In this paper, we present a probabilistic model for the unsupervised morpholog-ical disambiguation problem. Our model assigns morphological parses T to the contexts C instead of assigning them to the words W. The target word w ∈ W determines the possible parse set Tw ⊂ T that can be used in w’s context cw ∈ C. To assign the correct morphological parse t ∈ Tw to w, our model finds the parse t ∈ Tw that maximizes P (t|cw). P (t|cw)’s are estimated using a statistical lan-guage model and the vocabulary of the corpus. The system performs significantly better than an unsupervised baseline and its performance is close to a supervised baseline.
Abstract We propose a language-independent approach for improving statistical machine translation fo...
We present a quantitative approach to disambiguating flat morphological analyses and producing more ...
| openaire: EC/H2020/771113/EU//FoTranIn our submission to the SIGMORPHON 2022 Shared Task on Morphe...
This work presents an algorithm for the unsupervised learning, or induction, of a simple morphology ...
<p>We present a morphology-aware nonparametric Bayesian model of language whose prior distribution u...
Translating into morphologically rich languages is difficult. Although the coverage of lemmas may...
This paper describes a system for the unsupervised learning of morpho-logical suffixes and stems fro...
Most state-of-the-art systems today produce morphological analysis based only on orthographic patter...
We present two methods for unsupervised segmentation of words into morpheme-like units. The model ut...
We present a language-independent and unsupervised algorithm for the segmenta-tion of words into mor...
We present two methods for unsupervised segmentation of words into morpheme-like units. The model ...
Determining optimal units of representing morphologically complex words in the mental lexicon is a c...
In this paper, a novel algorithm for incorporating morpho-logical knowledge into statistical machine...
Most state-of-the-art systems today produce morphological analysis based only on ortho-graphic patte...
This article surveys work on Unsupervised Learning of Morphology. We define Unsupervised Learning of...
Abstract We propose a language-independent approach for improving statistical machine translation fo...
We present a quantitative approach to disambiguating flat morphological analyses and producing more ...
| openaire: EC/H2020/771113/EU//FoTranIn our submission to the SIGMORPHON 2022 Shared Task on Morphe...
This work presents an algorithm for the unsupervised learning, or induction, of a simple morphology ...
<p>We present a morphology-aware nonparametric Bayesian model of language whose prior distribution u...
Translating into morphologically rich languages is difficult. Although the coverage of lemmas may...
This paper describes a system for the unsupervised learning of morpho-logical suffixes and stems fro...
Most state-of-the-art systems today produce morphological analysis based only on orthographic patter...
We present two methods for unsupervised segmentation of words into morpheme-like units. The model ut...
We present a language-independent and unsupervised algorithm for the segmenta-tion of words into mor...
We present two methods for unsupervised segmentation of words into morpheme-like units. The model ...
Determining optimal units of representing morphologically complex words in the mental lexicon is a c...
In this paper, a novel algorithm for incorporating morpho-logical knowledge into statistical machine...
Most state-of-the-art systems today produce morphological analysis based only on ortho-graphic patte...
This article surveys work on Unsupervised Learning of Morphology. We define Unsupervised Learning of...
Abstract We propose a language-independent approach for improving statistical machine translation fo...
We present a quantitative approach to disambiguating flat morphological analyses and producing more ...
| openaire: EC/H2020/771113/EU//FoTranIn our submission to the SIGMORPHON 2022 Shared Task on Morphe...