for language and speech ...
The scarcity of parallel data is a major limitation for Neural Machine Translation (NMT) systems, in...
Translation into morphologically rich languages is an important but recalcitrant problem in MT. We p...
We present a neural transition-based model that uses a simple set of edit actions (copy, delete, ins...
This thesis focuses on unsupervised morphological seg- mentation, the fundamental task in NLP which ...
Although multilingual pretrained models (mPLMs) enabled support of various natural language processi...